Can Cooperative Supports and Adoption of Improved Technologies Help Increase Agricultural Income? Evidence from a Recent Study
Abstract
:1. Introduction
2. Research Methodology
- (i)
- Establish a unified analysis outline to examine the membership of growers in agricultural cooperatives (CS, hereafter described as cooperatives) and adoption of expense-reduction farming technologies (hereafter referred to as TA);
- (ii)
- Use analytical approaches (PSM and DSM) to correct the selection bias of farmer’s decision-making to attain consistent empirical findings;
- (iii)
- Study the influence of social capital on farmer’s decision-making.
2.1. Agriculture and Wheat Production in the Research Area
2.2. Study Area Description and Data Collection
2.3. Empirical Procedure
3. Results and Discussion
3.1. Descriptive and Summary Statistics for Key Variables
3.2. The Impact of Wheat Grower’s Decision-Making on Income Growth
3.3. The Influence of Farmer’s Decision-Making on Agricultural Income
3.4. Influence of Incomes on Farmer’s Decision-Making
3.5. The Influence of Low-Income Farmer’s Decision-Making on Poverty Reduction
3.6. The Effect of Low-Income Farmer’s Decision-Making on Their Agricultural Incomes
3.7. Poverty Reduction Impact of Low-Income Farmer’s Decision-Making
4. Conclusions Policy Recommendations and Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Name of Province | Name of Districts | No. of Tehsils | No. of Union Council | No. of Village | No. of Samples |
---|---|---|---|---|---|
Khyber Pakhtunkhwa | Dera Ismail Khan | 1 | 1 | 4 | 125 |
Charsadda | 1 | 1 | 4 | 124 | |
Mansehra | 1 | 1 | 4 | 124 | |
Swat | 1 | 1 | 4 | 125 | |
Total | 4 | 4 | 4 | 16 | 498 |
Cooperative Support | Agricultural Technologies Adoption | |
---|---|---|
Not Adopted | Adopted | |
Not supported | 139 | 46 |
Supported | 195 | 118 |
Category of Variables | Variables Name | Description | Mean (S.D) |
---|---|---|---|
Dependent Variables | Agricultural Incomes (AI) | Natural log of farmer’s annual agricultural income in 2021 (PKR) | 10.99 (1.19) |
Decision Variables (DV) | Cooperatives supports (CS) | 1 = cooperative supports, 0= otherwise | 0.68 (0.32) |
Technology Adoption (TA) 1 | 1 = improved technologies adopters, 0= otherwise | 0.28 (0.13) | |
Social Network (SN) | Party Membership (PM) | 1 = farmers are a political party member, 0 otherwise | 0.19 (0.39) |
Sales Range (SR) | Scope of agricultural products sales: 5 = resident of province, 3 = resident of city, 2 = hometown; 1 = resident of village | 4.88 (2.15) | |
Cooperation Degree (CD) | The cooperation level among wheat growers: 4 = high, often support each other; 3 = higher, occasionally support each other; 2 = low, support each other occasionally; Other; 1 = very low, basically not cooperated | 2.85 (2.14) | |
Social Trust (ST) | Government Support (GS) | The government support level for growers’ cooperatives: 4 = very high, 3 = high, 2 = fair, 1 = low | 3.29 (1.25) |
Village Education (VE) | The proportion of the population with high school education or above in the whole village (%) | 24.0 (15.76) | |
Agricultural Insurance (AI) | 1 = If wheat growers bought agricultural insurance, 0 = otherwise | 0.41 (0.49) | |
Social Participation (SP) | Agricultural Training (AT) | 1 = If the wheat grower has received agricultural training, 0 = otherwise | 0.74 (0.44) |
Agricultural Information Service (AIS) | 1 = If wheat grower gained agricultural intelligence service, 0 = otherwise | 0.81 (0.40) | |
Agricultural Skill (AS) | 1 = If wheat grower has farming skills, 0 = otherwise | 0.54 (0.50) | |
Agricultural Input (AI) | Agricultural Labor Force (ALF) | Number of household members who participated in farming | 2.62 (1.02) |
Labor Share (LS) | Labor force as a percentage of household members (%) | 0.61 (0.20) | |
Farmland Area (FA) | Farmland area managed by growers (ha) | 2.35 (0.79) | |
Material Input (MI) 2 | The natural logarithm of the material input cost (PKR), counting the acquisition of agricultural production materials. | 9.62 (1.48) | |
Agricultural Fixed Assets (AFA) | The natural log of the present cost of agricultural technology apparatus (PKR) | 4.78 (4.13) | |
Agricultural Loan (AL) | The grower natural logarithm agricultural loan (PKR) in 2021 | 3.35 (4.78) | |
Farmer Characteristics (FC) | Gender (G) | 1 = If male, 0 = otherwise | 0.83 (0.39) |
Age (A) | Respondents’ age (years) | 48.29 (12.78) | |
Education (E) | Respondents’ education level: 5 = College and above, 4 = High school, 3 = Secondary, 2 = Elementary, 1 = Non | 3.03 (0.90) | |
Migrant Workers (MW) | Number of family non-agricultural migrant labor | 0.49 (0.70) | |
Off-Farm Income (OFI) | Percentage of off-farm income in total family income (%) | 0.21 (0.25) | |
Economic Status (ES) | The financial position of growers: 5 = very rich, 4 = comparatively rich, 3 = average, 2 = comparatively poor, 1 = very poor | 3.93 (0.80) | |
Location Characteristics (LC) | Market Distance (MD) | Distance between farm and market (km) | 6.65 (6.05) |
Village Terrain (VT) | 1 = if growers of the village live in the mountain region, 0 = otherwise | 0.32 (0.13) |
Category of Variables | Variables Name | Cooperative Supports | Technology Adoption |
---|---|---|---|
dy/dx (S.E) | dy/dx (S.E) | ||
SN | PM | 0.038 (0.051) | 0.036 (0.039) |
SR | 0.019 (0.015) | 0.033 *** (0.013) | |
CD | −0.007 (0.021) | 0.024 (0.018) | |
ST | GS | 0.023 (0.016) | 0.017 (0.013) |
VE | 0.004 *** (0.001) | 0.005 *** (0.001) | |
AI | −0.020 (0.041) | 0.073 ** (0.034) | |
SP | AT | 0.228 *** (0.048) | 0.024 (0.039) |
AIS | 0.228 *** (0.052) | −0.031 (0.041) | |
AS | 0.071 * (0.042) | 0.065 * (0.034) | |
AI | LS | 0.087 (0.125) | 0.120 (0.085) |
FA | −0.022 (0.027) | 0.031 (0.024) | |
MI | 0.479 (0.121) *** | 0.027 (0.062) | |
AFA | 0.011 (0.009) | 0.011 (0.005) | |
AL | 0.002 (0.006) | 0.001 (0.004) | |
FC | G | 0.103 * (0.058) | 0.033 (0.063) |
A | −0.006 ** (0.002) | 0.001 (0.003) | |
E | −0.018 (0.026) | –0.008 (0.024) | |
MW | −0.007 (0.028) | 0.020 (0.031) | |
OFI | −0.437 *** (0.087) | −0.303 *** (0.088) | |
LC | MD | −0.008 ** (0.003) | −0.001 (0.003) |
VT | 0.148 *** (0.055) | 0.012 (0.045) | |
N | 498 | ||
Log-likelihood | −744.072 | ||
p | 0.299 *** |
Category of Variables | Variables Name | Agricultural Income |
---|---|---|
Coefficients (S.E) | ||
DV | CS | 0.387 * (0.217) |
TA | 1.080 *** (0.171) | |
AI | ALF | 0.021 (0.039) |
FA | 0.038 (0.052) | |
MI | 0.568 *** (0.030) | |
AFA | 0.012 (0.008) | |
AL | 0.004 (0.008) | |
FC | G | 0.105 (0.123) |
A | 0.003 (0.005) | |
E | 0.013 (0.049) | |
MW | −0.054 (0.067) | |
ES | −0.080 * (0.047) | |
LC | MD | 0.008 (0.007) |
VT | −0.145 * (0.087) | |
CONST | 4.810 *** (0.477) |
Category of Variables | Rural Farmer’s Decisions | Matching Algorithms | Treated | Controls | ATT | Bootstrap S. E | Range of Change (%) | Critical Level of Hidden Bias (Γ) |
---|---|---|---|---|---|---|---|---|
DV | CS | NNM (n = 4) | 11.1239 | 10.8287 | 0.2863 * | 0.170 | 2.73 | [1.35–1.4] |
KBM (bandwidth = 0.06) | 11.1139 | 10.8199 | 0.2939 * | 0.155 | 2.72 | [1.35–1.4] | ||
RM | 11.1139 | 10.8042 | 0.3096 ** | 0.152 | 2.87 | [1.45–1.5] | ||
TA | NNM (n = 4) | 11.1837 | 10.8820 | 0.3017 * | 0.171 | 2.78 | [1.35–1.4] | |
KBM (bandwidth = 0.06) | 11.1832 | 10.9515 | 0.2316 * | 0.139 | 2.11 | [1.25–1.3] | ||
RM | 11.1382 | 10.9449 | 0.2382 * | 0.143 | 2.18 | [1.25–1.3] |
Category of Variables | Variables Name | Cooperative Supports | Technology Adoption |
---|---|---|---|
dy/dx (S.E) | dy/dx (S.E) | ||
SN | PM | 0.021 (0.083) | –0.098 (0.092) |
SR | 0.019 (0.024) | 0.021 (0.022) | |
CD | −0.010 (0.031) | 0.086 *** (0.031) | |
ST | GS | 0.046 * (0.025) | 0.044 * (0.023) |
VE | 0.003 (0.002) | 0.006 *** (0.002) | |
AI | −0.004 (0.070) | 0.107 * (0.059) | |
SP | AT | 0.137 ** (0.067) | 0.024 (0.070) |
AIS | 0.207 *** (0.063) | –0.095 (0.063) | |
AS | −0.083 (0.062) | 0.022 (0.055) | |
AI | LS | 0.231 (0.159) | 0.072 (0.151) |
FA | 0.005 (0.044) | 0.071 * (0.042) | |
FC | G | 0.135 * (0.078) | –0.006 (0.075) |
A | −0.005 (0.004) | –0.003 (0.004) | |
E | −0.043 (0.036) | 0.028 (0.036) | |
MW | −0.005 (0.046) | 0.007 (0.045) | |
OFI | −0.528 *** (0.126) | –0.322 ** (0.136) | |
LC | MD | −0.009 (0.007) | 0.004 (0.006) |
VT | 0.179 * (0.092) | –0.028 (0.080) | |
N | 182 | ||
Log pseudo-likelihood | −321.070 | ||
p | 0.414 *** |
Category of Variables | Variables Name | Agricultural Income |
---|---|---|
Coefficients (S.E) | ||
DV | CS | 0.707 *** (0.232) |
TA | 0.777 *** (0.257) | |
AI | ALF | −0.006 (0.049). |
FA | 0.114 (0.085) | |
MI | 0.664 *** (0.040) | |
AFA | 0.013 (0.012) | |
AL | 0.016 (0.010) | |
FC | G | 0.270 * (0.153) |
A | 0.007 (0.007) | |
E | −0.017 (0.073) | |
MW | −0.001 (0.089) | |
ES | −0.064 (0.060) | |
LC | MD | 0.012 (0.013) |
VT | −0.075 (0.136) | |
CONST | 2.998 *** (0.674) |
Category of Variables | Rural Farmer’s Decisions | Matching Algorithms | Treated | Controls | ATT | Bootstrap S. E | Range of Change (%) | Critical Level of Hidden Bias (Γ) |
---|---|---|---|---|---|---|---|---|
DV | CM | NNM (n = 4) | 11.8500 | 10.2700 | 0.5901 * | 0.331 | 5.76 | 1.8–1.88 |
KBM (bandwidth = 0.06) | 11.8500 | 10.2907 | 0.5693 * | 0.320 | 5.55 | 1.7–1.84 | ||
RM | 10.8600 | 10.3357 | 0.5243 * | 0.307 | 5.08 | 1.57–1.7 | ||
TA | NNM (n = 4) | 11.0757 | 10.5784 | 0.4973 * | 0.282 | 4.70 | 1.36–1.5 | |
KBM (bandwidth = 0.06) | 10.9760 | 10.5052 | 0.4708 * | 0.284 | 4.48 | 1.5–1.37 | ||
RM | 10.9760 | 10.5174 | 0.4586 * | 0.268 | 4.36 | 1.37–1.6 |
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Khan, N.; Ray, R.L.; Kassem, H.S.; Ihtisham, M.; Siddiqui, B.N.; Zhang, S. Can Cooperative Supports and Adoption of Improved Technologies Help Increase Agricultural Income? Evidence from a Recent Study. Land 2022, 11, 361. https://doi.org/10.3390/land11030361
Khan N, Ray RL, Kassem HS, Ihtisham M, Siddiqui BN, Zhang S. Can Cooperative Supports and Adoption of Improved Technologies Help Increase Agricultural Income? Evidence from a Recent Study. Land. 2022; 11(3):361. https://doi.org/10.3390/land11030361
Chicago/Turabian StyleKhan, Nawab, Ram L. Ray, Hazem S. Kassem, Muhammad Ihtisham, Badar Naseem Siddiqui, and Shemei Zhang. 2022. "Can Cooperative Supports and Adoption of Improved Technologies Help Increase Agricultural Income? Evidence from a Recent Study" Land 11, no. 3: 361. https://doi.org/10.3390/land11030361
APA StyleKhan, N., Ray, R. L., Kassem, H. S., Ihtisham, M., Siddiqui, B. N., & Zhang, S. (2022). Can Cooperative Supports and Adoption of Improved Technologies Help Increase Agricultural Income? Evidence from a Recent Study. Land, 11(3), 361. https://doi.org/10.3390/land11030361