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Last time we discussed hypothesis test for
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two population proportions. And we mentioned that
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the assumptions are for the first sample. n times
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pi should be at least 5, and also n times 1 minus
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pi is also at least 5. The same for the second
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sample, n 2 times pi 2 is at least 5, as well as n
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times 1 minus pi 2 is also at least 5. Also, we
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discussed that the point estimate for the
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difference of Pi 1 minus Pi 2 is given by P1 minus
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P2. That means this difference is unbiased point
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estimate of Pi 1 minus Pi 2. Similarly, P2 minus
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P1 is the point estimate of the difference Pi 2
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minus Pi 1.
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We also discussed that the bold estimate for the
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overall proportion is given by this equation. So B
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dash is called the bold estimate for the overall
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proportion. X1 and X2 are the number of items of
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interest. And the two samples that you have in one
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and two, where in one and two are the sample sizes
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for the first and the second sample respectively.
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The appropriate statistic in this course is given
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by this equation. Z-score or Z-statistic is the
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point estimate of the difference pi 1 minus pi 2
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minus the hypothesized value under if 0, I mean if
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0 is true, most of the time this term equals 0,
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divided by this quantity is called the standard
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error of the estimate, which is square root of B
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dash 1 minus B dash times 1 over N1 plus 1 over
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N2. So this is your Z statistic. The critical
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regions. I'm sorry, first, the appropriate null
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and alternative hypothesis are given by three
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cases we have. Either two-tailed test or one
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-tailed and it has either upper or lower tail. So
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for example, for lower-tailed test, We are going
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to test to see if a proportion 1 is smaller than a
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proportion 2. This one can be written as pi 1
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smaller than pi 2 under H1, or the difference
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between these two population proportions is
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negative, is smaller than 0. So either you may
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write the alternative as pi 1 smaller than pi 2,
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or the difference, which is pi 1 minus pi 2
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smaller than 0. For sure, the null hypothesis is
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the opposite of the alternative hypothesis. So if
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this is one by one smaller than by two, so the
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opposite by one is greater than or equal to two.
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Similarly, but the opposite side here, we are
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talking about the upper tail of probability. So
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under the alternative hypothesis, by one is
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greater than by two. Or it could be written as by
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one minus by two is positive, that means greater
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than zero. While for the two-tailed test, for the
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alternative hypothesis, we have Y1 does not equal
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Y2. In this case, we are saying there is no
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difference under H0, and there is a difference.
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should be under each one. Difference means either
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greater than or smaller than. So we have this not
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equal sign. So by one does not equal by two. Or it
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could be written as by one minus by two is not
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equal to zero. It's the same as the one we have
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discussed when we are talking about comparison of
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two population means. We just replaced these by's
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by mus. Finally, the rejection regions are given
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by three different charts here for the lower tail
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test. We reject the null hypothesis if the value
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of the test statistic fall in the rejection
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region, which is in the left side. So that means
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we reject zero if this statistic is smaller than
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negative zero. That's for lower tail test. On the
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other hand, for other tailed tests, your rejection
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region is the right side, so you reject the null
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hypothesis if this statistic is greater than Z
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alpha. In addition, for two-tailed tests, there
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are two rejection regions. One is on the right
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side, the other on the left side. Here, alpha is
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split into two halves, alpha over two to the
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right, similarly alpha over two to the left side.
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Here, we reject the null hypothesis if your Z
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statistic falls in the rejection region here, that
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means z is smaller than negative z alpha over 2 or
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z is greater than z alpha over 2. Now this one, I
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mean the rejection regions are the same for either
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one sample t-test or two sample t-test, either for
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the population proportion or the population mean.
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We have the same rejection regions. Sometimes we
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replace z by t. It depends if we are talking about
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small samples and sigmas unknown. So that's the
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basic concepts about testing or hypothesis testing
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for the comparison between two population
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proportions. And we stopped at this point. I will
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give three examples, three examples for testing
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about two population proportions. The first one is
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given here. It says that, is there a significant
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difference between the proportion of men and the
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proportion of women who will vote yes on a
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proposition?
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In this case, we are talking about a proportion.
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So this problem tests for a proportion. We have
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two proportions here because we have two samples
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for two population spheres, men and women. So
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there are two populations. So we are talking about
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two population proportions. Now, we have to state
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carefully now an alternative hypothesis. So for
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example, let's say that phi 1 is the population
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proportion, proportion of men who will vote for a
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proposition A for example, for vote yes, for vote
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yes for proposition A.
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is the same but of men, of women, I'm sorry. So
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the first one for men and the other of
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women. Now, in a random, so in this case, we are
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talking about difference between two population
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proportions, so by one equals by two.
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Your alternate hypothesis should be, since the
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problem talks about, is there a significant
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difference? Difference means two tails. So it
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should be pi 1 does not equal pi 2. Pi 1 does not
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equal pi 2. So there's still one state null and
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alternate hypothesis. Now, in a random sample of
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36 out of 72 men, And 31 of 50 women indicated
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they would vote yes. So for example, if X1
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represents number of men who would vote yes, that
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means X1 equals 36 in
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172. So that's for men. Now for women. 31 out of
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50. So 50 is the sample size for the second
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sample. Now it's ask about this test about the
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difference between the two population proportion
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at 5% level of significance. So alpha is given to
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be 5%. So that's all the information you have in
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order to answer this question. So based on this
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statement, we state null and alternative
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hypothesis. Now based on this information, we can
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solve the problem by using three different
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approaches. Critical value approach, B value, and
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confidence interval approach. Because we can use
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confidence interval approach because we are
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talking about two-tailed test. So let's start with
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the basic one, critical value approach. So
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approach A.
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Now since we are talking about two-tailed test,
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your critical value should be plus or minus z
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alpha over 2. And since alpha is 5% so the
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critical values are z
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plus or minus 0.25 which is 196. Or you may use
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the standard normal table in order to find the
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critical values. Or just if you remember that
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values from previous time. So the critical regions
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are above 196 or smaller than negative 196. I have
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to compute the Z statistic. Now Z statistic is
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given by this equation. Z stat equals B1 minus B2.
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minus Pi 1 minus Pi 2. This quantity divided by P
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dash 1 minus P dash multiplied by 1 over N1 plus 1
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over N1. Here we have to find B1, B2. So B1 equals
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X1 over N1. X1 is given.
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to that means 50%. Similarly,
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B2 is A equals X2 over into X to the third power
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over 50, so that's 60%. Also, we have to compute
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the bold estimate of the overall proportion of B
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dash
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What are the sample sizes we have? X1 and X2. 36
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plus 31. Over 72 plus 7. 72 plus 7. So that means
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67 over 152.549.
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120.
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So simple calculations give B1 and B2, as well as
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B dash. Now, plug these values on the Z-state
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formula, we get the value that is this. So first,
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state null and alternative hypothesis, pi 1 minus
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pi 2 equals 0. That means the two populations are
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equal. We are going to test this one against Pi 1
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minus Pi 2 is not zero. That means there is a
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significant difference between proportions. Now
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for men, we got proportion of 50%. That's for the
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similar proportion. And similar proportion for
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women who will vote yes for position A is 62%. The
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pooled estimate for the overall proportion equals
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0.549. Now, based on this information, we can
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calculate the Z statistic. Straightforward
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calculation, you will end with this result. So, Z
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start negative 1.31.
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So, we have to compute this one before either
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before using any of the approaches we have.
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If we are going to use their critical value
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approach, we have to find Z alpha over 2 which is
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1 more than 6. Now the question is, is this value
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falling the rejection regions right or left? it's
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clear that this value, negative 1.31, lies in the
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non-rejection region, so we don't reject a null
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hypothesis. So my decision is don't reject H0. My
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conclusion is there is not significant evidence of
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a difference in proportions who will vote yes
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between men and women. Even it seems to me that
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there is a difference between Similar proportions,
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50% and 62%. Still, this difference is not
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significant in order to say that there is
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significant difference between the proportions of
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for pi 1 minus pi 2 is given by this equation. Now
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let's see how can we use the other two approaches
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in order to test if there is a significant
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difference between the proportions of men and
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women. I'm sure you don't have this slide for
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computing B value and confidence interval.
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Now since we are talking about two-tails, your B
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value should be the probability of Z greater than
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1.31 and smaller than negative 1.31. So my B value
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in this case equals Z greater than 1.31 plus Z
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smaller than negative 1.31. Since we are talking
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about two-tailed tests, so there are two rejection
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regions. My Z statistic is 1.31, so it should be
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here 1.31 to the right, and negative 1.31 to the left. Now, what's
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the probability that the Z statistic will fall in
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the rejection regions, right or left? So we have
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to add. B of Z greater than 1.31 and B of Z
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smaller than negative 1.31. Now the two areas to the
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right of 1.31 and to the left of negative 1.31 are
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equal because of symmetry. So just compute one and
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multiply that by two, you will get the B value. So
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two times. Now by using the concept in chapter
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six, easily you can compute either this one or the
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other one. The other one directly from the
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negative z-score table. The other one you should
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have the complement 1 minus, because it's smaller
249
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than 1.1. And either way you will get this result.
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Now my p-value is around 19%. Always we reject the
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null hypothesis. If your B value is smaller than
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alpha, that always we reject null hypothesis, if my
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B value is smaller than alpha, alpha is given 5%
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since B value equals
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19%, which is much bigger than 5%, so we don't reject our analysis. So my
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decision is we don't reject at zero. So the same
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conclusion as we reached by using critical
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value approach. So again, by using B value, we have to
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compute the probability that your Z statistic
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falls in the rejection regions. I end with this
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result, my B value is around 19%. As we mentioned
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before, we reject null hypothesis if my B value is
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smaller than alpha. Now, my B value in this case
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is much, much bigger than 5%, so my decision is
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don't reject null hypothesis. Any questions?
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The other approach, the third one, confidence
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interval approach.
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Now, for the confidence interval approach, we have
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this equation, b1 minus b2. Again, the point
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estimate, plus or minus z square root b1 times 1
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minus b1 divided by a1. B2 times 1 minus B2
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divided by N2.
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Now we have B1 and B2, so 0.5 minus 0.62. That's
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your calculations from previous information we
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have. Plus or minus Z alpha over 2, the critical
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value again is 1.96 times Square root of P1, 0.5
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times 1 minus 0.5 divided by N1 plus P2, 62 percent
279
00:21:41,090 --> 00:21:46,550
times 1 minus P2 divided by N2. 0.5 minus 62
280
00:21:46,550 --> 00:21:50,650
percent is negative 12 percent plus or minus the
281
00:21:50,650 --> 00:21:53,090
margin of error. This amount is again as we
282
00:21:53,090 --> 00:21:56,730
mentioned before, is the margin of error, 0.177.
283
00:21:57,530 --> 00:21:59,830
Now simple calculation will end with this result
284
00:21:59,830 --> 00:22:03,300
that is the difference between the two proportions
285
00:22:03,300 --> 00:22:09,820
lie between negative 0.296 and 0.057. That means
286
00:22:09,820 --> 00:22:14,580
we are 95% confident that the difference between
287
00:22:14,580 --> 00:22:19,100
the proportions of men who will vote yes for a
288
00:22:19,100 --> 00:22:27,640
position A and women equals negative 0.297 up to 0
289
00:22:27,640 --> 00:22:31,680
.057. Now the question is, since we are testing
290
00:22:31,680 --> 00:22:37,380
if the difference between p1 and p2 equals zero, the
291
00:22:37,380 --> 00:22:41,700
question is does this interval contain zero or
292
00:22:41,700 --> 00:22:47,680
capture zero? Now since we start here from
293
00:22:47,680 --> 00:22:51,230
negative and end with positive, I mean the lower
294
00:22:51,230 --> 00:22:55,330
bound is negative 0.297 and the upper bound is 0
295
00:22:55,330 --> 00:23:00,610
.057. So zero is inside the interval, I mean the
296
00:23:00,610 --> 00:23:03,870
confidence interval contains zero in this case, so
297
00:23:03,870 --> 00:23:06,650
we don't reject the null hypothesis because maybe
298
00:23:06,650 --> 00:23:11,780
the difference equals zero. So since this interval
299
00:23:11,780 --> 00:23:16,300
does contain the hypothesized difference of zero, so we
300
00:23:16,300 --> 00:23:21,100
don't reject null hypothesis at 5% level. So the
301
00:23:21,100 --> 00:23:24,880
same conclusion as we got before by using critical
302
00:23:24,880 --> 00:23:27,460
value approach and p-value approach. So either
303
00:23:27,460 --> 00:23:32,100
one will end with the same decision. Either reject
304
00:23:32,100 --> 00:23:37,020
or fail to reject, it depends on the test itself.
305
00:23:38,760 --> 00:23:43,820
That's all. Do you have any question? Any
306
00:23:43,820 --> 00:23:47,540
question? So again, there are three different
307
00:23:47,540 --> 00:23:51,600
approaches in order to solve this problem. One is
308
00:23:51,600 --> 00:23:55,680
critical value approach, the standard one. The
309
00:23:55,680 --> 00:23:58,900
other two are the p-value approach and confidence
310
00:23:58,900 --> 00:24:02,140
interval. One more time, confidence interval is
311
00:24:02,140 --> 00:24:07,080
only valid for
312
00:24:08,770 --> 00:24:13,110
two-tailed tests. Because the confidence interval
313
00:24:13,110 --> 00:24:16,430
we have is just for two-tailed tests, so it could
314
00:24:16,430 --> 00:24:20,210
be used only for testing about two-tailed tests.
315
00:24:23,350 --> 00:24:25,990
As we mentioned before, I'm going to skip
316
00:24:25,990 --> 00:24:32,390
hypothesis for variances as well as ANOVA test. So
317
00:24:32,390 --> 00:24:36,410
that's all for chapter ten.
318
00:24:37,670 --> 00:24:42,390
But now I'm going to do some of the practice
319
00:24:42,390 --> 00:24:43,730
problems.
320
00:24:46,750 --> 00:24:52,630
Chapter 10. To practice, let's start with some
321
00:24:52,630 --> 00:24:55,270
practice problems for Chapter 10.
322
00:24:59,270 --> 00:25:03,770
A few years ago, Pepsi invited consumers to take
323
00:25:03,770 --> 00:25:08,870
the Pepsi challenge. Consumers were asked to
324
00:25:08,870 --> 00:25:13,790
decide which of two sodas, Coke or Pepsi, they
325
00:25:13,790 --> 00:25:17,930
preferred in a blind taste test. Pepsi was
326
00:25:17,930 --> 00:25:21,930
interested in determining what factors played a
327
00:25:21,930 --> 00:25:25,930
role in people's taste preferences. One of the
328
00:25:25,930 --> 00:25:28,630
factors studied was the gender of the consumer.
329
00:25:29,650 --> 00:25:32,350
Below are the results of the analysis comparing
330
00:25:32,350 --> 00:25:36,870
the taste preferences of men and women with the
331
00:25:36,870 --> 00:25:41,630
proportions depicting preference in or for Pepsi.
332
00:25:42,810 --> 00:25:49,190
For men, the sample size
333
00:25:49,190 --> 00:25:57,990
is 109. So that's your N1. And the proportion
334
00:26:00,480 --> 00:26:09,100
for men is around 42%. For women,
335
00:26:11,640 --> 00:26:25,720
N2 equals 52, and the proportion of females, 25%. The
336
00:26:25,720 --> 00:26:29,870
difference between the proportions of men and women or
337
00:26:29,870 --> 00:26:35,590
males and females is 0.172, around 0.172. And this
338
00:26:35,590 --> 00:26:41,530
statistic is given by 2.118, so approximately 2
339
00:26:41,530 --> 00:26:47,170
.12. Now, based on this result, based on this
340
00:26:47,170 --> 00:26:49,090
information, question number one,
341
00:26:53,910 --> 00:26:58,690
To determine if a difference exists in the taste
342
00:26:58,690 --> 00:27:04,490
preferences of men and women, give the correct
343
00:27:04,490 --> 00:27:06,970
alternative hypothesis that will guide the test.
344
00:27:08,830 --> 00:27:15,830
A, B, Why B? Because the test defines between the
345
00:27:15,830 --> 00:27:18,650
new form A and the new form B. Because if we say
346
00:27:18,650 --> 00:27:21,910
that H1 is equal to U1 minus M equals F,
347
00:27:28,970 --> 00:27:34,190
So the correct answer is B? B. So that's
348
00:27:34,190 --> 00:27:40,830
incorrect. C. Why? Why C is the correct answer?
349
00:27:45,470 --> 00:27:46,070
Because
350
00:27:52,720 --> 00:27:56,500
p1 is not equal because we have difference. So
351
00:27:56,500 --> 00:27:59,380
since we have difference here, it should be not
352
00:27:59,380 --> 00:28:02,240
equal to. And since we are talking about
353
00:28:02,240 --> 00:28:06,120
proportions, so you have to ignore A and B. So A
354
00:28:06,120 --> 00:28:10,020
and B should be ignored first. Then you either
355
00:28:10,020 --> 00:28:15,220
choose C or D. C is the correct answer. So C is
356
00:28:15,220 --> 00:28:20,440
the correct answer. That's for number one. Part
357
00:28:20,440 --> 00:28:27,100
two. Now suppose Pepsi wanted to test to determine
358
00:28:27,100 --> 00:28:35,680
if men preferred Pepsi more than women. Using
359
00:28:35,680 --> 00:28:38,400
the test statistic given, compute the appropriate
360
00:28:38,400 --> 00:28:43,940
p-value for the test. Let's assume that pi 1 is
361
00:28:43,940 --> 00:28:48,640
the population proportion for men who preferred
362
00:28:48,640 --> 00:28:56,440
Pepsi, and pi 2 for women who prefer Pepsi. Now
363
00:28:56,440 --> 00:29:00,140
he asks about suppose the company wanted to test
364
00:29:00,140 --> 00:29:02,760
to determine if males prefer Pepsi more than
365
00:29:02,760 --> 00:29:08,080
females. Using again the statistic given, which is
366
00:29:08,080 --> 00:29:13,400
2.12 for example, compute the appropriate p-value. Now
367
00:29:13,400 --> 00:29:18,160
let's state first H0 and H1.
368
00:29:27,450 --> 00:29:31,970
H1, pi 1
369
00:29:31,970 --> 00:29:34,410
minus pi 2 is greater than zero.
370
00:29:37,980 --> 00:29:42,740
Because it says that men prefer Pepsi more than
371
00:29:42,740 --> 00:29:46,940
women. pi 1 for men, pi 2 for women. So I
372
00:29:46,940 --> 00:29:50,800
should have pi 1 greater than pi 2, or pi 1 minus
373
00:29:50,800 --> 00:29:54,940
pi 2 is positive. So it's upper-tailed. Now, in this
374
00:29:54,940 --> 00:30:01,940
case, my p-value, its probability, is p.
375
00:30:05,680 --> 00:30:07,320
It's around this value.
376
00:30:12,410 --> 00:30:18,230
1 minus p of z smaller than 2.12. So 1 minus,
377
00:30:18,350 --> 00:30:21,530
now by using the table or the z table we have.
378
00:30:25,510 --> 00:30:29,370
Since we are talking about 2.12, so
379
00:30:29,370 --> 00:30:34,670
the answer is .983. So
380
00:30:34,670 --> 00:30:40,590
1 minus .983, so the answer is 0.017. So my p value
381
00:30:43,430 --> 00:30:49,890
equals 0.017. So A is the correct answer. Now if
382
00:30:49,890 --> 00:30:53,970
the problem is a two-tailed test, it should be
383
00:30:53,970 --> 00:30:57,450
multiplied by 2. So the answer, the correct one, should
384
00:30:57,450 --> 00:31:02,230
be B. So you have A and B. If it is one-tailed,
385
00:31:02,390 --> 00:31:06,310
your correct answer is A. If it is two-tailed, I
386
00:31:06,310 --> 00:31:10,550
mean, if we are testing to determine if a
387
00:31:10,550 --> 00:31:13,890
difference exists, then you have to multiply this
388
00:31:13,890 --> 00:31:19,030
one by two. So that's your p value. Any questions?
389
00:31:23,010 --> 00:31:27,550
Number three. Suppose Pepsi wanted to test to
390
00:31:27,550 --> 00:31:33,230
determine if men prefer Pepsi less than
391
00:31:33,230 --> 00:31:36,810
women, using the statistic given, compute the
392
00:31:36,810 --> 00:31:42,990
appropriate p-value. Now, H1 in this case, p1 is
393
00:31:42,990 --> 00:31:48,490
smaller than p2, p1 smaller than p2. Now your
394
00:31:48,490 --> 00:31:54,490
p-value, z is smaller than, because here it is
395
00:31:54,490 --> 00:31:58,050
smaller than my statistic 2.12.
396
00:32:01,570 --> 00:32:04,790
We don't write a negative sign. Because the value of
397
00:32:04,790 --> 00:32:08,150
the statistic is 2.12. But here we are going to
398
00:32:08,150 --> 00:32:11,790
test a lower-tailed test. So my p-value is p of Z
399
00:32:11,790 --> 00:32:15,250
smaller than. So smaller comes from the
400
00:32:15,250 --> 00:32:17,730
alternative. This is the sign under the alternative.
401
00:32:18,910 --> 00:32:21,810
And you have to take the value of the Z statistic
402
00:32:21,810 --> 00:32:22,510
as it is.
403
00:32:25,610 --> 00:32:34,100
So p of Z is smaller than 2.12. So they need, if
404
00:32:34,100 --> 00:32:38,060
you got a correct answer, D is the correct one. If p is
405
00:32:38,060 --> 00:32:40,420
the correct answer, you will get .9996
406
00:32:40,420 --> 00:32:47,620
.6, that's the incorrect answer. Any questions? The
407
00:32:47,620 --> 00:32:53,920
correct answer is D, number
408
00:32:53,920 --> 00:32:57,620
four. Suppose
409
00:32:57,620 --> 00:33:03,650
that Now, for example, forget the information we
410
00:33:03,650 --> 00:33:07,390
have so far for p-value. Suppose that the two
411
00:33:07,390 --> 00:33:11,910
-tailed p-value was really
445
00:35:55,720 --> 00:35:58,800
we if we reject it means that we have sufficient
446
00:35:58,800 --> 00:36:02,700
evidence to support the alternative so D is
447
00:36:02,700 --> 00:36:07,470
incorrect Now what's about C at five percent Five,
448
00:36:07,830 --> 00:36:10,570
so this value is greater than five, so we don't
449
00:36:10,570 --> 00:36:13,270
reject. So that's incorrect.
450
00:36:21,370 --> 00:36:28,030
B. At five, at 10% now, there is sufficient
451
00:36:28,030 --> 00:36:34,550
evidence. Sufficient means we reject. We reject.
452
00:36:35,220 --> 00:36:40,440
Since this B value, 0.7, is smaller than alpha. 7%
453
00:36:40,440 --> 00:36:44,240
is smaller than 10%. So we reject. That means you
454
00:36:44,240 --> 00:36:46,960
have to read carefully. There is sufficient
455
00:36:46,960 --> 00:36:50,280
evidence to include, to indicate the proportion of
456
00:36:50,280 --> 00:36:54,820
males preferring Pepsi differs from the proportion
457
00:36:54,820 --> 00:36:58,660
of females. That's correct. So B is the correct
458
00:36:58,660 --> 00:37:05,570
state. Now look at A. A, at 5% there is sufficient
459
00:37:05,570 --> 00:37:09,710
evidence? No, because this value is greater than
460
00:37:09,710 --> 00:37:16,970
alpha, so we don't reject. For this one. Here we
461
00:37:16,970 --> 00:37:21,050
reject because at 10% we reject. So B is the
462
00:37:21,050 --> 00:37:27,670
correct answer. Make sense? Yeah, exactly, for
463
00:37:27,670 --> 00:37:31,850
10%. If this value is 5%, then B is incorrect.
464
00:37:34,190 --> 00:37:38,690
Again, if we change this one to be 5%, still this
465
00:37:38,690 --> 00:37:39,870
statement is false.
466
00:37:43,050 --> 00:37:48,670
It should be smaller than alpha in order to reject
467
00:37:48,670 --> 00:37:53,770
the null hypothesis. So, B is the correct
468
00:37:53,770 --> 00:37:56,350
statement.
469
00:37:58,180 --> 00:38:02,080
Always insufficient means you don't reject null
470
00:38:02,080 --> 00:38:06,000
hypothesis. Now for D, we reject null hypothesis
471
00:38:06,000 --> 00:38:10,500
at 8%. Since this value 0.7 is smaller than alpha,
472
00:38:10,740 --> 00:38:14,700
so we reject. So this is incorrect. Now for C, be
473
00:38:14,700 --> 00:38:19,440
careful. At 5%, if this, if we change this one
474
00:38:19,440 --> 00:38:23,560
little bit, there is insufficient evidence. What
475
00:38:23,560 --> 00:38:32,320
do you think? About C. If we change part C as at 5
476
00:38:32,320 --> 00:38:36,540
% there is insufficient evidence to indicate the
477
00:38:36,540 --> 00:38:39,840
proportion of males preferring Pepsi equals.
478
00:38:44,600 --> 00:38:49,940
You cannot say equal because this one maybe yes
479
00:38:49,940 --> 00:38:53,200
maybe no you don't know the exact answer. So if we
480
00:38:53,200 --> 00:38:56,380
don't reject the null hypothesis then you don't
481
00:38:56,380 --> 00:38:58,780
have sufficient evidence in order to support each
482
00:38:58,780 --> 00:39:03,800
one. So, don't reject the zero as we mentioned
483
00:39:03,800 --> 00:39:10,660
before. Don't reject the zero does not imply
484
00:39:10,660 --> 00:39:16,840
if zero is true. It means the evidence, the data
485
00:39:16,840 --> 00:39:19,500
you have is not sufficient to support the
486
00:39:19,500 --> 00:39:25,260
alternative evidence. So, don't say equal to. So
487
00:39:25,260 --> 00:39:30,560
say don't reject rather than saying accept. So V
488
00:39:30,560 --> 00:39:31,460
is the correct answer.
489
00:39:35,940 --> 00:39:43,020
Six, seven, and eight. Construct 90% confidence
490
00:39:43,020 --> 00:39:48,380
interval, construct 95, construct 99. It's
491
00:39:48,380 --> 00:39:52,700
similar, just the critical value will be changed.
492
00:39:53,620 --> 00:39:58,380
Now my question is, which is the widest confidence
493
00:39:58,380 --> 00:40:03,080
interval in this case? 99. The last one is the
494
00:40:03,080 --> 00:40:08,040
widest because here 99 is the largest confidence
495
00:40:08,040 --> 00:40:11,160
limit. So that means the width of the interval is
496
00:40:11,160 --> 00:40:12,620
the largest in this case.
497
00:40:17,960 --> 00:40:23,770
For 5, 6 and 7. The question is construct either
498
00:40:23,770 --> 00:40:30,930
90%, 95% or 99% for the same question. Simple
499
00:40:30,930 --> 00:40:33,510
calculation will give the confidence interval for
500
00:40:33,510 --> 00:40:38,590
each one. My question was, which one is the widest
501
00:40:38,590 --> 00:40:43,630
confidence interval? Based on the C level, 99%
502
00:40:43,630 --> 00:40:47,350
gives the widest confidence interval comparing to
503
00:40:47,350 --> 00:41:02,100
90% and 95%. The exact answers for 5, 6 and 7, 0.5
504
00:41:02,100 --> 00:41:08,900
to 30 percent. For 95 percent, 0.2 to 32 percent.
505
00:41:10,750 --> 00:41:16,030
For 99, negative 0.3 to 0.37. So this is the
506
00:41:16,030 --> 00:41:21,970
widest. Because here we start from 5 to 30. Here
507
00:41:21,970 --> 00:41:26,030
we start from lower than 5, 2%, up to upper, for
508
00:41:26,030 --> 00:41:31,190
greater than 30, 32. Here we start from negative 3
509
00:41:31,190 --> 00:41:35,330
% up to 37. So this is the widest confidence
510
00:41:35,330 --> 00:41:41,950
interval. Number six. Number six. number six five
511
00:41:41,950 --> 00:41:44,850
six and seven are the same except we just share
512
00:41:44,850 --> 00:41:49,710
the confidence level z so here we have one nine
513
00:41:49,710 --> 00:41:54,070
six instead of one six four and two point five
514
00:41:54,070 --> 00:42:01,170
seven it's our seven six next read the table e
515
00:42:12,610 --> 00:42:19,330
Table A. Corporation randomly selects 150
516
00:42:19,330 --> 00:42:25,830
salespeople and finds that 66% who have never
517
00:42:25,830 --> 00:42:29,070
taken self-improvement course would like such a
518
00:42:29,070 --> 00:42:33,830
course. So currently, or in recent,
519
00:42:37,660 --> 00:42:46,940
It says that out of 150 sales people, find that 66
520
00:42:46,940 --> 00:42:51,000
% would
521
00:42:51,000 --> 00:42:56,720
like to take such course. The firm did a similar
522
00:42:56,720 --> 00:43:01,480
study 10 years ago. So in the past, they had the
523
00:43:01,480 --> 00:43:07,430
same study in which 60% of a random sample of 160
524
00:43:07,430 --> 00:43:12,430
salespeople wanted a self-improvement course. So
525
00:43:12,430 --> 00:43:13,710
in the past,
526
00:43:16,430 --> 00:43:25,230
into 160, and proportion is 60%. The groups are
527
00:43:25,230 --> 00:43:29,690
assumed to be independent random samples. Let Pi 1
528
00:43:29,690 --> 00:43:32,890
and Pi 2 represent the true proportion of workers
529
00:43:32,890 --> 00:43:36,030
who would like to attend a self-improvement course
530
00:43:36,030 --> 00:43:39,550
in the recent study and the past study
531
00:43:39,550 --> 00:43:44,490
respectively. So suppose Pi 1 and Pi 2. Pi 1 for
532
00:43:44,490 --> 00:43:49,470
recent study and Pi 2 for the past study. So
533
00:43:49,470 --> 00:43:53,590
that's the question. Now, question number one.
534
00:43:56,580 --> 00:44:00,220
If the firm wanted to test whether this proportion
535
00:44:00,220 --> 00:44:06,800
has changed from the previous study, which
536
00:44:06,800 --> 00:44:09,100
represents the relevant hypothesis?
537
00:44:14,160 --> 00:44:18,540
Again, the firm wanted to test whether this
538
00:44:18,540 --> 00:44:21,740
proportion has changed. From the previous study,
539
00:44:22,160 --> 00:44:25,900
which represents the relevant hypothesis in this
540
00:44:25,900 --> 00:44:26,140
case?
541
00:44:33,560 --> 00:44:40,120
Which is the correct? A is
542
00:44:40,120 --> 00:44:44,500
the correct answer. Why A is the correct answer?
543
00:44:45,000 --> 00:44:48,040
Since we are talking about proportions, so it
544
00:44:48,040 --> 00:44:51,750
should have pi. It changed, it means does not
545
00:44:51,750 --> 00:44:55,410
equal 2. So A is the correct answer. Now B is
546
00:44:55,410 --> 00:45:00,850
incorrect because why B is incorrect? Exactly
547
00:45:00,850 --> 00:45:03,770
because under H0 we have pi 1 minus pi 2 does not
548
00:45:03,770 --> 00:45:08,570
equal 0. Always equal sign appears only under the
549
00:45:08,570 --> 00:45:14,950
null hypothesis. So it's the opposite here. Now C
550
00:45:14,950 --> 00:45:21,190
and D talking about Upper tier or lower tier, but
551
00:45:21,190 --> 00:45:23,890
here we're talking about two-tiered test, so A is
552
00:45:23,890 --> 00:45:24,750
the correct answer.
553
00:45:29,490 --> 00:45:33,090
This sign null hypothesis states incorrectly,
554
00:45:34,030 --> 00:45:38,010
because under H0 should have equal sign, and for
555
00:45:38,010 --> 00:45:39,730
alternate it should be not equal to.
556
00:45:42,770 --> 00:45:43,630
Number two.
557
00:45:47,860 --> 00:45:51,840
If the firm wanted to test whether a greater
558
00:45:51,840 --> 00:45:56,680
proportion of workers would currently like to
559
00:45:56,680 --> 00:46:00,180
attend a self-improvement course than in the past,
560
00:46:00,900 --> 00:46:05,840
currently, the proportion is greater than in the
561
00:46:05,840 --> 00:46:13,680
past. Which represents the relevant hypothesis? C
562
00:46:13,680 --> 00:46:18,180
is the correct answer. Because it says a greater
563
00:46:18,180 --> 00:46:22,340
proportion of workers work currently. So by one,
564
00:46:22,420 --> 00:46:26,340
greater than by two. So C is the correct answer.
565
00:46:31,340 --> 00:46:40,140
It says that the firm wanted to test proportion of
566
00:46:40,140 --> 00:46:46,640
workers currently study
567
00:46:46,640 --> 00:46:50,320
or recent study by one represents the proportion
568
00:46:50,320 --> 00:46:55,140
of workers who would like to attend the course so
569
00:46:55,140 --> 00:46:58,080
that's by one greater than
570
00:47:01,730 --> 00:47:05,350
In the past. So it means by one is greater than by
571
00:47:05,350 --> 00:47:11,870
two. It means by one minus by two is positive. So
572
00:47:11,870 --> 00:47:14,590
the alternative is by one minus two by two is
573
00:47:14,590 --> 00:47:16,430
positive. So this one is the correct answer.
574
00:47:21,530 --> 00:47:26,910
Exactly. If if here we have what in the past
575
00:47:26,910 --> 00:47:30,430
should be it should be the correct answer.
576
00:47:34,690 --> 00:47:40,450
That's to three. Any question for going to number
577
00:47:40,450 --> 00:47:49,590
three? Any question for number two? Three. What is
578
00:47:49,590 --> 00:47:52,790
the unbiased point estimate for the difference
579
00:47:52,790 --> 00:47:54,410
between the two population proportions?
580
00:47:58,960 --> 00:48:04,360
B1 minus B2 which is straight forward calculation
581
00:48:04,360 --> 00:48:06,980
gives A the correct answer. Because the point
582
00:48:06,980 --> 00:48:13,320
estimate in this case is B1 minus B2. B1 is 66
583
00:48:13,320 --> 00:48:18,560
percent, B2 is 60 percent, so the answer is 6
584
00:48:18,560 --> 00:48:26,190
percent. So B1 minus B2 which is 6 percent. I
585
00:48:26,190 --> 00:48:32,450
think three is straightforward. Number four, what
586
00:48:32,450 --> 00:48:38,450
is or are the critical values which, when
587
00:48:38,450 --> 00:48:41,870
performing a z-test on whether population
588
00:48:41,870 --> 00:48:46,570
proportions are different at 5%. Here, yes, we are
589
00:48:46,570 --> 00:48:52,250
talking about two-tailed test, and alpha is 5%. So
590
00:48:52,250 --> 00:48:55,550
my critical values, they are two critical values,
591
00:48:55,630 --> 00:48:55,830
actually.
592
00:49:27,080 --> 00:49:31,000
What is or are the critical values when testing
593
00:49:31,000 --> 00:49:34,260
whether population proportions are different at 10
594
00:49:34,260 --> 00:49:39,240
%? The same instead here we have 10 instead of 5%.
595
00:49:40,920 --> 00:49:45,100
So A is the correct answer. So just use the table.
596
00:49:47,340 --> 00:49:51,440
Now for the previous one, we have 0 to 5, 0 to 5.
597
00:49:51,980 --> 00:49:57,740
The other one, alpha is 10%. So 0, 5 to the right,
598
00:49:57,880 --> 00:50:03,580
the same as to the left. So plus or minus 164.
599
00:50:06,700 --> 00:50:11,580
So 4 and 5 by using the z table.
600
00:50:20,560 --> 00:50:25,280
So exactly, since alpha here is 1, 0, 2, 5, so the
601
00:50:25,280 --> 00:50:27,880
area becomes smaller than, so it should be z
602
00:50:27,880 --> 00:50:32,380
greater than. So 1.106, the other one 1.645,
603
00:50:32,800 --> 00:50:38,030
number 6. What is or are? The critical value in
604
00:50:38,030 --> 00:50:42,450
testing whether the current population is higher
605
00:50:42,450 --> 00:50:50,990
than. Higher means above. Above 10. Above 10, 5%.
606
00:50:50,990 --> 00:50:55,870
So which? B.
607
00:50:58,470 --> 00:51:00,810
B is the correct. Z alpha.
608
00:51:06,700 --> 00:51:08,440
So, B is the correct answer.
609
00:51:11,200 --> 00:51:11,840
7.
610
00:51:14,740 --> 00:51:21,320
7 and 8 we should have to calculate number 1. 7
611
00:51:21,320 --> 00:51:25,880
was the estimated standard error of the difference
612
00:51:25,880 --> 00:51:29,660
between the two sample proportions. We should have
613
00:51:29,660 --> 00:51:30,740
a standard error.
614
00:51:34,620 --> 00:51:40,320
Square root, B dash 1 minus B dash multiplied by 1
615
00:51:40,320 --> 00:51:45,300
over N1 plus 1 over N2. And we have to find B dash
616
00:51:45,300 --> 00:51:49,220
here. Let's see how can we find B dash.
617
00:51:52,720 --> 00:51:59,700
B dash
618
00:51:59,700 --> 00:52:05,800
equal x1 plus x2. Now what's the value of X1?
619
00:52:10,400 --> 00:52:16,220
Exactly. Since B1 is X1 over N1. So that means X1
620
00:52:16,220 --> 00:52:26,600
is N1 times B1. So N1 is 150 times 60%. So that's
621
00:52:26,600 --> 00:52:35,980
99. And similarly, X2 N2, which is 160, times 60%
622
00:52:35,980 --> 00:52:48,420
gives 96. So your B dash is x1 plus x2 divided by
623
00:52:48,420 --> 00:52:55,200
N1 plus N2, which is 150 plus 310. So complete B
624
00:52:55,200 --> 00:52:58,760
dash versus the bold estimate of overall
625
00:52:58,760 --> 00:53:03,570
proportion So 9 and 9 plus 9 is 6.
626
00:53:06,390 --> 00:53:07,730
That's just B-.
627
00:53:13,210 --> 00:53:14,290
6 to 9.
628
00:53:17,150 --> 00:53:23,190
6 to 9. So this is not your answer. It's just B-.
629
00:53:23,770 --> 00:53:29,030
Now take this value and the square root of 6 to 9.
630
00:53:30,060 --> 00:53:36,280
times 1.629 multiplied by 1 over N1 which is 150
631
00:53:36,280 --> 00:53:44,980
plus 160. That's your standard error. B dash is
632
00:53:44,980 --> 00:53:49,080
not standard error. B dash is the bold estimate of
633
00:53:49,080 --> 00:53:53,740
overall
667
00:56:53,150 --> 00:56:58,230
critical regions are 1.96 and above or smaller
668
00:56:58,230 --> 00:57:07,550
than minus 1.96. Now, my z statistic is 1.903. Now
669
00:57:07,550 --> 00:57:12,610
this value falls in the non-rejection region. So
670
00:57:12,610 --> 00:57:14,310
we don't reject the null hypothesis.
671
00:57:16,900 --> 00:57:21,400
Ignore A and C, so the answer is either B or D.
672
00:57:22,260 --> 00:57:26,360
Now let's read B. Don't reject the null and
673
00:57:26,360 --> 00:57:28,820
conclude that the proportion of employees who are
674
00:57:28,820 --> 00:57:31,600
interested in self-improvement course has not
675
00:57:31,600 --> 00:57:32,100
changed.
676
00:57:37,040 --> 00:57:40,060
That's correct. Because we don't reject the null
677
00:57:40,060 --> 00:57:42,900
hypothesis. It means there is no significant
678
00:57:42,900 --> 00:57:45,760
difference. So it has not changed. Now, D, don't
679
00:57:45,760 --> 00:57:47,540
reject the null hypothesis and conclude the
680
00:57:47,540 --> 00:57:49,760
proportion of Obliques who are interested in a
681
00:57:49,760 --> 00:57:52,700
certain point has increased, which is incorrect.
682
00:57:53,640 --> 00:57:57,960
So B is the correct answer. So again, since my Z
683
00:57:57,960 --> 00:58:01,080
statistic falls in the non-rejection region, we
684
00:58:01,080 --> 00:58:04,380
don't reject the null hypothesis. So either B or D
685
00:58:04,380 --> 00:58:07,350
is the correct answer. But here we are talking
686
00:58:07,350 --> 00:58:12,190
about none or don't reject the null hypothesis.
687
00:58:12,470 --> 00:58:14,310
That means we don't have sufficient evidence
688
00:58:14,310 --> 00:58:17,610
support that there is significant change between
689
00:58:17,610 --> 00:58:20,670
the two proportions. So there is no difference. So
690
00:58:20,670 --> 00:58:23,270
it has not changed. It's the correct one. So you
691
00:58:23,270 --> 00:58:29,890
have to choose B. So B is the most correct answer.
692
00:58:30,830 --> 00:58:35,600
Now, 10, 11, and 12. Talking about constructing
693
00:58:35,600 --> 00:58:41,700
confidence interval 99, 95, and 90%. It's similar.
694
00:58:42,620 --> 00:58:46,140
And as we mentioned before, 99% will give the
695
00:58:46,140 --> 00:58:50,940
widest confidence interval. And the answers for
696
00:58:50,940 --> 00:59:04,300
these are 14, 11, 14, is negative 0.8 to 20%. For
697
00:59:04,300 --> 00:59:11,720
11, 0.5, negative 0.5 to 17. For 90%, negative 0.3
698
00:59:11,720 --> 00:59:15,420
to 0.15. So this is the widest confidence
699
00:59:15,420 --> 00:59:22,220
interval, which was for 99%. So similar as the
700
00:59:22,220 --> 00:59:26,360
previous one we had discussed. So for 99, always
701
00:59:26,360 --> 00:59:32,230
we get The widest confidence interval. Any
702
00:59:32,230 --> 00:59:37,490
question? That's all. Next time shall start
703
00:59:37,490 --> 00:59:41,350
chapter 12, Chi-square test of independence.