Quantifying the Impact of COVID-19 Relief Vouchers Schemes on Food Security: Empirical Evidence Insights from South Africa
Abstract
:1. Introduction
COVID-19 Relief Vouchers in South Africa
2. Theoretical Framework
3. Materials and Methods
3.1. Study Site Description
3.2. Sampling and Data Collection
Municipality | No. of Livestock Farmers in Municipality | Proportion of Farmers (%) | Farmers in Sample |
---|---|---|---|
Dikgatlong | 351 | 40% | 87 |
Magareng | 120 | 14% | 30 |
Phokwane | 266 | 30% | 65 |
Sol Plaatje | 141 | 16% | 35 |
Total | 878 | 100% | 217 |
“1 = Anxiety about food (in) adequacy; 2 = Eating foods of a limited variety; 3 = Eating less-preferred foods; 4 = Inability to eat even the less-preferred foods; 5 = Eating smaller meals than needed; 6 = Eating fewer meals in a day; 7 = Going to bed hungry; 8 = Failing to obtain food of any kind during the whole day or night”.
Mean for Beneficiary Categories | ||||||
---|---|---|---|---|---|---|
Variable | Variable Description | Unit | Total Sample | Beneficiary | Non-Beneficiary | Test Value |
Dependent variable | ||||||
HFIAS | A continuous variable of the household acute food insecurity access scale | number | 7.43 | 8.54 | 6.28 | −1.263 * |
Status | Dummy variable showing the beneficiary status of the household (0 = No, 1 = Yes) | dummy | 0.63 | 0.37 | 1.457 * | |
Explanatory variables | ||||||
Age | Continuous variable for age of household head | years | 51.37 | 53.57 | 48.27 | −2.796 *** |
Education | Continuous variable for the adult mean number of years in education | number | 7.80 | 7.46 | 8.28 | 1.361 |
Household | Continuous variable of the active family members | number | 5.18 | 5.15 | 5.22 | 0.185 |
Experience | Continuous variable of cumulative experience years in livestock farming | years | 10.87 | 11.87 | 9.44 | −2.015 ** |
Land size | Continuous variable of the total land holdings for the family | hectares | 2.43 | 2.66 | 2.09 | −1.563 |
Credit | Dummy variable for access to credit facilities (0 = No, 1 = Yes) | dummy | 0.13 | 0.13 | 0.13 | −0.011 |
Savings | Dummy variable for usable savings during emergencies (0 = No, 1 = Yes) | dummy | 0.19 | 0.21 | 0.16 | −1.055 |
Livestock loss | Continuous variable for percentage of loss in livestock in last 12 months | % | 2.13 | 2.06 | 2.189 | −0.448 |
Orientation | Dummy variable for orientation of agricultural production (0 = subsistence, 1 = market) | dummy | 1.50 | 1.54 | 1.46 | −0.789 |
Preparedness | Dummy variable for perceived preparedness to shocks (0 = not prepared, 1 = prepared) | dummy | 0.72 | 0.69 | 0.77 | 1.195 |
Support | Dummy variable for whether the farmer got any form of external support | dummy | 0.25 | 0.26 | 0.23 | −1.707 * |
Instrumental variables | ||||||
Coping diversity | Dummy variable for diversity of coping strategies (0 = low, 1 = high) | dummy | 1.90 | 2.27 | 1.71 | −1.849 ** |
Livestock sales | Dummy variable of selling livestock as the main coping strategy (0 = No, 1 = Yes) | dummy | 0.72 | 0.85 | 0.69 | −1.928 ** |
3.3. The Endogenous Switching Regression (ESR)
4. Results
4.1. Descriptive Analysis
4.2. Endogenous Switching Regression (ESR)
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Glossary
ATE | Average Treatment Effect |
ATT | Average Treatment Effect on the Treated |
ATU | Average Treatment Effect on the Untreated |
CEGA | Center of Effective Global Action |
CDF | Cumulative Distribution Function |
°C | Degree Celsius |
COVID-19 | Coronavirus Disease 2019 |
DA | Democratic Alliance |
DALRRD | Department of Agriculture, Land Reform, and Rural Development |
ESR | Endogenous Switching Regression |
DAFF | Department of Agriculture, Forestry, and Fisheries |
FANTA | Food and Nutrition Technical Assistance Project |
FBDM | Frances Baard District Municipality |
FIML | Full Information Maximum Likelihood |
HFIAS | Household Food Insecurity Access Scale |
IFPRI | International Food Policy Research Institute |
km² | Square Kilometer or Kilometer Squared |
LSU | Large Stock Unit |
mm | Millimeter |
NDAFF | Northern Cape Department of Agriculture, Forestry, and Fisheries |
NRF | National Research Foundation |
PLAAS | Institute for Poverty, Land and Agrarian Studies |
PSNP | Productive Safety Net Program |
SANWS | South African Government News Agency |
Stats SA | Statistics South Africa |
STATA | Statistical Software for data science |
UC | University of California |
USA | United States America |
WB | World Bank |
WFP | World Food Programme |
WRC | Water Research Commission |
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Selection Equation (LSU Support) | Outcome Equation (HFIAS) | ||
---|---|---|---|
LSU Beneficiaries | LSU Non-Beneficiaries | ||
Variable | Coefficient | Coefficient | Coefficient |
Age | 2.03 ** (1.012) | −1.849 *** (0.076) | 0.329 (0.237) |
Education | −0.136 ** (0.065) | 0.409 (0.369) | 0.421 * (0.221) |
Household | 0.192 (0.130) | 0.494 (0.548) | 0.124 (0.553) |
Experience | −0.415 (0.567) | −1.516 (2.561) | −0.609 (0.884) |
Land size | −0.205 (0.163) | 0.435 (0.423) | −0.032 *** (0.007) |
Credit | −0.273 ** (0.129) | −0.277 (0.646) | −0.589 (0.417) |
Savings | 0.153 (0.359) | 0.361 (0.493) | 0.289 (0.233) |
Livestock loss | −1.375 (1.539) | 0.205 (0.215) | 1.004 *** (0.349) |
Orientation | 0.166 *** (0.044) | −0.414 *** (0.151) | 3.569 * (1.966) |
Preparedness | −1.375 (1.575) | 0.022 (0.07) | 0.016 (0.021) |
Support | −3.522 * (1.876) | −4.354 ** (2.059) | −0.0762 (0.075) |
Coping diversity | 0.040 *** (0.014) | 0.739 ** (0.293) | −0.604 (0.889) |
Livestock sales | −0.134 *** (0.055) | −0.322 (0.257) | 1.278 *** (0.579) |
Constant | −2.616 * (1.499) | 0.151 ** (0.069) | 1.850 *** (0.079) |
rho0 | 0.083 (0.287) | ||
rho1 | −0.478 (0.296) | ||
/lns0 | −0.415 *** (0.151) | ||
/lns1 | 0.446 ** (0.225) | ||
/r0 | −1.111 *** (0.359) | ||
/r1 | 0.379 (0.382) | ||
Wald chi2 (11) | 76.69 *** | ||
Log likelihood | −382.684 | ||
LR test | 6.32 ** | ||
No. of obs. | 217 |
Treatment Effect Index | Household Food Insecurity Access Scale (HFIAS) | ||
---|---|---|---|
Estimate | Robust Std. Err. | z Value | |
Average Treatment Effect on the Treated (ATT) | 0.288 | 0.106 | 2.72 ** |
Average Treatment Effect on the Untreated (ATU) | −0.204 | 0.109 | −1.87 * |
Average Treatment Effect (ATE) | 0.556 | 0.128 | 4.34 *** |
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Bahta, Y.T.; Musara, J.P. Quantifying the Impact of COVID-19 Relief Vouchers Schemes on Food Security: Empirical Evidence Insights from South Africa. Land 2022, 11, 1431. https://doi.org/10.3390/land11091431
Bahta YT, Musara JP. Quantifying the Impact of COVID-19 Relief Vouchers Schemes on Food Security: Empirical Evidence Insights from South Africa. Land. 2022; 11(9):1431. https://doi.org/10.3390/land11091431
Chicago/Turabian StyleBahta, Yonas T., and Joseph P. Musara. 2022. "Quantifying the Impact of COVID-19 Relief Vouchers Schemes on Food Security: Empirical Evidence Insights from South Africa" Land 11, no. 9: 1431. https://doi.org/10.3390/land11091431
APA StyleBahta, Y. T., & Musara, J. P. (2022). Quantifying the Impact of COVID-19 Relief Vouchers Schemes on Food Security: Empirical Evidence Insights from South Africa. Land, 11(9), 1431. https://doi.org/10.3390/land11091431