New Evidence Using a Dynamic Panel Data Approach: Cereal Supply Response in Smallholder Agriculture in Ethiopia
Abstract
:1. Introduction
2. Methodology
2.1. Data Compilation
2.2. Theoretical Framework
2.3. The Nerlovian Supply Response Model
2.4. Estimation Strategy
- = area of the crop c at time t for household i
- = current price and price lagged by one period for the crop c for household i
- = other exogenous variables (such as the total farm size, average rainfall, land quality, education, prices of other crops, and crop dummies)
- = area lagged by one period for the crop c for household i
- t = production year under consideration
- = error term of the crop c at time t for household i.
- = output of the crop c at time t for household i
- = current price and price lagged by one period for the crop c for household i
- = other exogenous shifters (such as the area of the crop, average rainfall, land quality, education, prices of other crops, and crop dummies)
- = output lagged by one period for the crop c for household i
- t = production year under consideration
- = error term of the crop c at time t for household i.
3. Results and Discussion
3.1. The Trends of Price, Area, and Output of Major Cereals in Ethiopia from 1994 to 2009
3.2. Estimation Results of the Nerlovian Adaptive-Expectation and Partial-Adjustment Models
3.3. Short-Term and Long-Term Elasticities and Adjustment Coefficients of Major Crops
4. Conclusions and Policy Implications
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Derivations of the Nerlovian Expectation and Adjustment Coefficients
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1 | A woreda is a governmental administrative unit below zones in a given region and is equivalent to the designation of a district elsewhere. |
2 | The Debre Birhan woreda in the Amhara region is large and includes four FAs that were included in the sample. |
3 | The average land quality index is calculated as a product of the natural conditions of two indices that assign a value of 3 if the slope is flat and a value of 3 if the land is fertile in terms of mineral content. A high index value indicates better soil fertility. The average land quality is best in terms of slope and mineral content when given a value of 9, with a value of 1 indicating the lowest land quality evaluated at the household level. |
4 | The agricultural household model is another choice for characterizing the complexity of household supply behaviors in response to price incentives (Singh et al. 1986). This alternative approach requires information on household consumption, input prices, and the input quantities used for each crop (e.g., labor). The Nerlovian expectation model is used here because the primary concern of this study is to estimate the production response to the output price incentive and nonprice factors rather than the overall behavioral responses. |
5 | Cereals are annual crops, while most cash crops are perennial crops. Cereals need one season until harvest and live for only one season during each year. Perennial crops require two or more seasons until the first harvest, after which they can be harvested for several years until they expire. For example, Coffea Arabica, which is known as Arabica coffee, bears fruit after three to five years and produces fruit for approximately 50 to 60 years (for a maximum of 100 years). Chat plants yield the first harvest in 2 to 3 years. Chat harvesting can occur 2–3 times a year for 50 or more years. According to Tenaye and Geta (2009), mature enset plants (4 to 7 years old) are harvested mainly to prepare staples known as kocho and bulla, whereas immature enset plants (less than 2 years old) are harvested to prepare amicho. All of these perennial crop areas require a long period to be converted to other crops and are much less flexible than annual crops in terms of shifting area coverage. |
6 | The area decision is, to a large extent, under the control of the farmer, while the yield responses can be affected by the inputs used and the weather conditions, as evidenced by different tests (autoregressive, over-identification restrictions, exogeneity of instruments, and unobserved heterogeneity) and economic theories. |
Variable Code | Description | % With a Value of 1 | Mean ± SD |
---|---|---|---|
Sex | 1 if the household head is male and 0 otherwise | 79.87 | |
Family size | Total number of family members | 6.80 ± 3.04 | |
Age | Age of the household head (years) | 49.74 ± 15.39 | |
Education | 1 if the household head is literate and 0 otherwise | 37.57 | |
Farm size | Total farm size operated by the household (hectares) | 1.51 ± 1.18 | |
Soil fertility | 1 if the fertility status is good and 0 otherwise | 47.08 | |
Labor | Adult equivalent unit (AEU) | 4.07 ± 2.22 | |
TLU | Tropical livestock unit owned (TLU) | 3.42 ± 4.04 | |
Fertilizer | Total real value of fertilizer expenditure of the household (Birr) | 145.33 ± 238.35 | |
Credit | Total real value of credit taken by the household (Birr) | 52.49 | |
Extension | 1 if the household is visited by an extension agent for technical support and 0 otherwise | 50.40 | |
Hoe | The number of a hoe(s) owned by the household | 1.26 ± 1.56 | |
AEZ | Agroecological zone: 1 if the AEZ is the northern highlands, 2 for the enset-growing area (hoe farming), 3 for Hararghe (oxen farming), 4 for Arussi/Bale and 5 for the central highlands | 14,33,8,13,32 | |
Precipitation | Rainfall amount (mm) | 85.64 ± 28.51 | |
Land quality | Land quality index | 6.49 ± 2.29 | |
Output value | Sum of the real values of crops and livestock (Birr) | 3121.46 ± 4211.12 |
Area Response (in hectares (ha)) | Yield Response (in Real Birr Value) | |||||
---|---|---|---|---|---|---|
(1) | (2) | (3) | (4) | (5) | (6) | |
Variables | Teff Area | Barley Area | Wheat Area | Teff Value | Barley Value | Wheat Value |
Lagged Dep. Variable (ha) | 0.249 *** | −0.099 | 0.244 * | 0.180 *** | −0.542 *** | −0.148 * |
(0.079) | (0.398) | (0.144) | (0.067) | (0.176) | (0.082) | |
Current teff price (real price per kg (birr)) | −4.381 ** | −7.701 | 6.566 * | −19.463 *** | 14.524 ** | 19.434 ** |
(2.165) | (7.480) | (3.950) | (4.989) | (5.884) | (7.806) | |
Lagged teff price (real price per kg (birr)) | 5.460 *** | 12.774 * | −4.098 | 11.386 *** | −6.321 * | −2.253 |
(1.860) | (6.834) | (3.091) | (2.746) | (3.355) | (5.608) | |
Current barley price (real price per kg (birr)) | 0.044 | 0.876 ** | 0.0289 | −0.290 | 3.015 *** | 0.333 |
(0.284) | (0.422) | (0.270) | (0.312) | (0.290) | (0.355) | |
Lagged barley price (real price per kg (birr)) | −0.055 | 0.443 ** | 0.16 | 0.236 ** | 1.083 *** | 0.361 *** |
(0.114) | (0.187) | (0.122) | (0.120) | (0.206) | (0.127) | |
Current wheat price (real price per kg (birr)) | −0.158 | −0.879 * | −0.216 | −1.300 *** | −0.516 * | 0.827 *** |
(0.200) | (0.467) | (0.168) | (0.376) | (0.307) | (0.243) | |
Lagged wheat price (real price per kg (birr)) | −0.0687 | −0.455 ** | −0.069 | −0.225 * | 0.041 | 0.025 |
(0.069) | (0.179) | (0.116) | (0.128) | (0.189) | (0.192) | |
Farm size (ha) | −1.512 | 10.84 ** | 6.204 ** | |||
(3.056) | (4.975) | (3.136) | ||||
Lagged farm size (ha) | −1.910 ** | −7.780 ** | 1.1 | |||
(0.943) | (3.551) | (1.253) | ||||
Area of the crop (ha) | 0.248 | −0.673 ** | 0.276 | |||
(0.365) | (0.264) | (0.604) | ||||
Lagged area of the crop (ha) | −0.071 | 0.611 ** | 0.941 *** | |||
(0.163) | (0.300) | (0.362) | ||||
Rainfall amount (mm) | 2.755 *** | 5.037 | −1.790 * | −1.567 | −0.442 | −0.212 |
(0.717) | (3.335) | (0.994) | (1.209) | (0.567) | (1.237) | |
Land quality index | 0.127 | 0.652 ** | −0.155 | 1.371 *** | −1.657 *** | −2.200 *** |
(0.238) | (0.304) | (0.236) | (0.452) | (0.264) | (0.447) | |
Education dummy | 1.335 | 10.79 | 6.334 | 18.473 *** | −0.005 | −10.345 ** |
(4.233) | (8.926) | (4.076) | (5.340) | (1.975) | (4.004) | |
Fertilizer (birr) | 0.389 * | |||||
(0.209) | ||||||
Teff dummy | −10.39 ** | 3.033 | 2.660 | 13.388 *** | ||
(4.951) | (2.162) | (1.666) | (4.321) | |||
Barley dummy | −0.500 | 0.391 | 2.775 | −9.021 *** | ||
(1.232) | (1.634) | (2.242) | (1.903) | |||
Wheat dummy | 2.642 * | 2.291 | −1.122 | 1.121 | ||
(1.506) | (5.559) | (2.120) | (2.249) | |||
Time dummy (2006) | 5.872 ** | 8.867 | −9.403 * | 22.699 *** | −28.035 *** | −25.995 *** |
(2.779) | (9.588) | (5.015) | (5.912) | (8.961) | (9.719) | |
Constant | −17.47 *** | −29.47 * | −2.709 | |||
(4.447) | (17.480) | (5.948) | ||||
Arellano-Bond test of AR(1) (p-value) | 0.016 | 0.003 | 0.064 | 0.000 | 0.000 | 0.000 |
Sargan test of overid. restrictions (p-value) | 0.096 | 0.353 | 0.204 | 0.515 | 0.161 | 0.151 |
Hansen test of overid. restrictions (p-value) | 0.226 | 0.702 | 0.722 | 0.514 | 0.000 | 0.012 |
Hansen test of exogeneity of instruments (p-value) | 0.266 | 0.691 | 0.196 | 0.689 | 0.461 | 0.006 |
Hansen test of exogeneity of instrument subsets (p-value) | 0.219 | 0.567 | 0.939 | 0.247 | 0.000 | 0.631 |
F-test of overall model fitness (p-value) | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 |
Number of instruments | 20 | 20 | 20 | 23 | 22 | 21 |
Number of households | 1323 | 1323 | 1323 | 1323 | 1323 | 1323 |
Number of observations | 3170 | 3170 | 3170 | 3170 | 3170 | 3170 |
Particulars | Teff | Barley | Wheat | ||||||
---|---|---|---|---|---|---|---|---|---|
Area | Yield | Supply | Area | Yield | Supply | Area | Yield | Supply | |
Short term | 5.46 *** | 11.39 *** | 16.85 | 0.44 ** | 1.08 *** | 1.52 | −0.07 | 0.03 | −0.04 |
Long term | 7.27 *** | 13.89 *** | 21.16 | 0.40 ** | 0.70 *** | 1.10 | −0.10 | 0.02 | −0.08 |
Adjustment | 0.75 *** | 0.82 *** | 1.57 | 1.10 *** | 1.54 *** | 2.64 | 0.76 *** | 1.15 *** | 1.90 |
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Tenaye, A. New Evidence Using a Dynamic Panel Data Approach: Cereal Supply Response in Smallholder Agriculture in Ethiopia. Economies 2020, 8, 61. https://doi.org/10.3390/economies8030061
Tenaye A. New Evidence Using a Dynamic Panel Data Approach: Cereal Supply Response in Smallholder Agriculture in Ethiopia. Economies. 2020; 8(3):61. https://doi.org/10.3390/economies8030061
Chicago/Turabian StyleTenaye, Anbes. 2020. "New Evidence Using a Dynamic Panel Data Approach: Cereal Supply Response in Smallholder Agriculture in Ethiopia" Economies 8, no. 3: 61. https://doi.org/10.3390/economies8030061
APA StyleTenaye, A. (2020). New Evidence Using a Dynamic Panel Data Approach: Cereal Supply Response in Smallholder Agriculture in Ethiopia. Economies, 8(3), 61. https://doi.org/10.3390/economies8030061