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{"metadata":{"id":"012a6a296fc0b70f3b5ac99a30dcae6a","source":"gardian_index","url":"https://cgspace.cgiar.org/rest/bitstreams/64835c75-da59-4baf-8984-19e4019324ed/retrieve"},"pageCount":16,"title":"What are the key factors influencing consumers' preference and willingness to pay for meat products in Eastern DRC?","keywords":[],"chapters":[{"head":"","index":1,"paragraphs":[{"index":1,"size":574,"text":"The projected increase in meat consumption is a sign of a better future with regard to malnutrition levels among the poor in lower-income countries who suffer from micronutrient deficiencies and mainly depend on high fiber and phytate plant-based staples (Neumann et al., 2003). The impact of malnutrition is globally estimated to be as high as US$3.5 trillion per year or US$500 per individual (FAO, 2013). The costs are opportunity costs of economic growth foregone and lost investments in human capital resulting from infections, impaired child development, and mortality (Hoddinott, 2016). In the Democratic Republic of Congo (DRC), over 3.6 million children under five are affected by acute malnutrition annually and 2 million of them suffer from its most severe form (OCHA, 2016). This country is estimated to be losing more than a billion dollars a year to the effects of child undernutrition, which is equivalent 4.5 percent of GDP. Therefore, consumption of meat products could be one of the keys to reducing malnutrition costs in the DRC. However, as argued by Randolph et al. (2007), the negative publicity on livestock and their products is driven by health and food safety concerns related to outbreaks of diseases like avian influenza and the continued debates on the association between the saturated fats and cholesterol found in animal food sources and chronic diseases like heart disease and cancer, contributing to consumer nervousness about meat products. Consumer nervousness affects their WTP, purchase, and consumption of meat products, thus exacerbating the malnutrition level and related costs in developing countries. Nevertheless, consumers' choices are influenced by many factors that ultimately shape purchasing decisions. Font-i-Furnols and Guerrero (2014) identified consumers' behavior as depending on interrelated factors that included psychological influences (willingness, risk, expectations, sociocultural factors, lifestyle, and values), sensory qualities (visual appearance, texture, flavor, and odor), and marketing factors (price, label, brand, and availability). In addition, Grunert, Bredahl, and Brunsø (2004) used the Total Food Quality model to analyze consumers' perception and decision-making in determining meat quality. The model showed that consumers form expectations about quality at the point of purchase, based on their own experience and informational cues available in the shopping environment. These preferences are influenced not only by quality and consumer-related factors but also by context, culture, and information (Kanerva, 2013;York & Gossards, 2004). Alemu, Olsen, Vedel, Pambo, and Owino (2017) showed that preferences in Kenya are also influenced by context and information in addition to product attributes. Van Wezemael, Verbeke, de Barcellos, Scholderer, and Perez-Cueto (2010) also reported that European consumers considered label, brand, freshness, and leanness of beef as cues to indicate quality to purchase, whereas safety in Ghana and hygiene in Rwanda were purchasing attributes in purchasing meat products (Niyonzima et al., 2017;Owusu-Sekyere, Owusu, & Jordaan, 2014). However, most of the studies on consumers' preferences for meat products focus on developed countries (Tonsor et al., 2005;Reicks et al., 2011;Schumacher, Schroeder, & Tonsor, 2012;Zimmerman et al., 2012;Hung, de Kok, & Verbeke, 2016;Shan et al., 2017). Only a few studies focus on the African context where food quality and malnutrition remain huge challenges (Niyonzima et al., 2017;Owusu-Sekyere et al., 2014). Increasing incomes in developing countries together with the inherent market failures makes it vital to understand the factors driving consumers' meat consumption patterns and their WTP for such food products. Failure to understand the key determinants of consumers' preferences could lead to further market failure and the consumption of unwholesome meat products (Mockshell, Ilukor, & Birner, 2014)."},{"index":2,"size":23,"text":"The overall objective of this study is to evaluate the preferences for meat and meat products and WTP among consumers in Eastern DRC."},{"index":3,"size":96,"text":"Specifically, this study aims at: (a) identifying consumer and household characteristics influencing consumer preferences and WTP; (b) examining consumers' preferences for meat products; and (c) analyzing the effect of socio-demographics and product attributes on purchasing decisions and WTP by using linear and ordered multinomial logistic regression models. The rest of the paper is structured as follows: Section 2 presents the structure of the meat market in the DRC, and Section 3 presents the materials and methods. The results are presented in Section 4 and discussed in Section 5; the paper presents the conclusions in Section 6."}]},{"head":"| THE ME AT MARK E T IN THE DEMO CR ATI C REPUB LI C OF CONG O","index":2,"paragraphs":[{"index":1,"size":158,"text":"The agricultural sector is an important sector in the economy of the DRC. Its accounts for 21% of GDP and employs about 70% of the population (KPMG, 2016). The proportion of livestock to the agricultural GDP is only 9%, and the livestock sector is largely undeveloped, with small numbers of cattle, pigs, goats, and chickens. The livestock population is estimated to be seven million, and 60% are goats, 15% pigs, 14% sheep, and 11% cattle (FAO, 2005). Livestock populations have suffered significantly since the civil war, when many farms were looted and the animals stolen. As an important source of dietary protein, consumption and sale of wild animals (\"bushmeat\"), including some primates, are widespread. This has been fueled partly by poor living conditions and the rise in the number of internally displaced people (IDPs) fleeing regional conflicts. As shown in Figure 1, wild meat is the most produced meat product in the DRC followed by pork and beef."},{"index":2,"size":62,"text":"The consumption of meat is higher than the production of meat in DRC, so the country is a net importer of food products pigs, poultry, and rabbits, as their coping strategy (Maass et al., 2012). However, small animals are sold in the markets only when household needs arise, and the money raised is mostly invested in school fees (Zozo et al., 2012)."}]},{"head":"| MATERIAL S AND ME THODS","index":3,"paragraphs":[]},{"head":"| Sampling and survey design","index":4,"paragraphs":[{"index":1,"size":52,"text":"A consumer study survey was conducted between April and June quarter, a list of households was generated and random samples of 309 were selected for interview based on the probability proportional to size (PPS) sampling approach. This PPS approach was used because the household population is not the same in each Quarter."},{"index":2,"size":62,"text":"Interviews were conducted with selected respondents face-toface by trained enumerators using a semi-structured questionnaire administered in Kiswahili, Mashi (local Congolese language), and French. To ensure that the respondents understood the concept, the enumerators were requested to explain the unfamiliar terms to the respondents, use illustrations, and test their understanding of key terms before administering the questionnaire. TA B L E 3 (Continued)"}]},{"head":"Meat products","index":5,"paragraphs":[]},{"head":"Variables","index":6,"paragraphs":[{"index":1,"size":42,"text":"The survey questionnaire was structured in three modules. The first module covered household composition and characteristics such as region of residence, gender, age, marital status, education level, occupation, and household size. The second module included questions on income, expenditure, and household decision-making."},{"index":2,"size":65,"text":"Respondents were asked who was the main breadwinner in their household and who decides which food to purchase. In the third module, respondents were asked about their consumption and purchasing frequencies of meat products including beef, pork, goat, chicken, and rabbit. In the fourth module, respondents were asked how satisfied they were with the meat products and the factors influencing their purchasing decisions and WTP."},{"index":3,"size":91,"text":"To evaluate the willingness of consumers to pay, the revealed preference method was applied. The method was chosen because data obtained from revealed preference methods more truthfully reflect preferences and choice in the real market when compared to stated preference methods (Howard & Allen, 2008). Respondents were given the average prices based on the different markets for each meat product, and then they were asked to score the influence of product attributes (nutrition, color, texture, smell, harmful effect, price, availability, and quantity) on their perception (no = 0, yes = 1)."},{"index":4,"size":54,"text":"In addition, they were asked to rank the importance of these attributes on their purchasing decisions by using a five-point Likert scale (not important/definitely would not pay = 1, least important/ probably would not pay = 2, moderately important/might pay = 3, important/probably would pay = 4, and most important/definitely would pay = 5)."}]},{"head":"| Data analysis","index":7,"paragraphs":[{"index":1,"size":19,"text":"Data analysis was performed using R software (version 3.2.3, R Core, 2015). Basic statistics (means, standard deviation, and frequencies)"},{"index":2,"size":86,"text":"were computed to describe the responses. Chi-square (χ 2 ) and analysis of variance (ANOVA) were used to examine the differences in the responses. In order to fit linear regression assumptions for ANOVA, BoxCox power transformations were applied to the continuous variables; the transformed variables were analyzed using ANOVA, and the mean comparisons were done on the back-transformed values (Box & CoX, 1964). Significantly different means were separated using least significant difference (LSD) with the appropriate error terms and a significance level at p < 0.05."},{"index":3,"size":25,"text":"To investigate the factors determining purchasing decisions and WTP among respondents, a logistic regression analysis was performed following a generalized linear regression with probit link."},{"index":4,"size":58,"text":"When Y is the dependent or response variable as Y is dichotomous, the use of probit link, f(Y), leads to the transformation of the response into a continuous variable, Y. The link function then maps the (0, 1) range probabilities onto (−∞, +∞), the range of linear predictors (Agresti, 2002;Fox, 2008). We then have a probit model as: "}]},{"head":"TA B L E 4 Preference of respondents on all meat products in the market","index":8,"paragraphs":[{"index":1,"size":10,"text":"The probit link function is given by Faraway (2006) as:"},{"index":2,"size":17,"text":"where Φ -1 is the inverse normal cumulative distribution function, such as N (0, 1) (Agresti, 2002)."}]},{"head":"And the regression equation becomes:","index":9,"paragraphs":[{"index":1,"size":28,"text":"The model parameters were estimated using the maximumlikelihood method, with chi-square test of significance (Dodge, 2008). The following vector of independent variables was considered for their socio-demographic effects:"},{"index":2,"size":26,"text":"These are standard socio-demographic variables such as living area, gender, current age, marital status, education level, and employment status of household head, household size, and income."},{"index":3,"size":12,"text":"Table 1 describes the independent variables used in the linear regression model."},{"index":4,"size":52,"text":"The effects of product attributes (nutrition, color, texture, harmful effect, price, availability, and quantity) on consumers' purchasing decisions and WTP were determined by performing an ordered multinomial logistic regression model, as the above dependent variables were nominal and polytomous, i.e. had more than two categories with an ordered structure (Engel, 1988;Menard, 2002)."},{"index":5,"size":104,"text":"When the following ordered probit model estimated using maximum-likelihood (ML) method is considered, we have with y * n is the unobserved dependent variable, x ′ n is the vector of independent variables, and β is the vector of regression coefficient to estimate. The latent random variable y * n for individuals n = 1,2,3…N, linearly depends on the independent variables x n and ε n is the error term. Therefore, If the errors ε n are logistically distributed, with distribution function Λ( i ) = 1 1+e − i produces an ordered logistic model given by Akshita, Ramyani, Sridevi, and Trishita (2013) as:"},{"index":6,"size":21,"text":"With regard to household income, the influence of product attributes on purchasing decisions and WTP was explained by the gg plots."}]},{"head":"| RE SULTS","index":10,"paragraphs":[]},{"head":"| Consumer and household characteristics","index":11,"paragraphs":[{"index":1,"size":116,"text":"Most of the respondents (86%) lived in urban areas, and the majority were female (56%) with an average age of 37 years (Table 2). The average household size was 6 persons, and the composition is characterized by 54% of children, 18% of the household head, 15% of the spouse. In this study, 87% had attained at least primary school, with an average of 8 years of formal education. Most of the respondents in Ibanda had completed higher education when compared to those in Kadutu and Bagira. The main occupation of respondents varied among communities. Self-employed business/services (26%) was observed as a main occupation in Ibanda, whereas many respondents in Kadutu (20%) and Bagira (20%) were unemployed."},{"index":2,"size":114,"text":"Household income and expenditure profiles varied substantially (Table 2). Relating this to household size, the average per capita income was about US$1,039 in Ibanda, US$397 in Kadutu, and US$368 in Bagira. The main source of income in Ibanda was permanent employment (48%), whereas petty trading (37%) was reported as the main source of income in both Kadutu and Bagira. Food was the main item of household expenditure (44%), followed by medical fees (24%), and school fees (13%). The results also found that on average about 48% of households' income was spent on food. Most respondents in Bagira and Kadutu directly purchased food from farms, while various sources for purchasing food were observed in Ibanda."}]},{"head":"EMPLOYMENT, HOUSEHOLD SIZE, CHILDREN, INCOME}","index":12,"paragraphs":[{"index":1,"size":41,"text":"Although the main source of fuel for cooking was charcoal (86%), more households (16%) in Ibanda had access to electricity than in other communities. About 98% of the main household water supply was from RIGIDESO, the water supply authority in Bukavu."}]},{"head":"| Household consumption of meat products","index":13,"paragraphs":[{"index":1,"size":173,"text":"In terms of frequency of meat consumption, results showed that beef was the most consumed product, with 83% of the household consuming it at least weekly (Table 3). Goat meat and pork were widely consumed too, with between 66% and 71% of the respondents, respectively, consuming these products weekly. The products least consumed were chicken and rabbit since these are less often produced and available. On average, 68% of the respondents consumed milk in a week, followed by sausage (53%), yogurt (48%), and cheese (45%). Households in Ibanda purchased more fresh meat and meat products than those in Kadutu and Bagira. The average daily consumption in Ibanda was 1.9 times higher for beef than in Kadutu and Bagira, 1.5 times higher for goat meat, 1.5 times higher for pork, and 3.5 times higher for chicken. In study, it was also found that the price of meat products varied by communities. For example, the price of processed products (sausage, milk, yogurt, and cheese) seemed to be higher in Ibanda than in Kadutu and Bagira."}]},{"head":"| Preference of meat products","index":14,"paragraphs":[{"index":1,"size":87,"text":"Only 47% of the respondents were satisfied with the meat products in the market (Table 4). When asked about the criteria that caused dissatisfaction, 24% claimed unhealthiness and high price as the main criteria, followed by low quantity (18%) and harmful effect (11%). It could be seen that the dissatisfaction can be divided into two groups. The respondents, especially in Kadutu and Bagira, used high price and low quantity as extrinsic criteria; unhealthiness and harmful effect were mainly perceived as intrinsic attributes by the respondents in Ibanda."},{"index":2,"size":52,"text":"When the reason for purchasing new, improved products is considered, the tendency to pay was more in Ibanda (66%) when compared to Kadutu (42%) and Bagira (44%). The result also showed that the respondents demanded more products from beef (40%) compared to pork (21%), goat meat (17%), poultry (15%), and rabbit (8%)."}]},{"head":"| Social factors influencing purchasing decision","index":15,"paragraphs":[{"index":1,"size":65,"text":"Regarding the association between socio-demographic and socioeconomic factors on purchasing decisions and WTP for meat products, it was observed that living area and gender have a positive significant effect on purchasing decisions but a negative significant effect on WTP (Table 5). Results of the logit model also indicate a negative correlation between age and purchasing decisions; a positive correlation was observed between age and WTP."},{"index":2,"size":89,"text":"Although other variables were not found to affect purchasing decisions and WTP significantly, when the education level of the household head changes from low to high, the estimated coefficients of purchasing decisions increase by 2.3 times and of WTP by 2.9 times. Marital status and intrahousehold sharing of information were not found to affect purchasing decisions and WTP. Similarly, the employment status of a household head, household size, and the presence of children did not have a significant influence. Surprisingly, household annual income did not play a significant role."}]},{"head":"| Product attributes influencing purchasing decisions","index":16,"paragraphs":[{"index":1,"size":81,"text":"The results showed that although the respondents were dissatisfied about unhealthiness, harmful effect, high price, and low quantity, TA B L E 6 Ordered probit regression for product attributes determining consumer purchasing decision and willingness to pay for meat products these attributes did not exhibit a significant influence on their purchasing decisions and WTP for meat products but color, in-mouth texture, and availability were identified as significant attributes. The respondents selected availability as the only significant attribute for WTP (Table 6)."}]},{"head":"| D ISCUSS I ON","index":17,"paragraphs":[{"index":1,"size":314,"text":"Consumers' preferences, behavior, and perception of meat and meat products depend on many factors, sensory (product-specific factor), psychological (individual factor), and marketing (environmental factor). These aspects might be altered owing to individual behavior, context, culture, available information (Font-i-Furnols & Guerrero, 2014), concerns, lifestyles, and socio-demographic characteristics (Bernués, Olaizola, & Corcoran, 2003;Grunert et al., 2004). Among sociodemographic variables, our findings demonstrated that, as expected, living area and gender had a positive significant effect on purchasing decisions but a negative significant effect for WTP. The positive significant effect of living area on purchasing decisions and WTP for meat products indicated that people living in rural areas make a decision to purchase meat products differently from those living in urban areas. While a higher rate of WTP among respondents for meat products was found in urban areas, price alone cannot be used to infer the actual WTP of respondents because they were aware of the artificial purchase situation. Consumers often claim that they would pay higher prices for certain product attributes than they actually do in real purchase situations (Feldmann & Hamm, 2015). For gender effect, Croson and Gneezy (2009) stated that men and women apparently vary in their emotional response to uncertain situations and this difference results in dissimilarities in risk taking. In food purchasing, women are more selective and tend to integrate multiple cues in the household more than men. In contrast, men are generally more confident and more willing to take risks in purchasing complex products/services than women (Erasmus, Donoghue, & Dobbelstein, 2014). Cavaliere, Ricci, and Banterle (2015) reported that women are more concerned about a healthy diet and have high levels of personal knowledge on food characteristics, and thus, they are more careful than men about what they eat. Dibb and Fitzpatrick (2014) also showed that men tend to consume more meat than women and are less willing to consider reducing their consumption."},{"index":2,"size":310,"text":"A negative correlation between age and purchasing decision suggests that younger people were less concerned in making decisions to purchase than older people. In contrast, a positive correlation between age and WTP shows that older and more experienced people tend to be more conscious about the meat products they buy. Although household income did not play a significant role in this study, pork and poultry products were mostly demanded by respondents from Kadutu and Bagira, while those from Ibanda rated beef and goat meat highly. This result can be explained by the fact that beef and goat are sold in large portions that require refrigeration: Pork and poultry are mostly sold in smaller portions that do not need it. People in Ibanda who have access to more electricity are likely to purchase and consume goat meat. Likewise, higher income and more educated consumers in Ibanda may prefer quality rather than quantity of products when compared to consumers in Kadutu and Bagira. This could be explained by the budget constraints of lower-income households that may be limited to cheaper choices (Morales & Higuchi, 2018). This is in agreement with the findings of Jolly, Bayard, Awuah, Fialor, and Williams (2009) and Sabran, Jamaluddin, Abdul Mutalib, and Abdul Rahman (2012) who mentioned that wealthier consumers are more likely to take precautions about food and are more willing to pay for high-quality products than those with lower incomes. Additionally, Silva, Caro, and Magana-Lemus (2016) also found that food-secure households with higher incomes purchase a wider variety of highquality food items than food-insecure households with lower incomes. However, this finding contrasts with the studies reported by Robert, Manolis, and Tanner (2003) who reported that lowerincome consumers are more concerned about the value of money and with not wasting their money on goods and services that do not meet their basic needs (Erasmus et al., 2014)."},{"index":3,"size":138,"text":"Moreover, it could be seen that the more educated people in Ibanda generally have higher incomes; thus, they might have more options than less educated people when purchasing meat products. Also, people in Ibanda might be sensitive to quality since meat products can be a risk factor for their health. In Ibanda, high blood pressure (57%), high cholesterol levels (21%), and incidence of diabetes (20%) were reported as a cause of specific dietary requirements, while in Kadutu and Bagira, the averages reported were 41% for high blood pressure, 16% for high cholesterol, and 14% for diabetes (data not shown). A study by Chen, Anders, and An (2013) showed that consumer willingness to purchase also increased with level of education; and the education level was positively linked to consumers' willingness to adopt new products (Huotilainen, Pirttila-Backman, & Tuorila, 2006)."},{"index":4,"size":181,"text":"However, these results are opposed to those of Dellaert, Arentze, and Timmermans (2008) who reported that less educated consumers might lack the cognitive ability to comprehend the implications of their purchasing decisions and might subsequently not be bothered about all functional and quality-related issues compared with more educated consumers. The meat consumption trends in Eastern DRC seem differ from the European trend. For example, Germans with higher education are more likely to consume less meat or follow a vegetarian diet than lower educated people (Pfeiler & Egloff, 2018). Luning, Marcelis, and Jongen (2002) mentioned that quality represents the features/properties of a product that result in satisfying the consumers' physiological and/or psychological needs. Dransfield (2005) also suggested that at least two attributes of appearance are normally used by consumers in quality judgements on meat. For instance, cut type, color, and fat structure and levels have been observed as influential in calculating quality expectations (Grunert et al., 2004). When the influence of product attributes on purchasing decisions in this study is considered, quality aspects such as color and in-mouth texture cannot be ignored."},{"index":5,"size":126,"text":"Color as an intrinsic quality attribute influences consumers' expectations of meat quality at the moment of purchase (Carpenter, Cornforth, & Whittier, 2001;Font-i-Furnols & Guerrero, 2014;Gracia & de Magistris, 2013;Verbeke et al., 2005;West, Larue, Touil, & Scott, 2001), probably because consumers normally use color to indicate wholesomeness or contamination of meat products (Mancini, 2009;Owusu-Sekyere et al., 2014). On the other hand, eating quality and in-mouth texture are found to be highly correlated with the overall experienced quality, attitude to purchase, and WTP for meat products (Lusk et al., 2001;Banović, Grunert, Barreira, & Aguiar Fontes, 2009). Robbins et al. (2003) reported consumers were most concerned with color, fat content, price, and type of cut when purchasing beef, whereas texture and flavor were most important in determining eating satisfaction."},{"index":6,"size":235,"text":"The findings from this study also suggest that availability (marketing factor) is one of the most important attributes that influences purchasing decisions and WTP of meat products. Availability is one reason that can explain, for instance, the lack of access to markets and market information that had a negative influence on consumers' WTP and purchase behavior toward food products (Zundel and Kilcher, 2007;Young, Hwang, McDonald, & Oates, 2010). Young et al. (2010) also mentioned that consumers generally do not like to spend much time searching for food products although perception, a psychological motivator for purchasing meat products, affects the process for consumers in selecting, organizing, and interpreting information related to meat products (Kotler, Armstrong, Harris, & Piercy, 2013). This factor is important in shaping consumers' acceptance, purchase, and future consumption, as stated by Grunert, Verbeke, Kügler, Saeed, and Scholderer (2011). The results in this study exhibited a significant effect on consumers' perception in both purchasing as presented in Figures 3,4), it appears that the higher the income, the better the consideration that is given to nutrition, harmful effect, and availability as important factors on purchasing decisions and WTP. This result agrees with the findings of Henchion, McCarthy, Resconi, and Troy (2014) who pointed out that the influence of factors such as income and price are likely to decline over time so that other factors, such as quality, will become more important in purchasing meat products."}]},{"head":"| CON CLUS IONS","index":18,"paragraphs":[{"index":1,"size":102,"text":"This exploratory study investigated the preference and WTP for meat products of Congolese consumers in Eastern DRC. The study revealed that women and older consumers from urban areas were more likely to purchase meat products. Although the respondents were expected/hypothesized to rate healthiness, quantity, and the low price of products, consumers' decisions to purchase meat products are more often based on sensory factors such as color and in-mouth texture as well as on marketing factors such as availability. Availability played a prominent/key role on their WTP. However, nutrition, harmful effect, and availability tended to be taken into consideration in higher income groups."},{"index":2,"size":20,"text":"This result is related to personal WTP and is a consequence of consumers' poor access to information about meat quality."},{"index":3,"size":113,"text":"Therefore, public efforts are needed to address knowledge gaps through awareness campaigns that promote and disseminate information about meat quality. In summary, the empirical findings presented here reveal new and essential insights into consumers' preferences and their purchase of meat products (in a region where food insecurity is prevalent). These insights provide practical insights for actors in the meat value chain to better satisfy consumers' expectations, demands, and needs. The findings can be used to identify opportunities for livestock farmers to commercialize livestock enterprises for income and employment generation, thus contributing to improving nutrition and alleviating poverty. These insights can also be of relevance to countries with similar socioeconomic characteristics in low-income countries."}]}],"figures":[{"text":" Note. *, **, and *** indicate statistical significance at the 0.1, 0.05, and 0.01 levels, respectively. TA B L E 2 (Continued) TA B L E 3 Household consumption levels, purchased quantity, and price of meat products "},{"text":" 2017 in three communities (Ibanda, Bagira, and Kadutu) of Bukavu city Eastern DRC. A multistage random sampling procedure was used to select respondents for the interviews. In the first stage the three communities were purposively selected, based on the consumers' different socioeconomic backgrounds. The list of Quarters (subunits) in the community was first obtained from the Provincial Inspection for Agriculture and Livestock (IPAPEL). Within each community, a list of Quarters was generated, and a representative proportion was randomly selected. The Quarters were Ndendere, Nyalukemba, and Panzi for Ibanda; Nkafu, Mosala, and Kasali for Kadutu; and Quarter A, Quarter B, Quarter C, and Quarter D for Bagira. Within each "},{"text":" monthly, 2 months, quarterly, biennially, annually. b Value is the mean (standard deviation). *, **, and *** indicate statistical significance at the 0.1, 0.05, and 0.01 levels, respectively. "},{"text":" decisions and WTP. Although income was not significant in the linear regression model, it was found that income played a significant role in WTP as analyzed by ordered multinomial logistic regression. From the household income results (gg plot F I G U R E 3 Influence of product attributes on consumers' purchasing decision according to the household income fluctuation "},{"text":" Meat production in the Democratic Republic of Congo by type of livestock. Source: FAOSTAT (2018) 100,000 100,000 90,000 90,000 80,000 80,000 Quantity (Tonnes) 30,000 40,000 50,000 60,000 70,000 Quantity (Tonnes)30,000 40,000 50,000 60,000 70,000 20,000 20,000 10,000 10,000 0 0 1961 1963 1965 1967 1969 1971 1973 1975 1977 1979 1981 1983 1985 1987 1989 1991 1993 1995 1997 1999 2001 2003 2005 2007 2009 2011 2013 2015 1961196319651967196919711973197519771979198119831985198719891991199319951997199920012003200520072009201120132015 Year Year Beef Chicken Goat Pork Game BeefChickenGoatPorkGame 120,000 120,000 100,000 100,000 Value of imports (US$) 40,000 60,000 80,000 Value of imports (US$)40,000 60,000 80,000 20,000 20,000 0 0 1950 1960 1970 1980 1990 2000 2010 2020 19501960197019801990200020102020 Year Year Beef Chicken Pork BeefChickenPork F I G U R E 2 Value of meat imports (US$1,000) in the Democratic F I G U R E 2 Value of meat imports (US$1,000) in the Democratic Republic of Congo between 1961 and 2016. Source: FAOSTAT Republic of Congo between 1961 and 2016. Source: FAOSTAT (2018) (2018) "},{"text":"Variables Community Total χ 2 p-value Ibanda (N = 99) Kadutu (N = 110) Bagira (N = 100) TA B L E 1 Description of variables used in the model TA B L E 2 Socio-demographic characteristics of samples in Bukavu city, Eastern DRC Variable Description TA B L E 1 Description of variables used in the model TA B L E 2 Socio-demographic characteristics of samples in Bukavu city, Eastern DRC Variable Description Living area 1 if rural, 0 otherwise Living area1 if rural, 0 otherwise Gender 1 if female, 0 otherwise Gender1 if female, 0 otherwise Age Years AgeYears Living area (%) Marital status 1 if married, 0 otherwise Living area (%)Marital status1 if married, 0 otherwise Rural 0.0 0.9 Education level of 1.1 0 if none/primary school, 0.6 57.06 <0.001*** Rural0.00.9Education level of 1.10 if none/primary school, 0.657.06<0.001*** Urban Peri-urban Sex (%) 100.0 0.0 92.1 7.0 household head 64.9 Employment status of household head 34.0 1 if junior/secondary 85.7 2 if college/university 13.7 1 if employed/work, 0 otherwise Urban Peri-urban Sex (%)100.0 0.092.1 7.0household head 64.9 Employment status of household head 34.01 if junior/secondary 85.7 2 if college/university 13.7 1 if employed/work, 0 otherwise Male 48.0 38.3 Household size 44.6 Number of members in a household 43.6 2.15 0.341 Male48.038.3Household size 44.6Number of members in a household 43.6 2.150.341 Female 52.0 61.7 Children 55.4 1 if having children in the household, 0 otherwise 56.4 Female52.061.7Children55.41 if having children in the household, 0 otherwise 56.4 Age (years) a 35.6 (12.6) 37.0 (15.8) Household annual 37.2 (11.2) Household income for last 12 months (USD) 36.6 (13.5) 0.572 Age (years) a35.6 (12.6)37.0 (15.8)Household annual 37.2 (11.2)Household income for last 12 months (USD) 36.6 (13.5)0.572 Household composition (%) income Household composition (%)income Head 15.9 20.3 Nutritious 18.2 1 if nutritious of products influences on purchasing decision/ 18.1 53.99 <0.001*** Head15.920.3Nutritious 18.21 if nutritious of products influences on purchasing decision/ 18.1 53.99 <0.001*** Spouse 13.6 15.8 14.0 willingness to pay, 0 otherwise 14.5 Spouse13.615.814.0willingness to pay, 0 otherwise 14.5 Son/daughter Grandchild Hired worker 54.9 1.6 4.4 46.9 1.9 5.1 Color Texture 60.2 3.1 0.5 1 if color of products influences on purchasing decision/willingness 54.1 to pay, 0 otherwise 2.2 1 if texture of products influences on purchasing decision/ willingness to pay, 0 otherwise 3.3 Son/daughter Grandchild Hired worker54.9 1.6 4.446.9 1.9 5.1Color Texture60.2 3.1 0.51 if color of products influences on purchasing decision/willingness 54.1 to pay, 0 otherwise 2.2 1 if texture of products influences on purchasing decision/ willingness to pay, 0 otherwise 3.3 brother/sister) Other (parent, 9.6 10.0 Taste 4.0 to pay, 0 otherwise 1 if taste of products influences on purchasing decision/willingness 7.8 brother/sister) Other (parent,9.610.0Taste4.0to pay, 0 otherwise 1 if taste of products influences on purchasing decision/willingness 7.8 (number) a Household size 6.4 (2.8) 6.1 (2.1) Harmful effect 6.2 (2.2) willingness to pay, 0 otherwise 1 if harmful effect of products influences on purchasing decision/ 6.2 (2.4) 0.411 (number) a Household size6.4 (2.8)6.1 (2.1)Harmful effect 6.2 (2.2)willingness to pay, 0 otherwise 1 if harmful effect of products influences on purchasing decision/ 6.2 (2.4) 0.411 Marital status of respondents (%) Price 1 if price of products influences on purchasing decision/willingness Marital status of respondents (%)Price1 if price of products influences on purchasing decision/willingness Never married 26.0 33.0 16.0 to pay, 0 otherwise 25.0 21.09 0.021* Never married26.033.016.0to pay, 0 otherwise 25.021.090.021* Married living 66.0 48.7 Availability 72.3 1 if availability of products influences on purchasing decision/ 62.3 Married living66.048.7Availability 72.31 if availability of products influences on purchasing decision/ 62.3 with spouse willingness to pay, 0 otherwise with spousewillingness to pay, 0 otherwise Married but 2.0 7.0 Quantity 3.2 1 if quantity of products influences on purchasing decision/ 4.0 Married but2.07.0Quantity3.21 if quantity of products influences on purchasing decision/ 4.0 spouse away willingness to pay, 0 otherwise spouse awaywillingness to pay, 0 otherwise Other 6.0 11.3 Perception 8.5 1 if perception of products influences on purchasing decision/ 8.7 Other6.011.3Perception 8.51 if perception of products influences on purchasing decision/ 8.7 (separated, willingness to pay, 0 otherwise (separated,willingness to pay, 0 otherwise divorced, divorced, widow/ widow/ widower) widower) Household 8.8 (6.5) 8.0 (5.5) 7.9 (5.7) 8.2 (5.9) 0.027* Household8.8 (6.5)8.0 (5.5)7.9 (5.7)8.2 (5.9)0.027* education education (years) a (years) a Education level of respondents (%) Education level of respondents (%) None 8.0 17.9 12.9 12.9 50.76 <0.001*** None8.017.912.912.950.76<0.001*** Primary 10.0 25.9 17.2 17.7 Primary10.025.917.217.7 Secondary 24.0 40.2 44.1 36.1 Secondary24.040.244.136.1 Graduate 27.0 8.0 15.1 16.7 Graduate27.08.015.116.7 Bachelor 26.0 7.1 10.7 14.6 Bachelor26.07.110.714.6 Other (master, 5.0 0.9 0.0 2.0 Other (master,5.00.90.02.0 doctorate) doctorate) Main occupation of respondents (%) (Food and Agriculture Organization (FAO), 2005). The main ex- rehabilitation of some cattle farms that were destroyed by the Main occupation of respondents (%) (Food and Agriculture Organization (FAO), 2005). The main ex-rehabilitation of some cattle farms that were destroyed by the Crop farming porters of meat to the DRC are South Africa, India, and European 1.0 3.6 4.3 3.0 wars, particularly in Katanga Province and North and South 32.51 <0.001*** Crop farming porters of meat to the DRC are South Africa, India, and European 1.0 3.6 4.33.0 wars, particularly in Katanga Province and North and South 32.51 <0.001*** Self-employed Union (EU) countries like the Netherlands that is the largest ex-26.0 8.0 7.2 13.7 Kivu (Goma and Masisi) in the Northeast bordering Rwanda Self-employed Union (EU) countries like the Netherlands that is the largest ex-26.0 8.0 7.213.7 Kivu (Goma and Masisi) in the Northeast bordering Rwanda business/ porter of pork together with Belgium and Germany. As shown in and Burundi as well as the increased consumption and prefer- business/ porter of pork together with Belgium and Germany. As shown inand Burundi as well as the increased consumption and prefer- services Figure 2, the main imported meat is chicken followed by pork. ence of game (Yamaguchi, 2015). Another contributory factor services Figure 2, the main imported meat is chicken followed by pork.ence of game (Yamaguchi, 2015). Another contributory factor Meat imports have generally declined from the 1980s to date. The decline in beef imports can be linked to the deliberate ef- is increased concerns of meat quality especially contamination (Continues) with salmonella, which is a threat to human health (Mahangaiko, Meat imports have generally declined from the 1980s to date. The decline in beef imports can be linked to the deliberate ef-is increased concerns of meat quality especially contamination (Continues) with salmonella, which is a threat to human health (Mahangaiko, fort of government to promote cattle production through the Mabi, Bakana, & Nyonggombe, 2015). Makelele et al. (2015) in fort of government to promote cattle production through theMabi, Bakana, & Nyonggombe, 2015). Makelele et al. (2015) in "},{"text":"Variables Community Total χ 2 p-value Ibanda (N = 99) Kadutu (N = 110) Bagira (N = 100) Domestic work 7.3 16.2 18.7 14.1 Domestic work7.316.218.714.1 in own home in own home Unemployed 12.5 19.6 20.2 17.4 Unemployed12.519.620.217.4 Student/pupil 20.8 8.0 6.5 11.8 Student/pupil20.88.06.511.8 Other (livestock 32.4 44.6 43.1 40.0 Other (livestock32.444.643.140.0 keeping) keeping) Household income 528.0 (77.9) 201.6 (16.0) 190.3 (15.3) 306.6 (16.5) 84.34 <0.001*** Household income528.0 (77.9)201.6 (16.0)190.3 (15.3)306.6 (16.5)84.34<0.001*** (US$/month) a (US$/month) a Main source of household income (%) Main source of household income (%) Crop sales 0.0 1.8 4.4 2.1 46.26 <0.001*** Crop sales0.01.84.42.146.26<0.001*** Sales of 2.2 0.9 2.2 1.8 Sales of2.20.92.21.8 livestock livestock Food processing 7.6 0.9 6.7 5.1 Food processing7.60.96.75.1 Petty trading 12.0 37.2 36.7 28.6 Petty trading12.037.236.728.6 Craftsmanship 6.5 0.9 5.6 4.3 Craftsmanship6.50.95.64.3 Part-time labor 17.4 10.6 11.1 13.0 Part-time labor17.410.611.113.0 Permanent 47.8 28.3 26.7 34.3 Permanent47.828.326.734.3 employment employment Pension/ 4.3 8.9 2.2 5.1 Pension/4.38.92.25.1 remittances remittances Other 2.2 10.6 4.4 5.7 Other2.210.64.45.7 Household expenditure (%) Household expenditure (%) Staple foods 51.0 33.3 47.1 43.8 41.67 <0.001*** Staple foods51.033.347.143.841.67<0.001*** and snacks and snacks School fee 14.3 14.2 11.5 13.3 School fee14.314.211.513.3 Medical fee 15.3 30.6 25.3 23.7 Medical fee15.330.625.323.7 Water 4.1 5.6 4.6 4.8 Water4.15.64.64.8 Transport 1.0 2.7 5.7 3.2 Transport1.02.75.73.2 Accommodation 4.1 7.2 1.1 4.1 Accommodation4.17.21.14.1 Income spending 45.0 (17.4) 51.6 (14.7) 48.1 (17.8) 48.2 (16.7) 2.93 0.018* Income spending45.0 (17.4)51.6 (14.7)48.1 (17.8)48.2 (16.7)2.930.018* on foods (%) a on foods (%) a Main source of purchasing foods (%) Main source of purchasing foods (%) Fresh market 29.9 20.7 9.6 20.1 16.58 0.034* Fresh market29.920.79.620.116.580.034* Supermarket 25.8 16.2 22.3 21.4 Supermarket25.816.222.321.4 Direct from 27.8 45.9 47.9 40.6 Direct from27.845.947.940.6 farm farm Street 16.5 17.1 20.2 17.9 Street16.517.120.217.9 "},{"text":" TA B L E 5 Logistic regression for social factors determining consumer purchasing decisions and willingness to pay for meat products Purchasing decision Willingness to pay Purchasing decisionWillingness to pay Variables Estimate Pr (>|z|) Estimate Pr (>|z|) VariablesEstimatePr (>|z|)EstimatePr (>|z|) (Intercept) −0.228 0.566 −0.268 0.502 (Intercept)−0.2280.566−0.2680.502 Living area 0.761 ** 0.003 −0.545 * 0.022 Living area0.761 ** 0.003−0.545 *0.022 Gender 0.059 * 0.048 0.371* 0.026 Gender0.059 * 0.0480.371*0.026 Age 0.016* 0.013 0.007* 0.041 Age0.016* 0.0130.007*0.041 Marital status −0.059 0.737 −0.344 0.054 Marital status−0.0590.737−0.3440.054 Low education level 0.052 0.791 0.110 0.581 Low education level0.0520.7910.1100.581 (junior/secondary) (junior/secondary) High education level 0.120 0.926 0.322 0.140 High education level0.1200.9260.3220.140 (college/university) (college/university) Employment status −0.228 0.164 −0.079 0.637 Employment status−0.2280.164−0.0790.637 of household head of household head Household size 0.024 0.467 −0.067 0.060 Household size0.0240.467−0.0670.060 Household with −0.001 0.997 0.511 0.057 Household with−0.0010.9970.5110.057 children children Household annual 0.000 0.360 0.000 0.182 Household annual0.0000.3600.0000.182 income income AIC 397.6 388.5 AIC397.6388.5 Log likelihood −187.8 −183.3 Log likelihood−187.8−183.3 Chi-square 23.8 19.4 Chi-square23.819.4 Chisquare 0.008** 0.036* Chisquare0.008**0.036* probability probability Pseudo-R 2 0.0596 0.0502 Pseudo-R 20.05960.0502 Note.*, **, and *** indicate statistical significance at the 0.1, 0.05, and Note.*, **, and *** indicate statistical significance at the 0.1, 0.05, and 0.01 levels, respectively. 0.01 levels, respectively. "},{"text":" Note. *, **, and *** indicate statistical significance at the 0.1, 0.05, and 0.01 levels, respectively. Purchasing decision Willingness to pay Purchasing decisionWillingness to pay Product attributes Estimate Odd ratio p-value Estimate Odd ratio p-value Product attributesEstimateOdd ratiop-valueEstimateOdd ratiop-value Nutrition 0.309 1.362 0.059 0.213 1.238 0.188 Nutrition0.3091.3620.0590.2131.2380.188 Color −0.512 0.599 0.002** −0.163 0.850 0.314 Color−0.5120.5990.002**−0.1630.8500.314 Texture −0.399 0.671 0.019* −0.313 0.731 0.063 Texture−0.3990.6710.019*−0.3130.7310.063 Taste −0.248 0.780 0.134 −0.148 0.863 0.369 Taste−0.2480.7800.134−0.1480.8630.369 Harmful effect −0.100 0.905 0.553 −0.287 0.751 0.089 Harmful effect−0.1000.9050.553−0.2870.7510.089 Price 0.165 1.180 0.313 0.039 1.040 0.810 Price0.1651.1800.3130.0391.0400.810 Availability −0.526 0.591 0.002** −0.459 0.632 0.005** Availability−0.5260.5910.002**−0.4590.6320.005** Quantity −0.142 0.867 0.389 −0.233 0.792 0.150 Quantity−0.1420.8670.389−0.2330.7920.150 Perception 4.277 71.996 0.000*** 4.279 72.145 0.000*** Perception4.27771.9960.000***4.27972.1450.000*** Income 0.949 2.582 0.171 0.918 2.504 0.029* Income0.9492.5820.1710.9182.5040.029* "}],"sieverID":"66455a7c-1e2a-4907-a2aa-873b2ec13590","abstract":"From the perspective of healthy nutrition and well-being, meat is a good source of protein, minerals (iron, zinc, calcium), and vitamins (A, B12 and other B vitamins) (Pereira & Vicente, 2013;Randolph et al., 2007). As part of a nutrition transition (Popkin, Adair, & Ng, 2012) and livestock revolution (Delgado, 2003), growth of meat consumption in developing countries is likely to increase. According to FAO (2014), average annual consumption of meat in developed countries is 75.5 kg/inhabitant, while consumption of 33.9 kg/inhabitant is estimated in developing countries. Worldwide, levels of meat consumption are projected to increase by 72% in 2030 compared to the situation in 2000 (Fiala, 2008). In sub-Saharan Africa, the demand for meat products is also growing rapidly, increasing by 140% between 2000 to 2030 (FAO, 2011)."} |