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Today, Inshallah, we are going to start Chapter 7. |
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Chapter 7 talks about sampling and sampling |
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distributions. The objectives for this chapter are |
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number one, we have different methods, actually we |
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have two methods: probability and non-probability |
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samples, and we are going to distinguish between |
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these two sampling methods. So again, in this |
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chapter, we will talk about two different sampling |
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methods. One is called probability sampling and |
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the other is non-probability sampling. Our goal is |
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to distinguish between these two different |
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sampling methods. The other learning objective |
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will be, We'll talk about the concept of the |
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sampling distribution. That will be next time, |
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inshallah. The third objective is compute |
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probabilities related to sample mean. In addition |
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to that, we'll talk about how can we compute |
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probabilities regarding the sample proportion. And |
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as I mentioned last time, There are two types of |
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data. One is called the numerical data. In this |
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case, we can use the sample mean. The other type |
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is called qualitative data. And in this case, we |
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have to use the sample proportion. So for this |
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chapter, we are going to discuss how can we |
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compute the probabilities for each one, either the |
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sample mean or the sample proportion. The last |
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objective of this chapter is to use the central |
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limit theorem which is the famous one of the most |
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famous theorem in this book which is called again |
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CLT, central limit theorem, and we are going to show |
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what are the, what is the importance of this |
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theorem, so these are the mainly the four |
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objectives for this chapter. Now let's see why we |
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are talking about sampling. In other words, most |
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of the time when we are doing study, we are using |
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a sample instead of using the entire population. |
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Now there are many reasons behind that. One of |
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these reasons is selecting a sample is less time |
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consuming than selecting every item in the |
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population. I think it makes sense that suppose we |
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have a huge population, that population consists |
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of thousands of items. So that will take more time |
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If you select 100 of their population. So time |
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consuming is very important. So number one, |
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selecting sample is less time consuming than using |
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all the entire population. The second reason, |
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selecting samples is less costly than selecting a |
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variety of population. Because if we have large |
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population, in this case you have to spend more |
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money in order to get the data or the information |
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from that population. So it's better to use these |
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samples. The other reason is the analysis. Our |
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sample is less cumbersome and more practical than |
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analysis of all items in the population. For these |
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reasons, we have to use a sample. For this reason, |
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we have to talk about sampling methods. Let's |
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start with sampling process. That begins with a |
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sampling frame. Now suppose my goal is to know the |
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opinion of IUG students about a certain subject. |
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So my population consists of all IUG students. So |
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that's the entire population. And you know that, |
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for example, suppose our usual students is around, |
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for example, 20,000 students. 20,000 students is a |
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big number. So it's better to select a sample from |
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that population. Now, the first step in this |
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process, we have to determine the frame of that |
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67 |
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population. So my frame consists of all IU |
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students, which has maybe males and females. So my |
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frame in this case is all items, I mean all |
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students at IUG. So that's the frame. So my frame |
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consists |
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of all students. |
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So the definition of |
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the sampling frame is a listing of items that make |
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up the population. The items could be individual, |
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could be students, could be things, animals, and |
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so on. So frames are data sources such as a |
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population list. Suppose we have the names of IUDs |
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humans. So that's my population list. Or |
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80 |
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directories, or maps, and so on. So that's the |
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frame, we have to know about the population we are |
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interested in. Inaccurate or biased results can |
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result if frame excludes certain portions of the |
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84 |
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population. For example, suppose here, as I |
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mentioned, we are interested in IUG students, so |
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86 |
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my frame and all IU students. And I know there are |
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87 |
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students, either males or females. Suppose for |
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88 |
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some reasons, we ignore males, and just my sample |
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89 |
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focused on females. In this case, females. |
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90 |
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don't represent the entire population. For this |
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91 |
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reason, you will get inaccurate or biased results |
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92 |
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if you ignore a certain portion. Because here |
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93 |
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males, for example, maybe consists of 40% of the |
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94 |
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IG students. So it makes sense that this number or |
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95 |
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this percentage is a big number. So ignoring this |
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96 |
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portion, may lead to misleading results or |
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97 |
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inaccurate results or biased results. So you have |
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98 |
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to keep in mind that you have to choose all the |
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99 |
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portions of that frame. So inaccurate or biased |
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100 |
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results can result if a frame excludes certain |
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101 |
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portions of a population. Another example, suppose |
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102 |
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we took males and females. But here for females, |
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103 |
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females have, for example, four levels: Level one, |
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104 |
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level two, level three, and level four. And we |
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105 |
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ignored, for example, level one. I mean, the new |
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106 |
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students. We ignored this portion. Maybe this |
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107 |
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portion is very important one, but by mistake we |
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108 |
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ignored this one. The remaining three levels will |
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109 |
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not represent the entire female population. For |
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110 |
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this reason, you will get inaccurate or biased |
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111 |
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results. So you have to select all the portions of |
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112 |
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the frames. Using different frames to generate |
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113 |
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data can lead to dissimilar conclusions. For |
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114 |
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example, Suppose again I am interested in IEG |
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115 |
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students. |
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116 |
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And I took the frame that has all students at |
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117 |
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the University of Gaza, the Universities of Gaza. |
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118 |
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And as we know that Gaza has three universities, |
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119 |
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big universities: Islamic University, Lazar |
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120 |
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University, and Al-Aqsa University. So we have |
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121 |
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three universities. And my frame here, suppose I |
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122 |
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took all students at these universities, but my |
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123 |
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study focused on IU students. So my frame, the |
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124 |
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true one, is all students at IUG. But I taught all |
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125 |
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students at universities in Gaza. So now we have |
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126 |
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different frames. |
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127 |
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And you want to know what are the opinions of the |
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128 |
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smokers about smoking. So my population now is |
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129 |
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just... |
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130 |
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So that's my thing. |
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131 |
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I suppose I talk to a field that has one atom. |
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132 |
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Oh my goodness. They are very different things. |
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133 |
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The first one consists of only smokers. They are |
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134 |
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very interested in you. The other one consists |
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135 |
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of... anonymous. I thought maybe... smoker or non |
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136 |
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-smokers. For this reason, you will get... |
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137 |
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Conclusion, different results. |
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138 |
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So now, |
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139 |
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the sampling frame is a listing of items that make |
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140 |
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up the entire population. Let's move to the types |
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141 |
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of samples. Mainly there are two types of |
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142 |
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sampling: One is called non-probability samples. |
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143 |
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The other one is called probability samples. The |
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144 |
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non-probability samples can be divided into two |
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145 |
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segments: One is called judgment, and the other |
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146 |
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convenience. So we have judgment and convenience |
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147 |
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non-probability samples. The other type which is |
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148 |
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random probability samples, has four segments or |
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149 |
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four parts: The first one is called simple random |
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150 |
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sample. The other one is systematic. The second |
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151 |
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one is systematic random sample. The third one is |
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152 |
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stratified. The fourth one, cluster random sample. |
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153 |
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So there are two types of sampling: probability |
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154 |
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and non-probability. Non-probability has four |
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155 |
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methods here: simple random samples, systematic, |
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156 |
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stratified, and cluster. And the non-probability |
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157 |
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samples has two types: judgment and convenience. |
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158 |
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Let's see the definition of each type of samples. |
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159 |
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Let's start with non-probability sample. In non |
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160 |
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-probability sample, items included or chosen |
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161 |
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without regard to their probability of occurrence. |
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162 |
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So that's the definition of non-probability. For |
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163 |
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example. |
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164 |
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So again, non-probability sample, it means you |
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165 |
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select items without regard to their probability |
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166 |
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00:13:29,580 --> 00:13:34,030 |
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of occurrence. For example, suppose females |
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167 |
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|
consist of 70% of IUG students and males, the |
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168 |
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00:13:42,430 --> 00:13:49,930 |
|
remaining percent is 30%. And suppose I decided to |
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169 |
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00:13:49,930 --> 00:13:56,610 |
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select a sample of 100 or 1000 students from IUG. |
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170 |
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00:13:58,620 --> 00:14:07,980 |
|
Suddenly, I have a sample that has 650 males and |
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171 |
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00:14:07,980 --> 00:14:14,780 |
|
350 females. Now, this sample, which has these |
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172 |
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00:14:14,780 --> 00:14:19,260 |
|
numbers, for sure does not represent the entire |
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173 |
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00:14:19,260 --> 00:14:25,240 |
|
population. Because females has 70%, and I took a |
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174 |
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00:14:25,240 --> 00:14:30,890 |
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random sample or a sample of size 350. So this |
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175 |
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00:14:30,890 --> 00:14:35,830 |
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sample is chosen without regard to the probability |
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176 |
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00:14:35,830 --> 00:14:40,370 |
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here. Because in this case, I should choose males |
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177 |
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00:14:40,370 --> 00:14:44,110 |
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with respect to their probability, which is 30%. |
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178 |
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00:14:44,110 --> 00:14:49,330 |
|
But in this case, I just choose different |
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179 |
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00:14:49,330 --> 00:14:54,990 |
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proportions. Another example. Suppose |
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180 |
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00:14:57,260 --> 00:14:59,920 |
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again, I am talking about smoking. |
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181 |
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00:15:05,080 --> 00:15:10,120 |
|
And I know that some people are smoking and I just |
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182 |
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00:15:10,120 --> 00:15:14,040 |
|
took this sample. So I took this sample based on |
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183 |
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00:15:14,040 --> 00:15:18,600 |
|
my knowledge. So it's without regard to their |
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184 |
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00:15:18,600 --> 00:15:23,340 |
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probability. Maybe suppose I am talking about |
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185 |
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00:15:23,340 --> 00:15:28,330 |
|
political opinions about something. And I just |
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186 |
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00:15:28,330 --> 00:15:36,330 |
|
took the experts of that subject. So my sample is |
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187 |
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00:15:36,330 --> 00:15:42,070 |
|
not a probability sample. And this one has, as we |
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188 |
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00:15:42,070 --> 00:15:44,230 |
|
mentioned, has two types: One is called |
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189 |
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00:15:44,230 --> 00:15:49,010 |
|
convenience sampling. In this case, items are |
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190 |
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00:15:49,010 --> 00:15:51,710 |
|
selected based only on the fact that they are |
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191 |
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00:15:51,710 --> 00:15:55,590 |
|
easy. So I choose that sample because it's easy. |
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192 |
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00:15:57,090 --> 00:15:57,690 |
|
Inexpensive, |
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193 |
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00:16:02,190 --> 00:16:09,790 |
|
inexpensive, or convenient to sample. If I choose |
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194 |
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00:16:09,790 --> 00:16:13,430 |
|
my sample because it is easy or inexpensive, I |
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195 |
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00:16:13,430 --> 00:16:18,480 |
|
think it doesn't make any sense, because easy is |
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196 |
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00:16:18,480 --> 00:16:23,780 |
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not a reason to select that sample |
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223 |
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00:18:17,050 --> 00:18:20,970 |
|
segment and so on. But the convenient sample means |
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224 |
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00:18:20,970 --> 00:18:24,690 |
|
that you select a sample maybe that is easy for |
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225 |
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00:18:24,690 --> 00:18:29,430 |
|
you, or less expensive, or that sample is |
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226 |
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00:18:29,430 --> 00:18:32,980 |
|
convenient. For this reason, it's called non |
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227 |
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00:18:32,980 --> 00:18:36,300 |
|
-probability sample because we choose that sample |
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228 |
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00:18:36,300 --> 00:18:39,540 |
|
without regard to their probability of occurrence. |
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229 |
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00:18:41,080 --> 00:18:48,620 |
|
The other type is called probability samples. In |
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230 |
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00:18:48,620 --> 00:18:54,200 |
|
this case, items are chosen on the basis of non |
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231 |
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00:18:54,200 --> 00:18:58,600 |
|
-probabilities. For example, here, if males |
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232 |
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00:19:02,500 --> 00:19:11,060 |
|
has or represent 30%, and females represent 70%, |
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233 |
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00:19:11,060 --> 00:19:14,840 |
|
and the same size has a thousand. So in this case, |
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234 |
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00:19:14,920 --> 00:19:19,340 |
|
you have to choose females with respect to their |
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235 |
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00:19:19,340 --> 00:19:24,260 |
|
probability. Now 70% for females, so I have to |
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236 |
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00:19:24,260 --> 00:19:29,430 |
|
choose 700 for females and the remaining 300 for |
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237 |
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00:19:29,430 --> 00:19:34,010 |
|
males. So in this case, I choose the items, I mean |
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238 |
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00:19:34,010 --> 00:19:37,970 |
|
I choose my samples regarding to their |
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239 |
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00:19:37,970 --> 00:19:39,050 |
|
probability. |
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240 |
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00:19:41,010 --> 00:19:45,190 |
|
So in probability sample items and the sample are |
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241 |
|
00:19:45,190 --> 00:19:48,610 |
|
chosen on the basis of known probabilities. And |
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242 |
|
00:19:48,610 --> 00:19:52,360 |
|
again, there are two types. of probability |
|
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|
243 |
|
00:19:52,360 --> 00:19:55,580 |
|
samples, simple random sample, systematic, |
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244 |
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00:19:56,120 --> 00:19:59,660 |
|
stratified, and cluster. Let's talk about each one |
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245 |
|
00:19:59,660 --> 00:20:05,040 |
|
in details. The first type is called a probability |
|
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|
246 |
|
00:20:05,040 --> 00:20:11,720 |
|
sample. Simple random sample. The first type of |
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247 |
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00:20:11,720 --> 00:20:16,200 |
|
probability sample is the easiest one. Simple |
|
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248 |
|
00:20:16,200 --> 00:20:23,780 |
|
random sample. Generally is denoted by SRS, Simple |
|
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249 |
|
00:20:23,780 --> 00:20:30,660 |
|
Random Sample. Let's see how can we choose a |
|
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|
250 |
|
00:20:30,660 --> 00:20:35,120 |
|
sample that is random. What do you mean by random? |
|
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|
251 |
|
00:20:36,020 --> 00:20:41,780 |
|
In this case, every individual or item from the |
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252 |
|
00:20:41,780 --> 00:20:47,620 |
|
frame has an equal chance of being selected. For |
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|
253 |
|
00:20:47,620 --> 00:20:52,530 |
|
example, suppose number of students in this class |
|
|
|
254 |
|
00:20:52,530 --> 00:21:04,010 |
|
number of students is 52 so |
|
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|
255 |
|
00:21:04,010 --> 00:21:11,890 |
|
each one, I mean each student from |
|
|
|
256 |
|
00:21:11,890 --> 00:21:17,380 |
|
1 up to 52 has the same probability of being |
|
|
|
257 |
|
00:21:17,380 --> 00:21:23,860 |
|
selected. 1 by 52. 1 by 52. 1 divided by 52. So |
|
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|
258 |
|
00:21:23,860 --> 00:21:27,980 |
|
each one has this probability. So the first one |
|
|
|
259 |
|
00:21:27,980 --> 00:21:31,820 |
|
has the same because if I want to select for |
|
|
|
260 |
|
00:21:31,820 --> 00:21:37,680 |
|
example 10 out of you. So the first one has each |
|
|
|
261 |
|
00:21:37,680 --> 00:21:42,400 |
|
one has probability of 1 out of 52. That's the |
|
|
|
262 |
|
00:21:42,400 --> 00:21:47,160 |
|
meaning of Each item from the frame has an equal |
|
|
|
263 |
|
00:21:47,160 --> 00:21:54,800 |
|
chance of being selected. Selection may be with |
|
|
|
264 |
|
00:21:54,800 --> 00:21:58,800 |
|
replacement. With replacement means selected |
|
|
|
265 |
|
00:21:58,800 --> 00:22:02,040 |
|
individuals is returned to the frame for |
|
|
|
266 |
|
00:22:02,040 --> 00:22:04,880 |
|
possibility selection, or without replacement |
|
|
|
267 |
|
00:22:04,880 --> 00:22:08,600 |
|
means selected individuals or item is not returned |
|
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|
268 |
|
00:22:08,600 --> 00:22:10,820 |
|
to the frame. So we have two types of selection, |
|
|
|
269 |
|
00:22:11,000 --> 00:22:14,360 |
|
either with... So with replacement means item is |
|
|
|
270 |
|
00:22:14,360 --> 00:22:18,080 |
|
returned back to the frame, or without population, |
|
|
|
271 |
|
00:22:18,320 --> 00:22:21,400 |
|
the item is not returned back to the frame. So |
|
|
|
272 |
|
00:22:21,400 --> 00:22:26,490 |
|
that's the two types of selection. Now how can we |
|
|
|
273 |
|
00:22:26,490 --> 00:22:29,810 |
|
obtain the sample? Sample obtained from something |
|
|
|
274 |
|
00:22:29,810 --> 00:22:33,470 |
|
called table of random numbers. In a minute I will |
|
|
|
275 |
|
00:22:33,470 --> 00:22:36,430 |
|
show you the table of random numbers. And other |
|
|
|
276 |
|
00:22:36,430 --> 00:22:40,130 |
|
method of selecting a sample by using computer |
|
|
|
277 |
|
00:22:40,130 --> 00:22:44,890 |
|
random number generators. So there are two methods |
|
|
|
278 |
|
00:22:44,890 --> 00:22:48,310 |
|
for selecting a random number. Either by using the |
|
|
|
279 |
|
00:22:48,310 --> 00:22:51,950 |
|
table that you have at the end of your book or by |
|
|
|
280 |
|
00:22:51,950 --> 00:22:56,550 |
|
using a computer. I will show one of these and in |
|
|
|
281 |
|
00:22:56,550 --> 00:22:59,650 |
|
the SPSS course you will see another one which is |
|
|
|
282 |
|
00:22:59,650 --> 00:23:03,690 |
|
by using a computer. So let's see how can we |
|
|
|
283 |
|
00:23:03,690 --> 00:23:11,730 |
|
obtain a sample from table of |
|
|
|
284 |
|
00:23:11,730 --> 00:23:12,590 |
|
random number. |
|
|
|
285 |
|
00:23:16,950 --> 00:23:22,090 |
|
I have maybe different table here. But the same |
|
|
|
286 |
|
00:23:22,090 --> 00:23:28,090 |
|
idea to use that table. Let's see how can we |
|
|
|
287 |
|
00:23:28,090 --> 00:23:34,990 |
|
choose a sample by using a random number. |
|
|
|
288 |
|
00:23:42,490 --> 00:23:47,370 |
|
Now, for example, suppose in this class As I |
|
|
|
289 |
|
00:23:47,370 --> 00:23:51,090 |
|
mentioned, there are 52 students. |
|
|
|
290 |
|
00:23:55,110 --> 00:23:58,650 |
|
So each one has a number, ID number one, two, up |
|
|
|
291 |
|
00:23:58,650 --> 00:24:05,110 |
|
to 52. So the numbers are 01, 02, all the way up |
|
|
|
292 |
|
00:24:05,110 --> 00:24:10,790 |
|
to 52. So the maximum digits here, two, two |
|
|
|
293 |
|
00:24:10,790 --> 00:24:11,110 |
|
digits. |
|
|
|
294 |
|
00:24:15,150 --> 00:24:18,330 |
|
1, 2, 3, up to 5, 2, 2, so you have two digits. |
|
|
|
295 |
|
00:24:19,470 --> 00:24:23,710 |
|
Now suppose I decided to take a random sample of |
|
|
|
296 |
|
00:24:23,710 --> 00:24:28,550 |
|
size, for example, N instead. How can I select N |
|
|
|
297 |
|
00:24:28,550 --> 00:24:32,570 |
|
out of U? In this case, each one has the same |
|
|
|
298 |
|
00:24:32,570 --> 00:24:36,790 |
|
chance of being selected. Now based on this table, |
|
|
|
299 |
|
00:24:37,190 --> 00:24:44,230 |
|
you can pick any row or any column. Randomly. For |
|
|
|
300 |
|
00:24:44,230 --> 00:24:51,630 |
|
example, suppose I select the first row. Now, the |
|
|
|
301 |
|
00:24:51,630 --> 00:24:56,570 |
|
first student will be selected as student number |
|
|
|
302 |
|
00:24:56,570 --> 00:25:03,650 |
|
to take two digits. We have to take how many |
|
|
|
303 |
|
00:25:03,650 --> 00:25:08,770 |
|
digits? Because students have ID card that |
|
|
|
304 |
|
00:25:08,770 --> 00:25:13,930 |
|
consists of two digits, 0102 up to 52. So, what's |
|
|
|
305 |
|
00:25:13,930 --> 00:25:17,010 |
|
the first number students will be selected based |
|
|
|
306 |
|
00:25:17,010 --> 00:25:22,130 |
|
on this table? Forget about the line 101. |
|
|
|
307 |
|
00:25:26,270 --> 00:25:27,770 |
|
Start with this number. |
|
|
|
308 |
|
00:25:42,100 --> 00:25:50,900 |
|
So the first one, 19. The second, 22. The third |
|
|
|
309 |
|
00:25:50,900 --> 00:25:51,360 |
|
student, |
|
|
|
310 |
|
00:25:54,960 --> 00:26:04,000 |
|
19, 22. The third, 9. The third, 9. I'm taking the |
|
|
|
311 |
|
00:26:04,000 --> 00:26:16,510 |
|
first row. Then fifth. 34 student |
|
|
|
312 |
|
00:26:16,510 --> 00:26:18,710 |
|
number 05 |
|
|
|
313 |
|
00:26:24,340 --> 00:26:29,500 |
|
Now, what's about seventy-five? Seventy-five is |
|
|
|
314 |
|
00:26:29,500 --> 00:26:33,660 |
|
not selected because the maximum I have is fifty |
|
|
|
315 |
|
00:26:33,660 --> 00:26:46,180 |
|
-two. Next. Sixty-two is not selected. Eighty |
|
|
|
316 |
|
00:26:46,180 --> 00:26:53,000 |
|
-seven. It's not selected. 13. 13. It's okay. |
|
|
|
317 |
|
00:26:53,420 --> 00:27:01,740 |
|
Next. 96. 96. Not selected. 14. 14 is okay. 91. |
|
|
|
318 |
|
00:27:02,140 --> 00:27:12,080 |
|
91. 91. Not selected. 95. 91. 45. 85. 31. 31. |
|
|
|
319 |
|
00:27:15,240 --> 00:27:21,900 |
|
So that's 10. So students numbers are 19, 22, 39, |
|
|
|
320 |
|
00:27:22,140 --> 00:27:26,980 |
|
50, 34, 5, 13, 4, 25 and take one will be |
|
|
|
321 |
|
00:27:26,980 --> 00:27:30,940 |
|
selected. So these are the ID numbers will be |
|
|
|
322 |
|
00:27:30,940 --> 00:27:35,480 |
|
selected in order to get a sample of 10. You |
|
|
|
323 |
|
00:27:35,480 --> 00:27:40,500 |
|
exclude |
|
|
|
324 |
|
00:27:40,500 --> 00:27:43,440 |
|
that one. If the number is repeated, you have to |
|
|
|
325 |
|
00:27:43,440 --> 00:27:44,340 |
|
exclude that one. |
|
|
|
326 |
|
00:27:51,370 --> 00:27:57,270 |
|
is repeated, then excluded. |
|
|
|
327 |
|
00:28:02,370 --> 00:28:07,370 |
|
So the returned number must be excluded from the |
|
|
|
328 |
|
00:28:07,370 --> 00:28:14,030 |
|
sample. Let's imagine that we have not 52 |
|
|
|
329 |
|
00:28:14,030 --> 00:28:19,130 |
|
students. We have 520 students. |
|
|
|
330 |
|
00:28:25,740 --> 00:28:32,520 |
|
Now, I have large number, 52, 520 instead of 52 |
|
|
|
331 |
|
00:28:32,520 --> 00:28:36,080 |
|
students. And again, my goal is to select just 10 |
|
|
|
332 |
|
00:28:36,080 --> 00:28:42,220 |
|
students out of 120. So each one has ID with |
|
|
|
333 |
|
00:28:42,220 --> 00:28:46,220 |
|
number one, two, all the way up to 520. So the |
|
|
|
334 |
|
00:28:46,220 --> 00:28:53,160 |
|
first one, 001. 002 all the way up to 520 now in |
|
|
|
335 |
|
00:28:53,160 --> 00:28:56,480 |
|
this case you have to choose three digits start |
|
|
|
336 |
|
00:28:56,480 --> 00:29:00,060 |
|
for example you don't have actually to start with |
|
|
|
337 |
|
00:29:00,060 --> 00:29:03,060 |
|
row number one maybe column number one or row |
|
|
|
338 |
|
00:29:03,060 --> 00:29:06,140 |
|
number two whatever is fine so let's start with |
|
|
|
339 |
|
00:29:06,140 --> 00:29:10,460 |
|
row number two for example row number 76 |
|
|
|
340 |
|
00:29:14,870 --> 00:29:19,950 |
|
It's not selected. Because the maximum number I |
|
|
|
341 |
|
00:29:19,950 --> 00:29:25,110 |
|
have is 5 to 20. So, 746 shouldn't be selected. |
|
|
|
342 |
|
00:29:26,130 --> 00:29:29,430 |
|
The next one, 764. |
|
|
|
343 |
|
00:29:31,770 --> 00:29:38,750 |
|
Again, it's not selected. 764, 715. Not selected. |
|
|
|
344 |
|
00:29:38,910 --> 00:29:42,310 |
|
Next one is 715. |
|
|
|
345 |
|
00:29:44,880 --> 00:29:52,200 |
|
099 should be 0 that's |
|
|
|
346 |
|
00:29:52,200 --> 00:29:54,940 |
|
the way how can we use the random table for using |
|
|
|
347 |
|
00:29:54,940 --> 00:29:58,800 |
|
or for selecting simple random symbols so in this |
|
|
|
348 |
|
00:29:58,800 --> 00:30:03,480 |
|
case you can choose any row or any column then you |
|
|
|
349 |
|
00:30:03,480 --> 00:30:06,620 |
|
have to decide how many digits you have to select |
|
|
|
350 |
|
00:30:06,620 --> 00:30:10,500 |
|
it depends on the number you have I mean the |
|
|
|
351 |
|
00:30:10,500 --> 00:30:16,510 |
|
population size If for example Suppose I am |
|
|
|
352 |
|
00:30:16,510 --> 00:30:20,270 |
|
talking about IUPUI students and for example, we |
|
|
|
353 |
|
00:30:20,270 --> 00:30:26,530 |
|
have 30,000 students at this school And again, I |
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354 |
|
00:30:26,530 --> 00:30:28,570 |
|
want to select a random sample of size 10 for |
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355 |
|
00:30:28,570 --> 00:30:35,190 |
|
example So how many digits should I use? 20,000 |
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356 |
|
00:30:35,190 --> 00:30:42,620 |
|
Five digits And each one, each student has ID |
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357 |
|
00:30:42,620 --> 00:30:51,760 |
|
from, starts from the first one up to twenty |
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358 |
|
00:30:51,760 --> 00:30:56,680 |
|
thousand. So now, start with, for example, the |
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359 |
|
00:30:56,680 --> 00:30:59,240 |
|
last row you have. |
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360 |
|
00:31:03,120 --> 00:31:08,480 |
|
The first number 54000 is not. 81 is not. None of |
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361 |
|
00:31:08,480 --> 00:31:08,740 |
|
these. |
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362 |
|
00:31:12,420 --> 00:31:17,760 |
|
Look at the next one. 71000 is not selected. Now |
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363 |
|
00:31:17,760 --> 00:31:22,180 |
|
9001. So the first number I have to select is |
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364 |
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00:31:22,180 --> 00:31:27,200 |
|
9001. None of the rest. Go back. |
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365 |
|
00:31:30,180 --> 00:31:37,790 |
|
Go to the next one. The second number, 12149 |
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366 |
|
00:31:37,790 --> 00:31:45,790 |
|
and so on. Next will be 18000 and so on. Next row, |
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367 |
|
00:31:46,470 --> 00:31:55,530 |
|
we can select the second one, then 16, then 14000, |
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368 |
|
00:31:55,890 --> 00:32:00,850 |
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6500 and so on. So this is the way how can we use |
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369 |
|
00:32:00,850 --> 00:32:08,110 |
|
the random table. It seems to be that tons of work |
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370 |
|
00:32:08,110 --> 00:32:13,450 |
|
if you have large sample. Because in this case, |
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371 |
|
00:32:13,530 --> 00:32:16,430 |
|
you have to choose, for example, suppose I am |
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372 |
|
00:32:16,430 --> 00:32:22,390 |
|
interested to take a random sample of 10,000. Now, |
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373 |
|
00:32:22,510 --> 00:32:28,370 |
|
to use this table to select 10,000 items takes |
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374 |
|
00:32:28,370 --> 00:32:33,030 |
|
time and effort and maybe will never finish. So |
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375 |
|
00:32:33,030 --> 00:32:33,950 |
|
it's better to use |
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376 |
|
00:32:38,020 --> 00:32:42,100 |
|
better to use computer |
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377 |
|
00:32:42,100 --> 00:32:47,140 |
|
random number generators. So that's the way if we, |
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|
378 |
|
00:32:47,580 --> 00:32:51,880 |
|
now we can use the random table only if the sample |
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|
379 |
|
00:32:51,880 --> 00:32:57,780 |
|
size is limited. I mean up to 100 maybe you can |
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|
380 |
|
00:32:57,780 --> 00:33:03,160 |
|
use the random table, but after that I think it's |
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381 |
|
00:33:03,160 --> 00:33:08,670 |
|
just you are losing your time. Another example |
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382 |
|
00:33:08,670 --> 00:33:14,390 |
|
here. Now suppose my sampling frame for population |
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383 |
|
00:33:14,390 --> 00:33:23,230 |
|
has 850 students. So the numbers are 001, 002, all |
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384 |
|
00:33:23,230 --> 00:33:28,490 |
|
the way up to 850. And suppose for example we are |
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385 |
|
00:33:28,490 --> 00:33:33,610 |
|
going to select five items randomly from that |
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386 |
|
00:33:33,610 --> 00:33:39,610 |
|
population. So you have to choose three digits and |
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387 |
|
00:33:39,610 --> 00:33:44,990 |
|
imagine that this is my portion of that table. |
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|
388 |
|
00:33:45,850 --> 00:33:51,570 |
|
Now, take three digits. The first three digits are |
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389 |
|
00:33:51,570 --> 00:34:00,330 |
|
492. So the first item chosen should be item |
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390 |
|
00:34:00,330 --> 00:34:10,540 |
|
number 492. should be selected next one 800 808 |
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391 |
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00:34:10,540 --> 00:34:17,020 |
|
doesn't select because the maximum it's much |
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392 |
|
00:34:17,020 --> 00:34:21,100 |
|
selected because the maximum here is 850 now next |
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393 |
|
00:34:21,100 --> 00:34:26,360 |
|
one 892 this |
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394 |
|
00:34:26,360 --> 00:34:32,140 |
|
one is not selected next |
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395 |
|
00:34:32,140 --> 00:34:43,030 |
|
item four three five selected now |
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396 |
|
00:34:43,030 --> 00:34:50,710 |
|
seven seven nine should be selected finally zeros |
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397 |
|
00:34:50,710 --> 00:34:53,130 |
|
two should be selected so these are the five |
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|
398 |
|
00:34:53,130 --> 00:34:58,090 |
|
numbers in my sample by using selected by using |
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399 |
|
00:34:58,090 --> 00:35:01,190 |
|
the random sample any questions? |
|
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|
400 |
|
00:35:04,160 --> 00:35:07,780 |
|
Let's move to another part. |
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401 |
|
00:35:17,600 --> 00:35:22,380 |
|
The next type of samples is called systematic |
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402 |
|
00:35:22,380 --> 00:35:25,260 |
|
samples. |
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403 |
|
00:35:29,120 --> 00:35:35,780 |
|
Now suppose N represents the sample size, capital |
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404 |
|
00:35:35,780 --> 00:35:40,520 |
|
N represents |
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405 |
|
00:35:40,520 --> 00:35:42,220 |
|
the population size. |
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406 |
|
00:35:46,660 --> 00:35:49,900 |
|
And let's see how can we choose a systematic |
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407 |
|
00:35:49,900 --> 00:35:54,040 |
|
random sample from that population. For example, |
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408 |
|
00:35:55,260 --> 00:35:57,180 |
|
suppose |
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|
409 |
|
00:3 |
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445 |
|
00:39:27,800 --> 00:39:31,780 |
|
15, 25, 35, and so on if we have more than that. |
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|
446 |
|
00:39:33,230 --> 00:39:37,730 |
|
Okay, so that's for, in this example, he chose |
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|
447 |
|
00:39:37,730 --> 00:39:42,790 |
|
item number seven. Random selection, number seven. |
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|
448 |
|
00:39:43,230 --> 00:39:50,010 |
|
So next should be 17, 27, 37, and so on. Let's do |
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|
449 |
|
00:39:50,010 --> 00:39:50,710 |
|
another example. |
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|
|
450 |
|
00:39:58,590 --> 00:40:06,540 |
|
Suppose there are In this class, there are 50 |
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|
451 |
|
00:40:06,540 --> 00:40:12,400 |
|
students. So the total is 50. |
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|
452 |
|
00:40:15,320 --> 00:40:26,780 |
|
10 students out of 50. So my sample is 10. Now |
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|
453 |
|
00:40:26,780 --> 00:40:30,260 |
|
still, 50 divided by 10 is 50. |
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454 |
|
00:40:33,630 --> 00:40:39,650 |
|
So there are five items or five students in a |
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455 |
|
00:40:39,650 --> 00:40:45,370 |
|
group. So we have five in |
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456 |
|
00:40:45,370 --> 00:40:51,490 |
|
the first group and then five in the next one and |
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|
457 |
|
00:40:51,490 --> 00:40:56,130 |
|
so on. So we have how many groups? Ten groups. |
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|
458 |
|
00:40:59,530 --> 00:41:04,330 |
|
So first step, you have to find a step. Still it |
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|
459 |
|
00:41:04,330 --> 00:41:07,930 |
|
means number of items or number of students in a |
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|
460 |
|
00:41:07,930 --> 00:41:16,170 |
|
group. Next step, select student at random from |
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|
461 |
|
00:41:16,170 --> 00:41:22,010 |
|
the first group, so random selection. Now, here |
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|
462 |
|
00:41:22,010 --> 00:41:28,610 |
|
there are five students, so 01, I'm sorry, not 01, |
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|
463 |
|
00:41:29,150 --> 00:41:35,080 |
|
1, 2, 3, 4, 5, so one digit. Only one digit. |
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|
464 |
|
00:41:35,800 --> 00:41:39,420 |
|
Because I have maximum number is five. So it's |
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|
|
465 |
|
00:41:39,420 --> 00:41:42,920 |
|
only one digit. So go again to the random table |
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|
|
466 |
|
00:41:42,920 --> 00:41:48,220 |
|
and take one digit. One. So my first item, six, |
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|
|
467 |
|
00:41:48,760 --> 00:41:52,580 |
|
eleven, sixteen, twenty-one, twenty-one, all the |
|
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|
468 |
|
00:41:52,580 --> 00:41:55,500 |
|
way up to ten items. |
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|
469 |
|
00:42:13,130 --> 00:42:18,170 |
|
So I choose student number one, then skip five, |
|
|
|
470 |
|
00:42:19,050 --> 00:42:22,230 |
|
choose number six, and so on. It's called |
|
|
|
471 |
|
00:42:22,230 --> 00:42:26,130 |
|
systematic. Because if you know the first item, |
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|
|
472 |
|
00:42:28,550 --> 00:42:32,690 |
|
and the step you can know the rest of these. |
|
|
|
473 |
|
00:42:37,310 --> 00:42:41,150 |
|
Imagine that you want to select 10 students who |
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|
474 |
|
00:42:41,150 --> 00:42:48,010 |
|
entered the cafe shop or restaurant. You can pick |
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|
475 |
|
00:42:48,010 --> 00:42:54,790 |
|
one of them. So suppose I'm taking number three |
|
|
|
476 |
|
00:42:54,790 --> 00:43:00,550 |
|
and my step is six. So three, then nine, and so |
|
|
|
477 |
|
00:43:00,550 --> 00:43:00,790 |
|
on. |
|
|
|
478 |
|
00:43:05,830 --> 00:43:13,310 |
|
So that's systematic assembly. Questions? So |
|
|
|
479 |
|
00:43:13,310 --> 00:43:20,710 |
|
that's about random samples and systematic. What |
|
|
|
480 |
|
00:43:20,710 --> 00:43:23,550 |
|
do you mean by stratified groups? |
|
|
|
481 |
|
00:43:28,000 --> 00:43:33,080 |
|
Let's use a definition and an example of a |
|
|
|
482 |
|
00:43:33,080 --> 00:43:34,120 |
|
stratified family. |
|
|
|
483 |
|
00:43:58,810 --> 00:44:05,790 |
|
step one. So again imagine we have IUG population |
|
|
|
484 |
|
00:44:05,790 --> 00:44:11,490 |
|
into two or more subgroups. So there are two or |
|
|
|
485 |
|
00:44:11,490 --> 00:44:16,010 |
|
more. It depends on the characteristic you are |
|
|
|
486 |
|
00:44:16,010 --> 00:44:19,690 |
|
using. So divide population into two or more |
|
|
|
487 |
|
00:44:19,690 --> 00:44:24,210 |
|
subgroups according to some common characteristic. |
|
|
|
488 |
|
00:44:24,730 --> 00:44:30,280 |
|
For example suppose I want to divide the student |
|
|
|
489 |
|
00:44:30,280 --> 00:44:32,080 |
|
into gender. |
|
|
|
490 |
|
00:44:34,100 --> 00:44:38,840 |
|
So males or females. So I have two strata. One is |
|
|
|
491 |
|
00:44:38,840 --> 00:44:43,000 |
|
called males and the other is females. Now suppose |
|
|
|
492 |
|
00:44:43,000 --> 00:44:47,460 |
|
the characteristic I am going to use is the levels |
|
|
|
493 |
|
00:44:47,460 --> 00:44:51,500 |
|
of a student. First level, second, third, fourth, |
|
|
|
494 |
|
00:44:51,800 --> 00:44:56,280 |
|
and so on. So number of strata here depends on |
|
|
|
495 |
|
00:44:56,280 --> 00:45:00,380 |
|
actually the characteristic you are interested in. |
|
|
|
496 |
|
00:45:00,780 --> 00:45:04,860 |
|
Let's use the simple one that is gender. So here |
|
|
|
497 |
|
00:45:04,860 --> 00:45:12,360 |
|
we have females. So IUV students divided into two |
|
|
|
498 |
|
00:45:12,360 --> 00:45:18,560 |
|
types, strata, or two groups, females and males. |
|
|
|
499 |
|
00:45:19,200 --> 00:45:22,870 |
|
So this is the first step. So at least you should |
|
|
|
500 |
|
00:45:22,870 --> 00:45:26,750 |
|
have two groups or two subgroups. So we have IELTS |
|
|
|
501 |
|
00:45:26,750 --> 00:45:29,630 |
|
student, the entire population, and that |
|
|
|
502 |
|
00:45:29,630 --> 00:45:34,370 |
|
population divided into two subgroups. Next, |
|
|
|
503 |
|
00:45:35,650 --> 00:45:39,730 |
|
assemble random samples. Keep careful here with |
|
|
|
504 |
|
00:45:39,730 --> 00:45:45,770 |
|
sample sizes proportional to strata sizes. That |
|
|
|
505 |
|
00:45:45,770 --> 00:45:57,890 |
|
means suppose I know that Female consists |
|
|
|
506 |
|
00:45:57,890 --> 00:46:02,470 |
|
of |
|
|
|
507 |
|
00:46:02,470 --> 00:46:09,770 |
|
70% of Irish students and |
|
|
|
508 |
|
00:46:09,770 --> 00:46:11,490 |
|
males 30%. |
|
|
|
509 |
|
00:46:15,410 --> 00:46:17,950 |
|
the sample size we are talking about here is for |
|
|
|
510 |
|
00:46:17,950 --> 00:46:21,550 |
|
example is a thousand so I want to select a sample |
|
|
|
511 |
|
00:46:21,550 --> 00:46:24,990 |
|
of a thousand seed from the registration office or |
|
|
|
512 |
|
00:46:24,990 --> 00:46:31,190 |
|
my information about that is males represent 30% |
|
|
|
513 |
|
00:46:31,190 --> 00:46:37,650 |
|
females represent 70% so in this case your sample |
|
|
|
514 |
|
00:46:37,650 --> 00:46:43,650 |
|
structure should be 70% times |
|
|
|
515 |
|
00:46:50,090 --> 00:46:59,090 |
|
So the first |
|
|
|
516 |
|
00:46:59,090 --> 00:47:03,750 |
|
group should have 700 items of students and the |
|
|
|
517 |
|
00:47:03,750 --> 00:47:06,490 |
|
other one is 300,000. |
|
|
|
518 |
|
00:47:09,230 --> 00:47:11,650 |
|
So this is the second step. |
|
|
|
519 |
|
00:47:14,420 --> 00:47:17,740 |
|
Sample sizes are determined in step number two. |
|
|
|
520 |
|
00:47:18,540 --> 00:47:22,200 |
|
Now, how can you select the 700 females here? |
|
|
|
521 |
|
00:47:23,660 --> 00:47:26,180 |
|
Again, you have to go back to the random table. |
|
|
|
522 |
|
00:47:27,480 --> 00:47:31,660 |
|
Samples from subgroups are compiled into one. Then |
|
|
|
523 |
|
00:47:31,660 --> 00:47:39,600 |
|
you can use symbol random sample. So here, 700. I |
|
|
|
524 |
|
00:47:39,600 --> 00:47:45,190 |
|
have, for example, 70% females. And I know that I |
|
|
|
525 |
|
00:47:45,190 --> 00:47:51,370 |
|
use student help. I have ideas numbers from 1 up |
|
|
|
526 |
|
00:47:51,370 --> 00:47:59,070 |
|
to 7, 14. Then by using simple random, simple |
|
|
|
527 |
|
00:47:59,070 --> 00:48:01,070 |
|
random table, you can. |
|
|
|
528 |
|
00:48:09,490 --> 00:48:15,190 |
|
So if you go back to the table, the first item, |
|
|
|
529 |
|
00:48:16,650 --> 00:48:23,130 |
|
now look at five digits. Nineteen is not selected. |
|
|
|
530 |
|
00:48:24,830 --> 00:48:27,510 |
|
Nineteen. I have, the maximum is fourteen |
|
|
|
531 |
|
00:48:27,510 --> 00:48:31,890 |
|
thousand. So skip one and two. The first item is |
|
|
|
532 |
|
00:48:31,890 --> 00:48:37,850 |
|
seven hundred and fifty-six. The first item. Next |
|
|
|
533 |
|
00:48:37,850 --> 00:48:43,480 |
|
is not chosen. Next is not chosen. Number six. |
|
|
|
534 |
|
00:48:43,740 --> 00:48:44,580 |
|
Twelve. |
|
|
|
535 |
|
00:48:47,420 --> 00:48:50,620 |
|
Zero. Unsure. |
|
|
|
536 |
|
00:48:52,880 --> 00:48:58,940 |
|
So here we divide the population into two groups |
|
|
|
537 |
|
00:48:58,940 --> 00:49:03,440 |
|
or two subgroups, females and males. And we select |
|
|
|
538 |
|
00:49:03,440 --> 00:49:07,020 |
|
a random sample of size 700 based on the |
|
|
|
539 |
|
00:49:07,020 --> 00:49:10,850 |
|
proportion of this subgroup. Then we are using the |
|
|
|
540 |
|
00:49:10,850 --> 00:49:16,750 |
|
simple random table to take the 700 females. |
|
|
|
541 |
|
00:49:22,090 --> 00:49:29,810 |
|
Now for this example, there are 16 items or 16 |
|
|
|
542 |
|
00:49:29,810 --> 00:49:35,030 |
|
students in each group. And he select randomly |
|
|
|
543 |
|
00:49:35,030 --> 00:49:40,700 |
|
number three, number 9, number 13, and so on. So |
|
|
|
544 |
|
00:49:40,700 --> 00:49:44,140 |
|
it's a random selection. Another example. |
|
|
|
545 |
|
00:49:46,820 --> 00:49:52,420 |
|
Suppose again we are talking about all IUVs. |
|
|
|
546 |
|
00:50:02,780 --> 00:50:09,360 |
|
Here I divided the population according to the |
|
|
|
547 |
|
00:50:09,360 --> 00:50:17,680 |
|
students' levels. Level one, level two, three |
|
|
|
548 |
|
00:50:17,680 --> 00:50:18,240 |
|
levels. |
|
|
|
549 |
|
00:50:25,960 --> 00:50:28,300 |
|
One, two, three and four. |
|
|
|
550 |
|
00:50:32,240 --> 00:50:39,710 |
|
So I divide the population into four subgroups |
|
|
|
551 |
|
00:50:39,710 --> 00:50:43,170 |
|
according to the student levels. So one, two, |
|
|
|
552 |
|
00:50:43,290 --> 00:50:48,030 |
|
three, and four. Now, a simple random sample is |
|
|
|
553 |
|
00:50:48,030 --> 00:50:52,070 |
|
selected from each subgroup with sample sizes |
|
|
|
554 |
|
00:50:52,070 --> 00:50:57,670 |
|
proportional to strata size. Imagine that level |
|
|
|
555 |
|
00:50:57,670 --> 00:51:04,950 |
|
number one represents 40% of the students. Level |
|
|
|
556 |
|
00:51:04,950 --> 00:51:17,630 |
|
2, 20%. Level 3, 30%. Just |
|
|
|
557 |
|
00:51:17,630 --> 00:51:22,850 |
|
an example. To make more sense? |
|
|
|
558 |
|
00:51:34,990 --> 00:51:36,070 |
|
My sample size? |
|
|
|
559 |
|
00:51:38,750 --> 00:51:39,910 |
|
3, |
|
|
|
560 |
|
00:51:41,910 --> 00:51:46,430 |
|
9, 15, 4, sorry. |
|
|
|
561 |
|
00:51:53,290 --> 00:52:00,470 |
|
So here, there are four levels. And the |
|
|
|
562 |
|
00:52:00,470 --> 00:52:04,370 |
|
proportions are 48 |
|
|
|
563 |
|
00:52:06,670 --> 00:52:17,190 |
|
sample size is 500 so the sample for each strata |
|
|
|
564 |
|
00:52:17,190 --> 00:52:31,190 |
|
will be number 1 40% times 500 gives 200 the next |
|
|
|
565 |
|
00:52:31,190 --> 00:52:32,950 |
|
150 |
|
|
|
566 |
|
00:52:36,200 --> 00:52:42,380 |
|
And so on. Now, how can we choose the 200 from |
|
|
|
567 |
|
00:52:42,380 --> 00:52:46,280 |
|
level number one? Again, we have to choose the |
|
|
|
568 |
|
00:52:46,280 --> 00:52:55,540 |
|
random table. Now, 40% from this number, it means |
|
|
|
569 |
|
00:52:55,540 --> 00:52:59,620 |
|
5 |
|
|
|
570 |
|
00:52:59,620 --> 00:53:06,400 |
|
,000. This one has 5,000. 600 females students. |
|
|
|
571 |
|
00:53:07,720 --> 00:53:13,480 |
|
Because 40% of females in level 1. And I know that |
|
|
|
572 |
|
00:53:13,480 --> 00:53:17,780 |
|
the total number of females is 14,000. So number |
|
|
|
573 |
|
00:53:17,780 --> 00:53:23,420 |
|
of females in the first level is 5600. How many |
|
|
|
574 |
|
00:53:23,420 --> 00:53:28,040 |
|
digits we have? Four digits. The first one, 001, |
|
|
|
575 |
|
00:53:28,160 --> 00:53:34,460 |
|
all the way up to 560. If you go back, into a |
|
|
|
576 |
|
00:53:34,460 --> 00:53:39,520 |
|
random table, take five, four digits. So the first |
|
|
|
577 |
|
00:53:39,520 --> 00:53:43,340 |
|
number is 1922. |
|
|
|
578 |
|
00:53:43,980 --> 00:53:48,000 |
|
Next is 3950. |
|
|
|
579 |
|
00:53:50,140 --> 00:53:54,760 |
|
And so on. So that's the way how can we choose |
|
|
|
580 |
|
00:53:54,760 --> 00:53:58,640 |
|
stratified samples. |
|
|
|
581 |
|
00:54:02,360 --> 00:54:08,240 |
|
Next, the last one is called clusters. And let's |
|
|
|
582 |
|
00:54:08,240 --> 00:54:11,400 |
|
see now what's the difference between stratified |
|
|
|
583 |
|
00:54:11,400 --> 00:54:16,500 |
|
and cluster. Step one. |
|
|
|
584 |
|
00:54:25,300 --> 00:54:31,720 |
|
Population is divided into some clusters. |
|
|
|
585 |
|
00:54:35,000 --> 00:54:41,160 |
|
Step two, assemble one by assembling clusters |
|
|
|
586 |
|
00:54:41,160 --> 00:54:42,740 |
|
selective. |
|
|
|
587 |
|
00:54:46,100 --> 00:54:48,640 |
|
Here suppose how many clusters? |
|
|
|
588 |
|
00:54:53,560 --> 00:54:58,080 |
|
16 clusters. So there are, so the population has |
|
|
|
589 |
|
00:55:19,310 --> 00:55:25,820 |
|
Step two, you have to choose a simple random |
|
|
|
590 |
|
00:55:25,820 --> 00:55:31,440 |
|
number of clusters out of 16. Suppose I decided to |
|
|
|
591 |
|
00:55:31,440 --> 00:55:38,300 |
|
choose three among these. So we have 16 clusters. |
|
|
|
592 |
|
00:55:45,340 --> 00:55:49,780 |
|
For example, I chose cluster number 411. |
|
|
|
593 |
|
00:55:51,640 --> 00:56:01,030 |
|
So I choose these clusters. Next, all items in the |
|
|
|
594 |
|
00:56:01,030 --> 00:56:02,910 |
|
selected clusters can be used. |
|
|
|
595 |
|
00:56:09,130 --> 00:56:15,770 |
|
Or items |
|
|
|
596 |
|
00:56:15,770 --> 00:56:18,910 |
|
can be chosen from a cluster using another |
|
|
|
597 |
|
00:56:18,910 --> 00:56:21,130 |
|
probability sampling technique. For example, |
|
|
|
598 |
|
00:56:23,190 --> 00:56:28,840 |
|
imagine that We are talking about students who |
|
|
|
599 |
|
00:56:28,840 --> 00:56:31,460 |
|
registered for accounting. |
|
|
|
600 |
|
00:56:45,880 --> 00:56:50,540 |
|
Imagine that we have six sections for accounting. |
|
|
|
601 |
|
00:56:55,850 --> 00:56:56,650 |
|
six sections. |
|
|
|
602 |
|
00:57:00,310 --> 00:57:05,210 |
|
And I just choose two of these, cluster number one |
|
|
|
603 |
|
00:57:05,210 --> 00:57:08,910 |
|
or section number one and the last one. So my |
|
|
|
604 |
|
00:57:08,910 --> 00:57:12,590 |
|
chosen clusters are number one and six, one and |
|
|
|
605 |
|
00:57:12,590 --> 00:57:19,090 |
|
six. Or you can use the one we just talked about, |
|
|
|
606 |
|
00:57:19,590 --> 00:57:23,340 |
|
stratified random sample. instead of using all for |
|
|
|
607 |
|
00:57:23,340 --> 00:57:29,140 |
|
example suppose there are in this section there |
|
|
|
608 |
|
00:57:29,140 --> 00:57:36,180 |
|
are 73 models and the other one there are 80 |
|
|
|
609 |
|
00:57:36,180 --> 00:57:42,300 |
|
models and |
|
|
|
610 |
|
00:57:42,300 --> 00:57:46,720 |
|
the sample size here I am going to use case 20 |
|
|
|
611 |
|
00:57:50,900 --> 00:57:56,520 |
|
So you can use 10 here and 10 in the other one, or |
|
|
|
612 |
|
00:57:56,520 --> 00:58:03,060 |
|
it depends on the proportions. Now, 70 represents |
|
|
|
613 |
|
00:58:03,060 --> 00:58:09,580 |
|
70 out of 150, because there are 150 students in |
|
|
|
614 |
|
00:58:09,580 --> 00:58:14,060 |
|
these two clusters. Now, the entire population is |
|
|
|
615 |
|
00:58:14,060 --> 00:58:17,300 |
|
not the number for each of all of these clusters, |
|
|
|
616 |
|
00:58:17,560 --> 00:58:22,310 |
|
just number one sixth. So there are 150 students |
|
|
|
617 |
|
00:58:22,310 --> 00:58:25,090 |
|
in these two selected clusters. So the population |
|
|
|
618 |
|
00:58:25,090 --> 00:58:30,030 |
|
size is 150. Make sense? Then the proportion here |
|
|
|
619 |
|
00:58:30,030 --> 00:58:33,210 |
|
is 700 divided by 150 times 20. |
|
|
|
620 |
|
00:58:35,970 --> 00:58:41,610 |
|
The other one, 80 divided by 150 times 20. |
|
|
|
621 |
|
00:58:51,680 --> 00:58:55,960 |
|
So again, all items in the selected clusters can |
|
|
|
622 |
|
00:58:55,960 --> 00:58:59,400 |
|
be used or items can be chosen from the cluster |
|
|
|
623 |
|
00:58:59,400 --> 00:59:01,500 |
|
using another probability technique as we |
|
|
|
624 |
|
00:59:01,500 --> 00:59:06,640 |
|
mentioned. Let's see how can we use another |
|
|
|
625 |
|
00:59:06,640 --> 00:59:10,860 |
|
example. Let's talk about again AUG students. |
|
|
|
626 |
|
00:59:28,400 --> 00:59:31,800 |
|
I choose suppose level number 2 and level number |
|
|
|
627 |
|
00:59:31,800 --> 00:59:37,680 |
|
4, two levels, 2 and 4. Then you can take either |
|
|
|
628 |
|
00:59:37,680 --> 00:59:43,380 |
|
all the students here or just assemble size |
|
|
|
629 |
|
00:59:43,380 --> 00:59:46,460 |
|
proportion to the |
|
|
|
630 |
|
00:59:50,310 --> 00:59:54,130 |
|
For example, this one represents 20%, and my |
|
|
|
631 |
|
00:59:54,130 --> 00:59:56,730 |
|
sample size is 1000, so in this case you have to |
|
|
|
632 |
|
00:59:56,730 --> 01:00:00,310 |
|
take 200 and 800 from that one. |
|
|
|
633 |
|
01:00:03,050 --> 01:00:04,050 |
|
Any questions? |
|
|