| Literature DB >> 32785155 |
Vasilii Erokhin1, Tianming Gao1.
Abstract
The stability of food supply chains is crucial to the food security of people around the world. Since the beginning of 2020, this stability has been undergoing one of the most vigorous pressure tests ever due to the COVID-19 outbreak. From a mere health issue, the pandemic has turned into an economic threat to food security globally in the forms of lockdowns, economic decline, food trade restrictions, and rising food inflation. It is safe to assume that the novel health crisis has badly struck the least developed and developing economies, where people are particularly vulnerable to hunger and malnutrition. However, due to the recency of the COVID-19 problem, the impacts of macroeconomic fluctuations on food insecurity have remained scantily explored. In this study, the authors attempted to bridge this gap by revealing interactions between the food security status of people and the dynamics of COVID-19 cases, food trade, food inflation, and currency volatilities. The study was performed in the cases of 45 developing economies distributed to three groups by the level of income. The consecutive application of the autoregressive distributed lag method, Yamamoto's causality test, and variance decomposition analysis allowed the authors to find the food insecurity effects of COVID-19 to be more perceptible in upper-middle-income economies than in the least developed countries. In the latter, food security risks attributed to the emergence of the health crisis were mainly related to economic access to adequate food supply (food inflation), whereas in higher-income developing economies, availability-sided food security risks (food trade restrictions and currency depreciation) were more prevalent. The approach presented in this paper contributes to the establishment of a methodology framework that may equip decision-makers with up-to-date estimations of health crisis effects on economic parameters of food availability and access to staples in food-insecure communities.Entities:
Keywords: COVID-19; food inflation; food security; food self-sufficiency; food trade
Mesh:
Year: 2020 PMID: 32785155 PMCID: PMC7459461 DOI: 10.3390/ijerph17165775
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Variables included in the study.
| Index | Variable | Unit of Measure | Definition |
|---|---|---|---|
|
| Number of people with insufficient food consumption | Millions of people | According to the World Food Programme (WFP) Food Consumption Score, people with a poor or borderline level of food consumption. |
|
| Number of confirmed COVID-19 cases | Number of cases | Confirmed COVID-19 cases registered in a country per month. |
|
| Balance of food trade | USD million | The value of exports of food and agricultural products less imports of food and agricultural production. |
|
| Food inflation | Percentage | Month-on-month percentage change in the price of a standard basket of food as calculated from the national Consumer Price Index. |
|
| Currency exchange | Monetary units | Price of a unit of domestic currency in terms of USD. |
Source: Authors’ development.
Food security and COVID-19: Group total numbers in January–June 2020.
| Groups | Number of People with Insufficient Food Consumption | Number of Confirmed COVID-19 Cases | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| January 2020 | June 2020 | Change in January–June 2020 | January 2020 | June 2020 | Change in January–June 2020 | |||||||
| Mln People | % * | Mln People | % * | Mln People | p.p. ** | cases | % * | Cases | % * | Cases | p.p. ** | |
| Group 1 | 180.552 | 36.735 | 186.030 | 37.849 | +5.478 | +1.115 | 1 | - | 84,334 | 0.017 | +84,333 | +0.017 |
| Group 2 | 542.008 | 21.143 | 537.320 | 20.960 | −4.688 | −0.183 | 5 | - | 1,134,473 | 0.044 | +1,134,468 | +0.044 |
| Group 3 | 57.940 | 13.759 | 51.530 | 12.237 | −6.410 | −1.522 | 1 | - | 986,952 | 0.234 | 986,951 | +0.234 |
Note: * Portion in the total population of countries included in the group; ** change in percentage points; “+” parameter increment; “-” parameter decrement. Source: Authors’ development based on WFP’s Hunger Map portal [52].
Figure 1Countries included in the study. Note: 1 = Afghanistan; 2 = Algeria; 3 = Bangladesh; 4 = Bolivia; 5 = Botswana; 6 = Burkina Faso; 7 = Cambodia; 8 = Cameroon; 9 = Chad; 10 = Colombia; 11 = Cote d’Ivoire; 12 = Democratic Republic of the Congo; 13 = Dominican Republic; 14 = Ecuador; 15 = Ethiopia; 16 = Guatemala; 17 = Guinea; 18 = Haiti; 19 = India; 20 = Indonesia; 21 = Iran; 22 = Iraq; 23 = Jordan; 24 = Kenya; 25 = Kyrgyzstan; 26 = Lebanon; 27 = Libya; 28 = Mali; 29 = Mozambique; 30 = Namibia; 31 = Nepal; 32 = Niger; 33 = Nigeria; 34 = Pakistan; 35 = Peru; 36 = Philippines; 37 = Sierra Leone; 38 = Sri Lanka; 39 = Tajikistan; 40 = Tanzania; 41 = Tunisia; 42 = Turkey; 43 = Vietnam; 44 = Yemen; 45 = Zambia. Source: Authors’ development.
Study flow algorithm.
| Number of Stage | Stage | Method | Results |
|---|---|---|---|
| 1 | Cointegration | Stationary test by Augmented Dickey-Fuller (ADF) and Phillips-Perron (PP) methods. | As certainty of cointegration between |
| 2 | Interaction | Autoregressive distributed lag (ARDL), fully modified ordinary least squares (FMOLS) and dynamic ordinary least squares (DOLS). | Identification of short and long-run interactions between the variables individually in forty-five countries, generalization of the results across three groups of economies by income and seven groups by region. |
| 3 | Causality | Toda–Yamamoto (TY) causality test. | Detection of the causality directions between the variables. |
| 4 | Relative strength | Variance decomposition method. | Exploration of the strengths of inter-variables causal interactions, verification of potential causality impacts till the first quarter of 2021. |
Source: Authors’ development.
Bound test results.
| Group 1 | Group 2 | Group 3 | |||
|---|---|---|---|---|---|
| Country | F-Statistics | Country | F-Statistics | Country | F-Statistics |
| Afghanistan | 12.85 | Bangladesh | 7.85 | Algeria | 11.67 |
| Burkina Faso | 5.17 | Bolivia | 11.99 | Botswana | 8.16 |
| Chad | 9.43 | Cambodia | 6.24 | Colombia | 6.04 |
| Congo, Democratic Republic | 7.11 | Cameroon | 8.12 | Dominican Republic | 22.85 |
| Ethiopia | 20.10 | Cote d’Ivoire | 13.55 | Ecuador | 18.03 |
| Guinea | 4.17 | India | 4.22 | Guatemala | 8.27 |
| Haiti | 23.65 | Indonesia | 9.03 | Iran | 5.70 |
| Mali | 18.49 | Kenya | 14.11 | Iraq | 12.63 |
| Mozambique | 6.16 | Kyrgyzstan | 5.48 | Jordan | 9.89 |
| Nepal | 3.21 | Nigeria | 6.93 | Lebanon | 14.55 |
| Niger | 17.55 | Pakistan | 4.19 | Libya | 8.28 |
| Sierra Leone | 10.38 | Philippines | 4.76 | Namibia | 10.07 |
| Tajikistan | 14.14 | Tunisia | 20.58 | Peru | 4.76 |
| Tanzania | 6.32 | Vietnam | 6.29 | Sri Lanka | 7.10 |
| Yemen | 9.47 | Zambia | 13.90 | Turkey | 9.12 |
Source: Authors’ development.
Autoregressive distributed lag (ARDL) short-run estimates, group average.
| Groups | Parameters | ∆X1 | ∆X2 | ∆X3 | ∆X4 | ECM |
|---|---|---|---|---|---|---|
| Group 1 | Coefficient | 0.0432 | 0.1004 | 0.3678 | −0.0402 | −0.1137 |
| t-stat | 1.8935 | 2.8377 | 1.1605 | 2.7808 | −1.1794 | |
| Prob | 0.1063 | 0.1083 | 0.1619 | 0.1626 | 0.0034 | |
| Group 2 | Coefficient | 0.2241 | 0.1872 | 0.1329 | 0.2232 | 0.0892 |
| t-stat | 1.5251 | 1.5513 | 1.5460 | 0.8845 | 0.5580 | |
| Prob | 0.0611 | 0.1653 | 0.1537 | 0.1507 | 0.0234 | |
| Group 3 | Coefficient | 0.0441 | 0.2731 | −0.0372 | 0.1458 | −0.0380 |
| t-stat | 2.4477 | 2.4722 | 0.4654 | 0.3367 | 0.1839 | |
| Prob | 0.0435 | 0.0825 | 0.0547 | 0.1120 | 0.0181 |
X1 = number of confirmed COVID-19 cases; X2 = balance of food trade; X3 = food inflation; X4 = currency exchange. Source: Authors’ development.
Fully modified ordinary least squares (FMOLS) and Dynamic ordinary least squares (DOLS) tests results and Autoregressive distributed lag (ARDL) long-run estimates, group average.
| Groups | Parameters | X1 | X2 | X3 | X4 | Constant |
|---|---|---|---|---|---|---|
| Group 1 | ARDL coefficient | 0.0412 | 0.0933 | 0.3638 | −0.0214 | −2.7583 |
| ARDL t-stat | 2.1187 | 2.8695 | 1.3274 | 2.9730 | −1.1813 | |
| FMOLS coefficient | 0.0358 | 0.0390 | 0.3836 | 0.0112 | −2.3624 | |
| FMOLS t-stat | 1.8692 | 2.0291 | 1.3168 | 2.5642 | −1.2765 | |
| DOLS coefficient | 0.0364 | 0.0497 | 0.3895 | −0.0207 | −2.6475 | |
| DOLS t-stat | 1.9093 | 2.4646 | 1.3746 | 2.6088 | −1.0205 | |
| Group 2 | ARDL coefficient | 0.2192 | 0.2348 | 0.1627 | 0.2510 | 0.5579 |
| ARDL t-stat | 1.9379 | 1.7600 | 1.6597 | 0.9202 | 0.5980 | |
| FMOLS coefficient | 0.2211 | 0.2542 | 0.1783 | 0.2551 | 0.4373 | |
| FMOLS t-stat | 1.9656 | 1.6926 | 1.2906 | 1.7336 | 0.8624 | |
| DOLS coefficient | 0.2209 | 0.2348 | 0.1630 | 0.2507 | 0.3867 | |
| DOLS t-stat | 1.8771 | 1.7220 | 1.5830 | 0.9665 | 0.6168 | |
| Group 3 | ARDL coefficient | 0.0411 | 0.3182 | −0.0331 | 0.2105 | 1.0449 |
| ARDL t-stat | 2.9831 | 3.0380 | 0.6251 | 0.5951 | 0.4289 | |
| FMOLS coefficient | 0.0505 | 0.3349 | −0.0066 | 0.2321 | 1.1124 | |
| FMOLS t-stat | 2.8097 | 3.0461 | 0.6724 | 0.5461 | 0.4539 | |
| DOLS coefficient | 0.0460 | 0.3196 | −0.0213 | 0.2173 | 1.0031 | |
| DOLS t-stat | 2.9605 | 3.0479 | 0.6242 | 0.6168 | 0.4228 |
X1 = number of confirmed COVID-19 cases; X2 = balance of food trade; X3 = food inflation; X4 = currency exchange. Source: Authors’ development.
Toda-Yamamoto (TY) causality test results, group average.
| Groups | Parameters |
|
|
|
|
|
|
|
|
|---|---|---|---|---|---|---|---|---|---|
| Group 1 | Test statistics | 3.17 | 7.84 | 2.15 | 7.31 | 2.09 | 10.11 | 1.80 | 5.67 |
| P value | 0.40 | 0.19 | 0.52 | 0.14 | 0.53 | 0.16 | 0.61 | 0.31 | |
| Group 2 | Test statistics | 0.52 | 6.03 | 0.58 | 5.87 | 0.80 | 6.95 | 0.51 | 3.68 |
| P value | 0.60 | 0.12 | 0.57 | 0.11 | 0.52 | 0.06 | 0.65 | 0.24 | |
| Group 3 | Test statistics | 0.33 | 9.29 | 0.90 | 9.03 | 1.09 | 5.12 | 0.71 | 5.06 |
| P value | 0.73 | 0.09 | 0.45 | 0.05 | 0.37 | 0.13 | 0.51 | 0.18 |
Y = number of people with insufficient food consumption; X1 = number of confirmed COVID-19 cases; X2 = balance of food trade; X3 = food inflation; X4 = currency exchange. Source: Authors’ development.
Variance decomposition of Y over a nine-period (three quarters) horizon, group average.
| Groups | Periods | Standard Error | Y | X1 | X2 | X3 | X4 |
|---|---|---|---|---|---|---|---|
| Group 1 | September 2020 | 0.009763 | 94.603805 | 1.042113 | 1.627254 | 1.742278 | 0.984550 |
| December 2020 | 0.014191 | 88.846093 | 2.563652 | 2.744643 | 3.416632 | 2.428979 | |
| March 2021 | 0.019954 | 82.571860 | 3.858422 | 4.232789 | 5.307862 | 4.029067 | |
| Group 2 | September 2020 | 0.008970 | 94.760896 | 1.092635 | 1.181600 | 2.105061 | 0.859808 |
| December 2020 | 0.013314 | 88.052805 | 2.499151 | 2.535821 | 4.752614 | 2.159609 | |
| March 2021 | 0.018051 | 82.158020 | 3.442063 | 3.901844 | 7.457695 | 3.040378 | |
| Group 3 | September 2020 | 0.012420 | 94.571379 | 1.733111 | 2.041619 | 0.805161 | 0.848729 |
| December 2020 | 0.018622 | 87.448534 | 3.409666 | 4.909030 | 1.569857 | 2.662913 | |
| March 2021 | 0.024269 | 81.049395 | 5.149831 | 7.403395 | 2.325381 | 4.071998 |
Y = number of people with insufficient food consumption; X1 = number of confirmed COVID-19 cases; X2 = balance of food trade; X3 = food inflation; X4 = currency exchange. Source: Authors’ development.
Figure 2Summary of X1–4 effects on Y across three groups of countries. Note: Red = strong influence; yellow = medium influence; green = weak influence. Source: Authors’ development.