Literature DB >> 28413250

Agricultural commercialization and nutrition revisited: Empirical evidence from three African countries.

Calogero Carletto1, Paul Corral2, Anita Guelfi3.   

Abstract

The transition from subsistence to commercial agriculture is key for economic growth. But what are the consequences for nutritional outcomes? The evidence to date has been scant and inconclusive. This study contributes to the debate by revisiting two prevailing wisdoms: (a) market participation by African smallholders remains low; and (b) the impact of commercialization on nutritional outcomes is generally positive. Using nationally representative data from three African countries, the analysis reveals high levels of commercialization by even the poorest and smallest landholders, with rates of market participation as high as 90%. Female farmers participate less, but tend to sell larger shares of their production, conditional on participation. Second, we find little evidence of a positive relationship between commercialization and nutritional status. As countries and international agencies prioritize the importance of nutrition-sensitive agriculture, better understanding of the transmission channels between crop choices and nutritional outcomes should remain a research priority.

Entities:  

Keywords:  Africa; Agricultural commercialization; Cash crops; Nutrition

Year:  2017        PMID: 28413250      PMCID: PMC5384450          DOI: 10.1016/j.foodpol.2016.09.020

Source DB:  PubMed          Journal:  Food Policy        ISSN: 0306-9192            Impact factor:   4.552


Introduction

According to conventional wisdom, the transition from subsistence (or semi-subsistence) to commercial agriculture represents a key ingredient for the economic development of low-income countries. By exploiting comparative advantages, agricultural commercialization enhances trade and efficiency, leading to economic growth and welfare improvement at the national level. This is further expected to initiate a virtuous cycle which raises household income, thus improving consumption, food security and nutritional outcomes inside rural households. Yet, this mainstream, beneficial view of agricultural commercialization has also been challenged several times since the 1970s, with a large body of literature in the 1970s and the first half of the 1980s1 emphasizing the adverse effects on households’ welfare and nutrition, especially on the poorest groups of the rural population and the most vulnerable individuals within the household who are often considered unable to reap the benefits of increased market orientation.2 The concerns related especially to their food security and nutritional outcomes.3 While many of these studies displayed a pronounced degree of ideology,4 they also highlighted the need to better understand the underlying linkages between crop production, commercialization, income, consumption and nutrition at the household level. Against this background, the International Food Policy Research Institute (IFPRI) revisited the issue,5 using a more scientific and systematic approach which consisted of three components: (i) the development of a conceptual framework articulating the linkages between commercialization and nutrition; (ii) a better research design to compare commercialized and non-commercialized households; and (iii) the use of a cross-country comparative approach based on six different but comparable country micro-level analyses6 carried out using a common research design. The IFPRI studies also mitigated the traditional assumption of a dichotomy – and hence a necessary competition – between cash and staple crops, which had deeply influenced the way agricultural commercialization had been conceived and measured in most of the previous literature.7 Unlike many of the previous studies, the majority of IFPRI country studies found generally a positive, though small, impact of agricultural commercialization on the nutritional status of rural households, where the positive relationship was assumed to operate primarily through the linkages between household income, household caloric intake, and child caloric intake. Nevertheless, as the authors of the studies acknowledged, several limitations remained: “Econometrically, a common practice is to estimate a set of reduced form equations with an extended list of exogenous explanatory variables that affect any of the structural relations. This approach is not followed in this book, in part because of data limitations (von Braun and Kennedy, 1994; Ch. 2, p. 24).” Since then, there has been little new empirical evidence8 on the links between agricultural commercialization and nutrition,9 despite the implementation of numerous expensive projects to promote market-oriented crops, based on the assumption of a beneficial nutritional effect. In the spirit of the other papers in this volume, this study revisits two prevailing wisdoms. First, participation in market activities by smallholders is low. Second, the impact of commercialization on nutritional outcomes is generally positive. In doing so, the paper reconsiders the quantification and characterization of agricultural commercialization and provides new, systematic evidence on its relationship with nutritional outcomes in three Sub-Saharan countries. In particular, it uses recent panel surveys from Malawi, Tanzania and Uganda conducted under the Living Standards Measurement Study-Integrated Surveys on Agriculture (LSMS-ISA) program. Unlike in most previous studies, these surveys are nationally representative, which enables a more systematic comparison across different settings and also allows one to better control for a number of the endogeneity issues that arise in estimating the impact of commercialization on nutritional outcomes. The study further aims to capture the heterogeneity implicit in the commercialization choices of different smallholder households. For example, Duflo and Udry (2004) suggest that income from different crops as well as income from different plot owners may serve distinct purposes within the household and thus have different impacts. Using individual-level crop data, we are able to differentiate the impact of commercialization based on the gender of the farmers and the type of crop mix grown and sold, which are both assumed to affect the relationship between commercialization and nutritional outcomes. The paper is organized as follows. Sections 2, 3 provide a brief overview of the literature and a short description of the data, respectively. Section 4 profiles commercialization in the three countries by constructing an index of commercialization at the household and crop levels. Section 5 descriptively explores the relationship between agricultural commercialization and nutritional outcomes. Then the section presents an econometric strategy and the main findings. Finally, conclusions are presented in Section 6.

Agricultural commercialization and nutrition: a brief literature review

The empirical literature on the nutritional outcomes of agricultural commercialization can be grouped into three strands: (i) a wide and heterogeneous set of research projects carried out before the launch of the IFPRI agenda; (ii) the IFPRI work between 1986 and 1994; (iii) a few studies devoted to the topic starting from the early 1990s. A review of the first wave of studies fails to settle the debate on the linkages between agricultural commercialization and nutrition. As shown in Table 1 (which reports the literature review carried out in von Braun and Kennedy, 198610), results are confusing and ambiguous, with the same crop having opposite effects both between and within countries. Studies in this period usually lacked a proper conceptual framework, adopting instead a “black-box” approach which did not articulate the underlying channels leading to various outcomes. The main approach was a comparison of nutritional outcomes between cash crop adopters and non-adopters. The evidence was often anecdotal and based on country case studies, making it impossible to compare results both across and within countries. In most studies, the definition and measurement of commercialization was subjective (based on the adoption or non-adoption of a given list of cash crops).
Table 1

Summary of micro-studies on income and nutritional effects of cash crop production reviewed in von Braun and Kennedy (1986).

StudyCountryCropEffects on
Family consumptionNutritional Status
Lev (1981)TanzaniaCoffee, BananasPositiven.a.
Hitchings (1982)KenyaTea, Coffee, Cotton, Pyrethrum, Sugarcanen.a.Positive, Positive, Neutral, Neutral, Negative
Rabeneck (1982)KenyaCoffee, Staplesn.a.Positive
Fleuret and Fleuret (1983)KenyaCoffee, Vegetablesn.a.Positive
Gross and Underwood (1971)BrazilSisalNegativen.a.
Dewey (1981)MexicoCocoa, Sugarcanen.a.Negative
Hernandez et al. (1974)MexicoCocoa, Sugarcanen.a.Negative
Lambert (1978)Papua New GuineaCoffeeNegativen.a.
Harvey and Heywood (1983)Papua New GuineaCoffeePositivePositive
Subsequently, the IFPRI studies also developed a conceptual framework to articulate the complex set of linkages between the process of agricultural commercialization and the nutritional and health status at the household level. In particular, they examined how agricultural commercialization affected each of the four key steps between national food production and individual nutritional outcomes, identified by Pinstrup-Andersen in the early 1980s,11 i.e. “national/community food availability”, the “ability and desire of households to obtain food”, “intrahousehold food distribution” and “health and sanitary factors”. First, the decision to adopt a market-oriented production system is expected to influence the degree of food availability at the national, community and household levels. Factors such as competition among limited resources (such as land, labor and capital), the amount of food imports and aid, the degree of diversity of available foods and the presence of seasonal and irregular fluctuations may be influenced by a rise in market orientation in smallholder farmers. Through this channel they may impact national or regional food availability, which, by affecting food prices, may have relevant nutritional implications. However, national food sufficiency can be a poor indicator of household nutritional status, as “food may be plentiful but the poor may still be unable to access it”.12 Thus, at the household level, it is important to look at the ability of each household to effectively obtain food.13 This ability varies depending on the effects of the commercialization process on several factors, among which the most important one is household income.14 If real income increases at the household level, it could then stimulate a virtuous cycle through which smallholder farmers can enhance their level of food consumption. While necessary, the rise in real income, is again not sufficient to improve household consumption. Indeed, households must have the “desire to obtain available (and nutritious) food”, a condition which is often not satisfied due to intra-household factors, as individual household members are likely to have different income elasticities.15 Furthermore, even if additional income is spent on food, intra-household food consumption could be heterogeneously distributed among family members, with children and women often relatively penalized compared with adult males. Furthermore, a high marginal propensity to spend on food does not automatically imply a high marginal propensity to consume calories. Households may choose to “diversify into a more varied, higher cost diet rather than simply using the income to increase energy intake”.16 Finally, a crucial role is played by the potential impact of changes in income on health and sanitary factors, as increased income from commercialization may be invested towards improved water sources and/or sanitation both at the household and community level. Two key results emerged from the IFPRI studies17: The impact of agricultural commercialization on the nutritional status18 of rural households was found to be mostly positive, though rather small in magnitude. This positive relationship mainly operated through the linkages between household income, household caloric intake and child caloric intake. Cash crop adoption generally increased real incomes, thereby stimulating a virtuous cycle whereby higher incomes were used to increase food consumption, which benefited on average both the household in general and the children in particular. The effect of agricultural commercialization on nutrition will depend on a number of conditioning, complementary factors both at the macro and micro level, making the adoption of commercial crops more or less remunerative and sustainable. The complex set of linkages characterizing the commercialization process and its impact on household welfare and nutrition suggest that several different scenarios can emerge depending on the factors dominating in each circumstance. According to the study, a key role must be played by policies (both macro and micro19) aiming at enhancing beneficial outcomes while minimizing adverse ones.20 Two decades after the publication of von Braun and Kennedy (1994), the somewhat positive view on the impact of commercialization of agriculture on welfare outcomes is still prevalent. In fact, since then, there have been only few new studies explicitly looking at the link between agricultural commercialization and nutrition and the evidence remains inconclusive.21 The present study is an attempt to shed some light on this rather controversial, yet important, relationship using data from three countries in sub-Saharan Africa.

Data description

To revisit the link between agricultural commercialization and nutrition, we use the data from the nationally representative household panel surveys collected in three countries (Malawi, Tanzania, Uganda) under the Living Standards Measurement Study – Integrated Surveys in Agriculture (LSMS-ISA) initiative.22 All households were administered a multi-topic household questionnaire, and those involved in any agricultural activities were also administered a detailed agricultural module. The surveys collect detailed crop and plot level information, as well as a rich set of socioeconomic characteristics and information on child anthropometrics. Given agricultural production estimates at the plot level as well as the identification of the plot manager, the level of commercialization can also be computed at the individual level. The surveys was conducted throughout the year, though each household was only interviewed once. To adjust for this difference in the timing of the interview, when calculating the commercialization index reported sales were annualized using imputation methods (see Appendix A for details).23 Given our focus, our sample includes only farming households, defined as households who reported involvement in agricultural activities through ownership and/or cultivation of land in the most recently completed agricultural season.24 The descriptive analysis presented in this paper in Sections 3, 4, 5 are based on the full samples of the baseline surveys which were carried out in 2010/11 in all three countries. Our final sample at baseline thus consists of 9894 households in Malawi, 2074 households in Tanzania and 1788 households in Uganda. The panel component is introduced in Section 5.1 in order to address some of the econometric challenges of the estimation. After excluding the non-panel and non-farming households, the final sample size of the panel used for the estimations in each country is 2222, 1744 and 1587 farming households in Malawi, Tanzania and Uganda, respectively.25 Overall, sample attrition between the two waves was rather low. As shown in Table 2, the great majority of households in our sample are male-headed, with the share of the female-headed households ranging from 25% (Malawi and Tanzania) to 30% (Uganda). Significant differences emerge in terms of educational attainment: in Malawi about 78.8% of the rural households did not receive any type of formal education, while this percentage amounts to about 30.2 and 18.8% in Tanzania and Uganda, respectively. In the latter two countries, the large majority of rural households attained at least a primary level of education.
Table 2

Main sample characteristics.

Sample characteristicsMalawi
Tanzania
Uganda
AllSellersNon sellersAllSellersNon sellersAllSellersNon sellers
# of households9894872711672074133573917881415373



of which:
Male headed (%)75.475.774.773.772.771.770.769.768.7
Female headed (%)24.624.325.326.327.328.329.330.331.3



Education (%)
– None78.878.283.830.228.733.318.816.627.7
– Primary9.19.46.962.965.457.558.259.055.2
– Secondary11.011.28.76.85.89.118.219.413.7
– Tertiary1.11.20.60.10.10.14.85.13.4



HH head age43.143.748.647.351.447.046.748.1
(16.51)(16.42)(17.28)(15.76)(15.25)(16.45)(15.73)(15.51)(16.54)
HH size4.74.74.55.55.65.55.35.45.1
(2.17)(2.18)(2.08)(2.93)(2.93)(2.94)(2.62)(2.62)(2.63)
CDR0.80.80.80.70.70.70.80.80.8
(0.70)(0.70)(0.73)(0.68)(0.69)(0.67)(0.76)(0.75)(0.76)
Distance market (Kms)7.97.98.075.578.768.831.631.432.4
(5.31)(5.32)(5.25)(50.97)(53.09)(45.46)(17.79)(16.87)(21.02)
Distance pop. Center (Kms)36.035.838.251.254.045.225.224.129.8
(20.06)(20.03)(20.19)(39.00)(38.99)(38.36)(16.83)(15.02)(22.01)
P.c. food expenditure (USD)0.520.530.420.630.630.630.400.420.35
(0.34)(0.35)(0.29)(0.35)(0.34)(0.36)(0.26)(0.27)(0.25)
P.c. kcal Consumption253625542383204420781972224323171954
(2305.56)(2239.66)(2807.45)(867.95)(858.17)(884.73)(1567.90)(1573.86)(1512.01)
Hired labor (days)4.44.81.58.510.83.416.217.99.7
(17.27)(18.08)(6.47)(25.32)(29.57)(10.42)(35.31)(37.20)(25.63)
Land owned (Ha)0.91.00.62.63.01.72.32.51.5
(13.13)(13.87)(0.61)(4.59)(5.27)(2.34)(12.76)(14.15)(3.83)
# crops harvested2.22.31.52.12.31.63.84.22.4
(1.12)(1.09)(1.11)(1.12)(1.14)(0.85)(1.87)(1.80)(1.45)
# crops sold1.71.80.01.01.50.01.82.30.0
(1.02)(0.90)0.00(0.94)(0.76)0.00(1.49)(1.31)0.00
HH Harvest value (USD)269.92292.2876.91244.65314.2096.63215.03254.4660.06
(731.34)(768.50)(110.90)(500.71)(429.69)(599.61)(334.09)(361.59)(79.97)
HH revenue (USD)102.28114.130.00112.23164.960.0085.59107.380.00
(542.64)(572.03)0.00(286.60)(334.75)0.00(217.84)(239.16)0.00
AG Income (USD)285.18308.4084.72281.35350.66133.84234.07272.0784.77
(738.08)(775.05)(130.67)(534.48)(472.76)(621.66)(354.33)(378.56)(167.05)
HH Days worked125.30129.0093.36149.32161.51123.38134.10143.7496.22
(116.28)(119.63)(74.64)(146.35)(150.35)(133.91)(106.10)(109.05)(83.57)
Another source of significant variation between the three countries is the size of land available to farmers. Average land size is slightly below 1 ha in Malawi, compared with 2.3 and 2.6 ha respectively in Uganda and Tanzania. The three countries also look different in terms of crop diversification, with Malawian and Tanzanian families choosing to plant 2 types of crops on average, compared with around 4 in Uganda. Table 2 also details the differences between selling households and non-selling households. We find that close to 90% of households in Malawi engage in sales, compared to 80% in Uganda and 68% in Tanzania. Not surprisingly, when broken down by land size quintiles, the incidence of households selling any crop is monotonically increasing, with larger farmers selling greater shares. Overall, these preliminary figures suggest that in all three countries, the majority of farm households sell part of their production for both staple and cash crops. In this respect, our data suggests that the vast majority of commercialized households are only producing (and selling) food crops, from a minimum of 79% in Uganda to a maximum of 91% in Tanzania. Most remaining commercializers are growing and marketing both food and cash crops (9% in Tanzania, 21% in Uganda and 16% in Malawi), whereas those focusing only on the production and sale of non-food crops represent less than 1% in each country.

Measuring agricultural commercialization in sub-Saharan Africa

In the previous section, we demonstrated the high incidence of participation in market activities among even the smallest of smallholders. However, how much do those farming households sell? Who are the individuals in the household most involved in selling and what products do they sell the most? How best to define and measure the actual degree of agricultural commercialization in a given country has been much debated in recent decades. In this paper we use the Household Crop Commercialization Index (CCI), introduced by Strasberg et al. (1999) and Govereth et al. (1999), which is defined as: Though not without its own shortcomings,26 a measure on the output side is able to capture a “household’s ‘revealed’ marketing behavior,27” and can be seen as relatively easier to collect,28 while lending “itself well to an empirical test within a regression framework29”. According to this measure, the process of agricultural commercialization can be represented by a continuum ranging from pure subsistence (CCI = 0) to a completely commercialized production system (CCI = 100). Its main advantage is that it permits to go beyond the traditional dichotomies of sellers versus non-sellers, or between staple and cash crop producers. In fact, it adds an additional dimension to the discussion, i.e. how much of their harvest households choose to sell - while still being relatively easy to compute. For the countries studied here, the CCI amounts to 17.6% in Malawi, 26.3% in Uganda and 27.5% in Tanzania on average (Table 3). When restricting the sample to farm households reporting any sales (conditional CCI), it rises slightly to 19.6, 40.4 and 33% respectively. Also, the degree of commercialization increases with farm size, likely reflecting larger surpluses of edible crops and/or greater adoption of cash crops by farmers with larger landholdings.
Table 3

CCI by chosen characteristics.

CCI
MalawiTanzaniaUganda
Country average17.627.526.3
Country average (conditional on sales)19.640.433.0
Female headed10.820.320.7
Female headed (conditional on sales)12.233.728.7
Male headed19.829.828.6
Male headed (conditional on sales)22.042.334.5
Female farmers9.019.123.0
Female farmers (conditional on sales)30.642.937.0
Male farmers19.830.827.0
Male farmers (conditional on sales)21.742.834.6



By land size
– Less than 0.5 ha9.915.420.8
– Between 0.5 and 1 ha19.821.625.3
– Between 1 and 2 ha28.826.228.5
– 2 ha or more34.834.830.7
Relying on individual-level data, we are also able to compute CCI measures separately for male and female farmers.30 At first glance, female farmers appear to commercialize considerably less of their harvest than their male counterparts. However, when focusing only on those individuals who report selling (conditional CCI), the difference disappears or even reverses. In fact, among sellers, females appear to be more commercially oriented than their male counterparts both in Malawi (selling 31% of their production vs. 22 among male farmers) and in Uganda (37 vs. 35). Meanwhile, in Tanzania both genders have virtually the same CCI, at 43%. Breaking down our unconditional gender-disaggregated CCI measure by farm size31 confirms a positive relationship between commercialization and landholdings for both male and female farmers. However, the gender gap in commercialization appears to increase, particularly in Malawi where among farmers with more than 1 ha, male unconditional CCI is almost double that of their female counterparts. This gender gap across farm sizes is not as stark in the other two countries. The larger gender gaps in Malawi may reflect greater restrictions for female farmers on fully participating in the production and sale of tobacco (the main cash crop in Malawi), as well as constraints to accessing more land resources to allow for greater crop diversification. To assess the degree of commercialization of these staple and other food crops, we thus proceed to construct separate CCIs to reflect the degree of commercialization of food items versus non-edible items. As non-edible items are planted in most instances with the primary purpose of selling, it is not surprising to find the CCI for households who plant these crops to be as high as 91% for tobacco in Malawi32 or 87% for coffee in Uganda. Farm households, however, do not only sell traditional cash crops, i.e. crops grown almost exclusively for sale. Table 4 shows that households in all three countries to a large extent are also involved in the sale of traditional staple crops such as maize and/or cassava. However commercialization of most food crops remains low although, with the exception of Malawi, households who do choose to sell, sell a considerable portion of their harvest. In Malawi, on the contrary, food crops like maize and cassava are sold by many households, but it is only done in small quantities. This relatively high incidence of small quantities of maize sales is the reason why the country’s CCI is low.
Table 4

The degree of HHs’ agricultural commercialization by type of crop.

Crop% PlantingCCI among planters% selling among plantersCCI conditional on planting and selling
Malawi

 Maize97.45.084.25.9
 Cassava11.04.360.87.1
 Ground Nut27.129.188.133.1
 Tobacco14.890.595.195.2
 Soya5.643.076.856.0
 Pigeon Peas22.115.158.326.0
 Beans11.110.137.826.8
Food crops99.79.988.111.3
Non-food crops16.889.894.295.3

Tanzania

 Maize78.315.653.829.0
 Ground Nut14.428.342.666.5
 Paddy Rice19.830.756.054.8
 Beans28.719.935.057.0
 Sorghum11.112.724.252.4
 Sweet Potato9.911.220.853.9
 Cowpeas6.819.426.972.0
Food crops99.223.864.836.7
Non-food crops9.385.988.697.0

Uganda

 Maize58.420.054.736.5
 Cassava41.48.019.840.3
 Ground Nut26.321.261.534.5
 Banana (food)49.634.467.351.2
 Sweet Potato42.85.513.939.9
 Coffee18.886.787.698.9
 Beans65.013.233.639.3
Food crops99.722.576.329.5
Non-food crops21.292.194.697.4
In the countries studied, there is commercialization of staple items such as maize (5% in Malawi, 16 in Tanzania and 20 in Uganda) and beans (10% in Malawi, 20 in Tanzania and 13 in Uganda). Overall, the share of food crops sold is 10% in Malawi, 24% in Tanzania and 23% in Uganda. Looking at the shares of food crop sold by farm size, as expected, farmers with larger landholdings tend to sell larger shares of their food production, reflecting greater surpluses, although in countries like Malawi, the share remains rather low, at 14% even for farmers with more than 2 ha of land. Finally, as expected, those with greater harvests (measured in monetary value) tend to have higher levels of commercialization in all three countries. Graph 1, presents the average CCI by harvest value deciles, and illustrates the level of commercialization across the harvest value distribution. Even households with the lowest harvest values engage the market.
Graph 1

Avg. agricultural commercialization by harvest value deciles.

Exploring the relationship between agricultural commercialization and nutrition

In this section, we investigate the nexus between the degree of agricultural commercialization and the nutritional status of farm households. Three indicators are used to measure household nutritional status: (i) children’s anthropometric measures (measured both in terms of percentage of children stunted, wasted and underweight, and through the computations of Z-scores), (ii) household per capita food expenditure, and (iii) household per capita caloric consumption. Table 5 suggests high levels of malnutrition in all countries, with an incidence of stunting among children under five years old of about 42% in Tanzania, compared to 36% in Uganda and 31% in Malawi. Similarly, the share of children wasted amounts to 6.2, 3.2 and 3.6% in Tanzania, Uganda and Malawi respectively. In terms of average caloric consumption, Tanzania exhibits average per capita caloric consumption of 2044 kilocalories, compared with 2536 in Malawi and 2243 in Uganda. Across countries, there is no clear relationship between the nutritional outcomes and the degree of commercialization (as proxied by the CCI quintiles) and the different nutritional indicators, with the exception of stunting in Tanzania. Similarly, no clear trends emerge when the degree of agricultural commercialization is correlated with children’s anthropometrics as measured through Z-scores (see Graph 2).
Table 5

CCI quintile breakdown of nutritional outcomes.

Nutritional measure
HAZWAZWHZStuntedWastedUnderweightFood Expenditure ($)Kilo Calories
MalawiCCI QuintileNo Sales−1.31−0.520.2925.63.95.70.422418
1−1.22−0.480.2825.23.04.70.472352
2−1.53−0.570.4132.82.77.50.532546
3−1.32−0.410.4630.33.65.50.542670
4−1.40−0.540.3530.54.76.80.552538
5−1.52−0.510.4736.53.87.70.572640

Country mean−1.39−0.570.3930.73.66.40.522536

TanzaniaCCI QuintileNo Sales−1.72−0.950.0242.65.714.40.631972
1−1.81−1.10−0.1543.47.724.10.662215
2−1.85−0.970.1047.27.116.90.592051
3−1.67−1.02−0.1345.16.215.50.612004
4−1.62−0.880.0340.15.512.10.622074
5−1.58−0.92−0.0632.45.514.00.642044

Country mean−1.71−0.96−0.0241.96.215.60.632044

UgandaCCI QuintileNo Sales−1.43−0.83−0.0432.12.414.50.351954
1−1.35−0.580.2636.81.79.40.402229
2−1.85−1.010.0745.66.116.10.412299
3−1.59−0.780.1837.05.112.30.442546
4−1.57−0.700.2731.81.610.70.402362
5−1.44−0.580.3134.42.47.90.442132
Country mean−1.53−0.750.1636.03.211.90.402243

Note: Food expenditure and kilo calorie data are per capita, and at the household level.

Graph 2

Agricultural commercialization and nutrition: pooled sample.

The absence of a correlation with child anthropometry might be partially attributable to the smaller sample size of children, particularly for Tanzania and Uganda. Pooling the three country samples and running a local polynomial non-parametric regression (without any control variables) a slightly upward gradient with commercialization emerges for the height-for age (stunting) and weight-for-height (wasting) measures, suggesting a some positive correlation between child nutritional outcomes and household’s commercialization. In the remainder of the paper, we explore these relationships in more detail using a multivariate framework based on the pooled sample.

Empirical strategy and main results

In order to analyze further how commercialization may affect nutritional outcomes, more directly through changes in food consumption and more indirectly through changes in income, we estimate a set of models first at the individual level to investigate how CCI impacts child nutritional status and then at the household level with the aim of exploring how CCI correlates to household per capita expenditure. Specifically, in Table 6 we report selected findings of the estimated impact of commercialization on child anthropometrics. In this instance the sample has been pooled due to the reasons mentioned in the previous section. Table 7 illustrates estimates of the probability of a child being stunted, wasted, or underweight. For each model, we use five different specifications based on different characterizations of household commercialization and thus how we introduce the CCI. The aim is to determine if increased sales of the household’s harvest could be related to observed anthropometric outcomes. The owner of the revenue from the sales could be of importance33; specifications that take this into account are also included. In the first specification of each model (Column 1) we include the overall household commercialization index. In column 2, we add to the previous specification the share of the household CCI accruing to female farmers within the household. In column 3, we introduce yet another specification of the gender CCI by using the Female CCI. In a similar fashion, to account for the potentially differential impact of commercialization of food commodities, in column 4 and 5 we introduce two variants of the Food CCI, first by adding to the total CCI the share of total CCI deriving from the sale of food crops and then by replacing the total CCI with the Food CCI.
Table 6

Individual fixed effects specification for pooled sample.

HAZ(1)(2)(3)(4)(5)
ln(pc. Expenditure)0.1080.1150.1100.1150.107
(0.0737)(0.0742)(0.0742)(0.0735)(0.0737)
CCI0.1780.1600.155
(0.123)(0.121)(0.122)
Perc. Female0.00186
(0.00118)
Female CCI0.298
(0.213)
Perc. Food0.00108
(0.000895)
Food CCI0.201
(0.134)
Adjusted R20.0970.0990.0970.0990.097

WAZ(1)(2)(3)(4)(5)

ln(pc. Expenditure)0.05790.05020.05650.06390.0577
(0.0518)(0.0503)(0.0520)(0.0519)(0.0518)
CCI0.06200.08160.0409
(0.0871)(0.0872)(0.0863)
Perc. Female−0.00195∗∗
(0.000864)
Female CCI0.00839
(0.138)
Perc. Food0.000950
(0.000533)
Food CCI0.0827
(0.0954)
Adjusted R20.0970.0990.0970.0990.097

WHZ(1)(2)(3)(4)(5)

ln(pc. Expenditure)0.0148−0.0005920.01180.01870.0152
(0.0828)(0.0809)(0.0835)(0.0825)(0.0826)
CCI−0.0462−0.00688−0.0600
(0.133)(0.130)(0.132)
Perc. Female−0.00391∗∗
(0.00151)
Female CCI−0.199
(0.265)
Perc. Food0.000622
(0.000787)
Food CCI−0.0396
(0.155)
Adjusted R20.0310.0390.0320.0320.031

Observations31403140314031403140

⁎⁎⁎ p < 0.01; ⁎⁎ p < 0.05; ⁎ p < 0.1.

Table 7

Random effects logit specification for pooled sample.

Stunted(1)(2)(3)(4)(5)
ln(pc. Expenditure)−0.242∗∗−0.242∗∗−0.243∗∗−0.247∗∗−0.244∗∗
(0.109)(0.109)(0.109)(0.110)(0.109)
CCI0.1790.1880.191
(0.239)(0.240)(0.239)
Perc. Female−0.000817
(0.00228)
Female CCI0.165
(0.441)
Perc. Food−0.00138
(0.00136)
Food CCI−0.0405

(0.263)

Wasted(1)(2)(3)(4)(5)

ln(pc. Expenditure)−0.176−0.185−0.180−0.183−0.183
(0.189)(0.191)(0.190)(0.191)(0.189)
CCI0.1610.2840.171
(0.436)(0.434)(0.429)
Perc. Female−0.0112∗∗
(0.00487)
Female CCI−0.688
(1.097)
Perc. Food−0.00279
(0.00221)
Food CCI0.526

(0.448)

Underweight(1)(2)(3)(4)(5)

ln(pc. Expenditure)−0.692∗∗∗−0.692∗∗∗−0.698∗∗∗−0.700∗∗∗−0.695∗∗∗
(0.168)(0.168)(0.168)(0.169)(0.167)
CCI0.3150.3260.334
(0.362)(0.365)(0.361)
Perc. Female−0.000952
(0.00402)
Female CCI−0.238
(0.748)
Perc. Food−0.00234
(0.00212)
Food CCI0.386

(0.395)

Observations31403140314031403140

⁎⁎⁎ p < 0.01; ⁎⁎ p < 0.05; ⁎ p < 0.1.

In each model and specification, the common correlates are: gender of head, age of head, education of the head, natural logarithm of land holdings, natural logarithm of land holdings squared, the natural logarithm of the household’s harvest value, annual average rainfall in millimeters, and the child’s age in months as well as the child’s gender. The key variables in this model (CCI and its variants) are in all likelihood endogenous due to simultaneous causality between the dependent variables and commercialization. Additionally, it is possible that several common unobservable factors impact both kinds of outcomes. In order to address these potential endogeneity issues, the panel component of the data is used by estimating fixed effects models. Naturally, time-varying covariates which are not controlled for by the fixed-effect model still present a potential problem.

Anthropometrics with pooled sample of children

In order to analyze how commercialization relates to children’s nutritional outcomes, we focus on the pooled sample of children present in both waves, who were older than 6 months during the first round and younger than 60 months old by the second wave. We run both an individual fixed effects linear model on Z-scores as well as a random effects logit model on the probability of being stunted, wasted or underweight. The fixed effects results in Table 6 are quite consistent for total CCI and its variants, with the coefficients being largely not significant. More explicitly, there is no relationship between anthropometric outcomes and CCI, both as a total and when disaggregated by food and non-food products. The few exceptions are in the WAZ and WHZ models where, at equal levels of total household commercialization, the share of CCI accruing to women is negative and significant. This suggests that greater involvement by women may result in some negative effect for short-term nutritional outcomes. However, in light of the rather small sample size of children in the panel, these results should be taken with some caution. Finally, the level of per capita expenditure in the household is also not significantly related to Z-scores. The probability of a child being stunted, wasted, or underweight is modelled in Table 7. In line with the results presented in Table 6, the coefficients only show a significant and negative effect of greater commercialization by women on short-term nutritional indicators, likely a reflection of the potentially deleterious effect of lower levels of child care on child nutritional status. Per capita expenditure in this instance does seem to play a role, with an increase in expenditure negatively related to the child’s likelihood of being stunted, and underweight. The relationship, however, is not significant for wasting. In Table8 we analyze the relationship between commercialization and per capita food expenditures. With the above mentioned caveats on the potential endogeneity of some of the regressors,34 overall we fail to find any clear pattern, and the findings seem to diverge only slightly across countries. For instance, looking at the first columns, we find little evidence of a relationship between CCI and food expenditures, except for Uganda where the coefficient is negative and marginally significant. Also, in Uganda, the negative coefficient on female CCI is still marginally significant though somewhat larger than for the total CCI. All other coefficients provide little support to the existence of a relationship between commercialization, in its different specifications, and food expenditures in any of the countries analyzed.
Table 8

Household fixed effects specification for nat. log of household’s per capita food expenditure.

Malawi(1)(2)(3)(4)(5)
ln(harvest value)0.103∗∗∗0.102∗∗∗0.102∗∗∗0.102∗∗∗0.102∗∗∗
(0.0186)(0.0185)(0.0175)(0.0185)(0.0176)
CCI0.0132−0.001580.0172
(0.0842)(0.0842)(0.0824)
Perc. Female0.000628
(0.000522)
Female CCI0.202
(0.163)
Perc. Food0.000223
(0.000383)
Food CCI0.0791
(0.0824)
Adjusted R20.3470.3480.3480.3470.347
Observations44444444444444444444

Tanzania(1)(2)(3)(4)(5)

ln(harvest value)0.0436∗∗∗0.0439∗∗∗0.0396∗∗∗0.0469∗∗∗0.0437∗∗∗
(0.0121)(0.0121)(0.0115)(0.0131)(0.0119)
CCI−0.0733−0.0657−0.0552
(0.0588)(0.0601)(0.0588)
Perc. Female−0.000311
(0.000599)
Female CCI−0.105
(0.104)
Perc. Food−0.000399
(0.000366)
Food CCI−0.0856
(0.0611)
Adjusted R20.1300.1300.1300.1310.130
Observations34883488348834883488

Uganda(1)(2)(3)(4)(5)

ln(harvest value)0.05290.05270.05060.04980.0530
(0.0319)(0.0322)(0.0309)(0.0325)(0.0321)
CCI−0.132−0.133−0.146
(0.0754)(0.0744)(0.0764)
Perc. Female4.21e−05
(0.000575)
Female CCI−0.202∗∗
(0.102)
Perc. Food0.000644
(0.000473)
Food CCI−0.133
(0.0841)
Adjusted R20.1340.1340.1360.1360.134
Observations31743174317431743174

⁎⁎⁎ p < 0.01; ⁎⁎ p < 0.05; ⁎ p < 0.1.

In Table 9 we report the same coefficients by regressing household total per capita expenditure on the same set of regressors and various CCI specifications. The results we found for food expenditures for Malawi carry over to this specification with little evidence of any impact of commercialization on total expenditures. This lack of impact may be due to the fact that while commercialization is widespread across farmers, sales often involve small amounts which fail to have a significant impact on total household per capita expenditures.35
Table 9

Household fixed effects specification for nat. log of household total per capita expenditure.

Malawi(1)(2)(3)(4)(5)
ln(harvest value)0.0977∗∗∗0.0978∗∗∗0.0997∗∗∗0.0973∗∗∗0.0990∗∗∗
(0.0167)(0.0166)(0.0160)(0.0166)(0.0159)
CCI0.05660.06050.0600
(0.0686)(0.0687)(0.0674)
Perc. Female−0.000163
(0.000425)
Female CCI0.0442
(0.137)
Perc. Food0.000185
(0.000306)
Food CCI0.120
(0.0728)
Adjusted R20.4440.4450.4440.4450.445
Observations44444444444444444444

Tanzania(1)(2)(3)(4)(5)

ln(harvest value)0.0319∗∗∗0.0330∗∗∗0.0309∗∗∗0.0357∗∗∗0.0324∗∗∗
(0.0105)(0.0105)(0.0100)(0.0112)(0.0103)
CCI−0.0416−0.0178−0.0212
(0.0576)(0.0585)(0.0574)
Perc. Female−0.000969
(0.000507)
Female CCI−0.163
(0.0994)
Perc. Food−0.000450
(0.000321)
Food CCI−0.0555
(0.0596)
Adjusted R20.1300.1320.1310.1310.130
Observations34883488348834883488

Uganda(1)(2)(3)(4)(5)

ln(harvest value)0.01640.01620.01540.01300.0146
(0.0222)(0.0223)(0.0210)(0.0225)(0.0223)
CCI−0.0539−0.0552−0.0704
(0.0805)(0.0799)(0.0809)
Perc. Female5.46e−05
(0.000463)
Female CCI−0.0826
(0.0942)
Perc. Food0.000726
(0.000421)
Food CCI−0.0156
(0.0890)
Adjusted R20.2250.2250.2260.2280.225
Observations31743174317431743174

⁎⁎⁎ p < 0.01; ⁎⁎ p < 0.05; ⁎ p < 0.1.

Main conclusions

Despite the inconclusiveness of the available empirical evidence to date, agricultural commercialization among poor smallholders continues to be heralded as an effective solution to reduce poverty, improve household food and nutrition security, and foster growth in rural areas. Based on new comparable data from across sub-Saharan Africa which enables the calculation of commercialization indexes at the individual and crop level, this paper contributes to the ongoing debate by investigating the relationship between increased agricultural commercialization and several nutritional indicators in three African countries, differentiated by gender and types of crops sold. Against conventional wisdom, the data reveal very high levels of commercialization by even the poorest and smallest land holders, with rates of market participation as high as 90% in Malawi. Similarly, against common perceptions, a considerable portion of this market presence is driven by the sale of staple and other food crops and not necessarily by traditional cash crops. This is in part due to the fact that the great majority of smallholders are still specializing in the production of food crops (between 80 and 90% in the three countries analyzed), with only a relatively small share cultivating both food and traditional cash crops. However, in most cases, particularly in Malawi, market participation only involves the sale of relatively small quantities of own food production, resulting in low food CCI-- 10% for the entire sample and only 14% among the largest farmers. Another important finding of the cross-country analysis is that although female farmers appear to participate less in market activities, when they do participate, they tend to sell larger shares of the production under their control relative to their male counterparts. In line with previous research, we also find little evidence of a relationship between increased commercialization and improved nutritional status. The only exception is a weak negative relationship between the portion of commercialization accruing to females and short-term nutritional indicators, which could be the results of the negative effect of greater female market participation on time allocated to child care and homemaking. Nonetheless, these findings should still be taken with caution, as we are still unable to fully control for the potential simultaneity of the CCI and total harvest value and other variables, despite the use of panel data. That said, the arguably more robust and representative evidence presented here is in line with the bulk of evidence to date, and yet another piece of empirical evidence of the weak association between increased commercialization and improved food security and nutritional outcomes.
Table A1

Sample composition.

MalawiTanzaniaUganda
MaizeObservations957815101172
Obs. Selling1520489441



LegumesObservations42241172256
Obs. Selling1279488



TubersObservations4793601832
Obs. Selling200101



GrainsObservations1104541764
Obs. Selling126214241



RiceObservations619351N/A
Obs. Selling378221



Ground nutObservations2466N/A494
Obs. Selling855193



CassavaObservations1452N/AN/A
Obs. Selling257



BananaObservationsN/AN/A1202
Obs. Selling533



BeansObservationsN/AN/A1208
Obs. Selling399
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Authors:  Julius Manda; Carlo Azzarri; Shiferaw Feleke; Bekele Kotu; Lieven Claessens; Mateete Bekunda
Journal:  PLoS One       Date:  2021-05-06       Impact factor: 3.240

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Journal:  Food Policy       Date:  2017-02       Impact factor: 4.552

4.  Nutrition education, farm production diversity, and commercialization on household and individual dietary diversity in Zimbabwe.

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Journal:  Food Secur       Date:  2021-09-30       Impact factor: 7.141

7.  Dietary diversity, environment and health-related factors of under-five children: evidence from cassava commercialization households in rural South-West Nigeria.

Authors:  Olutosin Ademola Otekunrin; Oluwaseun Aramide Otekunrin; Idris Akanbi Ayinde; Rahman Akintayo Sanusi; Oluseye Olusegun Onabanjo; Oluwaseun Ariyo
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Journal:  Environ Sci Pollut Res Int       Date:  2022-03-04       Impact factor: 5.190

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Journal:  Food Secur       Date:  2022-08-17       Impact factor: 7.141

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