The Heterogeneous Impact of Sectoral Foreign Aid Inflows on Sectoral Growth: SUR Evidence from Selected Sub-Saharan African and MENA Countries
Abstract
:1. Introduction
2. Literature Review
3. Methodology
4. Results and Discussion
4.1. Data Processing
4.2. Core Estimation Results and Discussion
4.2.1. The First Specification Estimation’s Results and Discussion
4.2.2. The Second Specification Estimation’s Results and Discussion
4.2.3. The Third Specification Estimation’s Results and Discussion
5. Conclusions and Implications
Policy Implications
6. Limitations and Future Directions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. List of Aid Categories Used to Construct the Allocated Sectoral-Aids Measure Based on Their Corresponding Potential Scope of Sectoral Growth from Creditor Reporting System
Aids to Service Growth | Aids to Agricultural Growth | Aids to Industrial Growth |
---|---|---|
1-Social infrastructure and Services, Total
| 1-Agriculture, Forestry, and fishing Total
3-General Environment Protection, Total 4-Education Total 5-Health, Total 6-Water and Sanitation Supply 7-Economic Infrastructure and, service Total 8-Communication, Total 9-Energy, Total | 1-Industry, Mining and Construction, Total
3-Health, Total 4-Economic Infrastructure and, service Total 5-Communication, Total 6-Energy, Total |
Appendix B. Definition of ‘Early-Impact’ Aid and List of Clemens’ Classification of Included Early Impact Aids Categories Measure
CRS 5-Digit Code of Sector’ Category | CRS Sector Purpose | USD mn | % | Category |
---|---|---|---|---|
21020 | Road transport | 12,532 | 3.4 | E |
21030 | Rail transport | 4267 | 1.1 | E |
21040 | Water transport | 1419 | 0.4 | E |
21050 | Air transport | 2271 | 0.6 | E |
21061 | Storage | 3 | 0.0 | E |
22020 | Telecommunications | 653 | 0.2 | E |
22040 | Information and communication technology | 83 | 0.0 | E |
23020 | Power generation/non-renewable sources | 1944 | 0.5 | E |
23030 | Power generation/renewable sources | 718 | 0.2 | E |
23040 | Electrical transmission/distribution | 5712 | 1.5 | E |
23050 | Gas distribution | 806 | 0.2 | E |
23061 | Oil-fired power plants | 55 | 0.0 | E |
23062 | Gas-fired power plants | 1959 | 0.5 | E |
23063 | Coal-fired power plants | 795 | 0.2 | E |
23064 | Nuclear power plants | 160 | 0.0 | E |
23065 | Hydro-electric power plants | 1812 | 0.5 | E |
23066 | Geothermal energy | 255 | 0.1 | E |
23067 | Solar energy | 176 | 0.0 | E |
23068 | Wind power | 457 | 0.1 | E |
23070 | Biomass | 31 | 0.0 | E |
24020 | Monetary institutions | 297 | 0.1 | E |
24030 | Formal sector financial intermediaries | 1366 | 0.4 | E |
24040 | Informal/semi-formal financial intermediaries | 896 | 0.2 | E |
24081 | Education/training in banking and financial services | 41 | 0.0 | E |
25010 | Business support services and institutions | 4133 | 1.1 | E |
25020 | Privatisation | 462 | 0.1 | E |
31120 | Agricultural development | 2502 | 0.7 | E |
31130 | Agricultural land resources | 681 | 0.2 | E |
31140 | Agricultural water resources | 2423 | 0.7 | E |
31150 | Agricultural inputs | 318 | 0.1 | E |
31161 | Food crop production | 552 | 0.1 | E |
31162 | Industrial crops/export crops | 115 | 0.0 | E |
31163 | Livestock | 446 | 0.1 | E |
31164 | Agrarian reform | 68 | 0.0 | E |
31166 | Agricultural extension | 102 | 0.0 | E |
31191 | Agricultural services | 270 | 0.1 | E |
31192 | Plant/post-harvest prot. and pest ctrl | 141 | 0.0 | E |
31193 | Agricultural financial services | 271 | 0.1 | E |
31194 | Agricultural co-operatives | 128 | 0.0 | E |
31195 | Livestock/veterinary services | 85 | 0.0 | E |
31220 | Forestry development | 1306 | 0.4 | E |
31291 | Forestry services | 8 | 0.0 | E |
31320 | Fishery development | 383 | 0.1 | E |
31391 | Fishery services | 197 | 0.1 | E |
32120 | Industrial development | 213 | 0.1 | E |
32130 | Sme development | 1903 | 0.5 | E |
32140 | Cottage industries and handicraft | 41 | 0.0 | E |
32161 | Agro-industries | 214 | 0.1 | E |
32162 | Forest industries | 20 | 0.0 | E |
32163 | Textiles–leather and substitutes | 23 | 0.0 | E |
32164 | Chemicals | 15 | 0.0 | E |
32165 | Fertiliser plants | 3 | 0.0 | E |
32166 | Cement/lime/plaster | 32 | 0.0 | E |
32167 | Energy manufacturing | 936 | 0.3 | E |
32168 | Pharmaceutical production | 7 | 0.0 | E |
32169 | Basic metal industries | 10 | 0.0 | E |
32170 | Non-ferrous metal industries | 1 | 0.0 | E |
32171 | Engineering | 107 | 0.0 | E |
32172 | Transport equipment industry | 176 | 0.0 | E |
32220 | Mineral prospection and exploration | 166 | 0.0 | E |
32261 | Coal | 5 | 0.0 | E |
32262 | Oil and gas | 1539 | 0.4 | E |
32263 | Ferrous metals | 0 | 0.0 | E |
32264 | Non-ferrous metals | 70 | 0.0 | E |
32265 | Precious metals/materials | 1 | 0.0 | E |
32266 | Industrial minerals | 3 | 0.0 | E |
32267 | Fertiliser minerals | 1 | 0.0 | E |
32268 | Off-shore minerals | 0 | 0.0 | E |
33110 | Trade policy and admin. mgmt. | 1849 | 0.5 | E |
51010 | General budget support | 21,170 | 5.7 | E |
53030 | Import support (capital goods) | 360 | 0.1 | E |
53040 | Import support (commodities) | 491 | 0.1 | E |
60010 | Action relating to debt | 550 | 0.1 | E |
60020 | Debt forgiveness | 45,812 | 12.3 | E |
60030 | Relief of multi-lateral debt | 1326 | 0.4 | E |
60040 | Rescheduling and refinancing | 11,057 | 3.0 | E |
60061 | Debt for development swap | 130 | 0.0 | E |
60062 | Other debt swap | 2 | 0.0 | E |
Appendix C. Descriptive Statistics
Variable | Mean | Std. Dev. | Min | Max | Skewness | Kurtosis |
---|---|---|---|---|---|---|
Industrial growth | 25.996 | 13.573 | 2.073 | 84.796 | 1.763 | 6.295 |
Services growth | 44.929 | 11.380 | 10.569 | 77.020 | 0.007 | 2.828 |
Agriculture growth | 23.437 | 15.005 | 1.954 | 79.042 | 0.671 | 3.342 |
Aids to services growth | 8.150 | 8.594 | 0.047 | 71.000 | 2.556 | 13.001 |
Aids to agriculture growth | 0.359 | 0.498 | −0.579 | 5.770 | 3.279 | 24.028 |
Aids to industry growth | 0.067 | 0.287 | 0.000 | 5.260 | 11.018 | 159.304 |
Employment | 3.213 | 3.136 | 0.066 | 18.138 | 1.965 | 7.757 |
Trade Openness | 72.155 | 33.216 | 0.027 | 311.354 | 1.743 | 10.936 |
Domestic Saving | 10.739 | 21.282 | −141.974 | 74.621 | −1.774 | 14.640 |
Government Spending | 14.408 | 6.149 | −2.742 | 55.275 | 0.829 | 6.723 |
Government Effectiveness | 10.739 | 19.930 | 0.510 | 83.060 | 0.572 | 2.206 |
Political Stability | 27.290 | 20.289 | 0.000 | 93.750 | 0.584 | 2.400 |
Private Capital | 26.462 | 33.052 | −82.892 | 516.764 | 11.010 | 143.206 |
Control of corruption | 7.476 | 2,847,207.000 | 0.000 | 19,900,000 | 6.204 | 143.206 |
The use of energy | 450,155.100 | 524.931 | 63.005 | 2986.056 | 2.335 | 9.360 |
Arable land | 633.134 | 3,004,498.000 | 0.378 | 19,900,000.000 | 5.891 | 35.927 |
Access to electricity | 498,846.400 | 32.617 | 0.010 | 100.414 | 0.700 | 2.155 |
Appendix D. Descriptive Statistics 2 (Alternative Traditional Control Variables)
Variables | Mean | Std. Dev. | Min | Max | Skew. | Kurt. |
---|---|---|---|---|---|---|
Oda gross loans | 72.812 | 141.089 | −0.16 | 989.92 | 3.315 | 16.18 |
Repayments | 3.110 | 9.730 | −2.771 | 2.080 | 15.127 | 305.222 |
Early impact aids | 1.614 | 6.885 | −0.038 | 116.069 | 9.913 | 136.072 |
Initial life expectancy | 54.821 | 8.9 | 43.183 | 72.522 | 0.624 | 2.268 |
Corruption | 2.044 | 0.845 | 0 | 5 | 0.286 | 3.28 |
Law and Order | 2.973 | 1.12 | 0.5 | 6 | 0.552 | 2.992 |
Bureaucracy Quality | 1.351 | 0.792 | 0 | 3.5 | −0.414 | 2.218 |
Democrat ic Accountability | 3.213 | 1.233 | 0 | 5.5 | −0.081 | 2.169 |
Institutional Quality | 7.17 | 2.209 | 2.25 | 15.25 | 0.168 | 2.755 |
Tropics | 0.666 | 0.447 | 0 | 1 | −0.721 | 1.6 |
Initial GDP Per capita | 4.262 | 4.98 | −3.757 | 23.053 | 1.7 | 7.407 |
GDP per capita | 1.732 | 5.134 | −34.96 | 50.236 | 0.085 | 25.523 |
Oda commitments | 689.318 | 1297.877 | 4.858 | 20274.47 | 8.621 | 104.21 |
Population Growth | 2.596 | 0.915 | −0.055 | 7.902 | 0.815 | 7.486 |
Initial Income per capita | 685.817 | 830.066 | 42.8783 | 3287.965 | 1.775 | 5.394 |
Broad money | 40.346 | 43.523 | 2.857408 | 258.831 | 2.744 | 11.743 |
Appendix E. Proxies Definitions and Data Sources of Control Variables (Initial Specification)
Variables | Indicator/Proxy | Specification | Data Source |
---|---|---|---|
Industrial Growth | Industrial Value added | Industry corresponds to ISIC divisions 10–45 and includes manufacturing (ISIC divisions 15–37). It comprises value added in mining, manufacturing (also reported as a separate subgroup), construction, electricity, water, and gas. Value added is the net output of a sector after adding up all outputs and subtracting intermediate inputs. | WDI & OECD) Indexmundi, SESRIC |
Agricultural Growth | Agricultural Value added | Agriculture corresponds to ISIC divisions 1–5 and includes forestry, hunting, and fishing, as well as cultivation of crops and livestock production. Value added is the net output of a sector after adding up all outputs and subtracting intermediate inputs. | WDI & OECD (national accounts data) Indexmundi, SESRIC |
Services Growth | Services Value added | Services correspond to ISIC divisions 50–99 and they include value added in wholesale and retail trade (including hotels and restaurants), transport, and government, financial, professional, and personal services such as education, health care, and real estate services. Also included are imputed bank service charges, import duties, and any statistical discrepancies noted by national compilers as well as discrepancies arising from rescaling. Value added is the net output of a sector after adding up all outputs and subtracting intermediate inputs. It is calculated without making deductions for depreciation of fabricated assets or depletion and degradation of natural resources. The industrial origin of value added is determined by the International Standard Industrial Classification (ISIC), revision 3 or 4. | WDI & OECD (national accounts data) Indexmundi, SESRIC |
Aids for services growth | Allocated aids for social infrastructure & services total+, economic infrastructure and services total+ trade policy and regulation, total +tourism, total | Categories of aids that primarily effect services growth | CRS, OECD |
Aids for agricultural growth | Allocated aids for Agriculture, Forestry, Fishing total+ Rural Development total | Categories of aids that primarily effect agricultural growth | CRS, OECD |
Aids for industry | Allocated aids industry, mining and construction total | Categories of aids that primarily effect agricultural growth | CRS, OECD |
Early impact aids (2) | The numerator for early-impact aid is the product of gross ODA (Net ODA + Repayments) and the ratio of total early-impact ODA commitments as classified in Clemens et al. (2012) classification and the current study Appendix B over total ODA commitments. | Allocated categories of aids that might plausibly affect growth within a few years after it is disbursed, such as aid for road construction. Aid that finances activities that might affect growth in the short term, such as budget support, is left in _early-impact_ aid | WDI, (CRS) 2019 and DAC 2a |
Private Capita (the most inclusive | We used the most inclusive measure of net private capital flows, which is computed as Net Private Equity/GDP + Private Debt Flows/GDP. The net private equity is computed as Net FDI + Portf Equity Capital Flows (% GDP), and private debt flows/GDP is computed as Net Total Debt from Private Creditors/GDP, which represents the annual changes in the stock of total external debt from private creditors, including private nonguaranteed debt flows, PPG debt flows and private creditors. | Net Private Equity and Private Debt Flows/GDP. The most inclusive measure of net private capital flows. | Equity flows come from IMF and Private debt from WB-GDF database |
Trade openness | Total exports plus imports/GDP | Total exports plus imports/GDP | WDI |
Employment | Employers | Employers, total (% of total employment) | WDI |
Gross domestic savings (% of GDP) | Gross domestic savings are calculated as GDP less final consumption expenditure (total consumption) | WDI | |
Official development assistance | ODA | Net official development assistance (ODA) consists of disbursements of loans made on concessional terms (net of repayments of principal) and grants by official agencies of the members of the (DAC), | OECD |
Government Spending | General government final consumption expenditure (% of GDP) | General government final consumption expenditure (formerly general government consumption) includes all government current expenditures for purchases of goods and services (including compensation of employees). It also includes most expenditures on national defense and security but excludes government military expenditures that are part of government capital formation. | WDI & OECD |
Political stability | Political stability | Political Stability and Absence of Violence/Terrorism captures perceptions of the likelihood that the government will be destabilized or overthrown by unconstitutional | Worldwide Governance Indicators, The World Bank |
Government Effectiveness | Government Effectiveness | Government Effectiveness captures perceptions of the quality of public services, the quality of the civil service and the degree of its independence from political pressures, the quality of policy formulation and implementation, and the credibility of the government’s commitment to such policies | Worldwide Governance Indicators, The World Bank |
Arable land | Arable land (% of land area) | Land under temporary crops (double-cropped areas are counted once), temporary meadows for mowing or for pasture, land under market or kitchen gardens, and land temporarily fallow. Land abandoned as a result of shifting cultivation is excluded. | WDI |
Access to Electricity | Access to electricity (% of population) | It refers to the percentage of people in a given area that have relatively simple, stable access to electricity. … Not all countries and areas have equal access to electricity, and the level of access can be indicative of the development level of the country or area in question | WDI |
Use of energy | Energy use of oil equivalent per capita | Energy use refers to use of primary energy before transformation to other end-use fuels, which is equal to indigenous production plus imports and stock changes, minus exports and fuels supplied to ships and aircraft engaged in international transport | WDI |
Control of Corruption | Control of Corruption | It measures the perception of how much public power is exercised for private gain, including both petty and grand forms of corruption, and how much the state is captured by elites and private interests | WDI |
Appendix F. Variables Proxies Definitions and Data Sources of Alternative Control Traditional Variables
Variables | Indicator/Proxy | Specification | Data Source |
---|---|---|---|
Tropics | Geographical tropics, % land area in geographical tropics, calculated in equal-area projection, (Dalgaard et al. 2004; Gallup et al. 1999) | Indicative of location in tropics as in Gallup et al. (1999) | Country Geography Data |
Repayments. | ’ODA (OA) Loans Received/GDP, the numerator is ’ODA (OA) Loans Received [in current USD/The denominator as in (Burnside and Dollar 2000; Rajan and Subramanian 2008a) | WDI, (CRS) 2019 and DAC 2a | |
M2/GDP. | Money and quasi-money (M2) as % of GDP GDP, (Rajan and Subramanian 2008a; Selaya and Thiele 2010;Burnside and Dollar 2000 | Money and quasi money (M2) comprise the sum of currency outside banks, demand deposits other than those of the central government, and the time, savings, and foreign currency deposits of resident sectors other than the central government. | WDI |
Population Growth | Log population growth (annual population growth rate), (Boone 1996; Dalgaard et al. 2004; Burnside and Dollar 2000) | The population is based on the de facto definition of population, which counts all residents regardless of legal status or citizenship | WDI |
Initial life expectancy | Initial life expectancy (Clemens et al. 2004, 2012; Rajan and Subramanian 2008a) | Life expectancy is based on an estimate of the average age that members of a particular population group will be when they die | WDI |
Institutional quality | It is a composite of four indictors we use period averages of the sum of 4 components (bureaucratic quality, law& order, corruption democracy accountability), as in Clemens et al. (2004) and Rajan and Subramanian (2008a) | ICRG PRS Group’s | |
Early impact aids | The numerator for early-impact aid is the product of gross ODA (Net ODA + Repayments) and the ratio of total early-impact ODA commitments as classified in Clemens et al. (2012) classification and the current study Appendix B over total ODA commitments. | Allocated categories of aids that might plausibly affect growth within a few years after it is disbursed, such as aid for road construction. Aid that finances activities that might affect growth in the short term, such as budget support, is left in _early-impact_ aid | WDI, (CRS) 2019 and DAC 2a |
Initial Per capita Income | The initial period share of the first non-missing value in each period of per-capita income as in (Clemens et al. 2004, 2012; Rajan and Subramanian 2008a) | It measures the average income earned per person in a given area (city, region, country, etc.) in a specified year. It is calculated by dividing the area’s total income by its total population. | WDI |
Appendix G. Unit Root Tests
Variables | IPS Test | ADF Fisher Type |
---|---|---|
Sectoral aids industry | −15.6972 ***I(0) | −23.5148 *** I(0) |
Sectoral aids Agriculture | −14.2899 *** I(0) | −24.9957 *** I(0) |
Sectoral aids Services | −16.5402 *** I(0) | −24.4563 *** I(0) |
Odagdp100 | −16.7531 *** I(0) | −24.8659 *** I(0) |
Domestic Saving | −16.9610 ***I(0) | −25.3291 *** I(0) |
Government Spending | −14.9676 ** I(0) | −21.5321 *** I(0) |
Government Effectiveness | −16.2424 ** I(0) | −23.6048 *** I(0) |
Political stability | −16.6666 *** I(0) | −24.7280 *** I(I) |
Trade openness | −14.4043 ***I(0) | −19.8126 ** I(0) |
Private Capital | −16.6546 ***I(0) | −24.7364 *** I(I) |
Industrial Value added | −15.5572 *** I(0) | −22.2410 *** I(0) |
Agriculture Value added | −12.2173 *** I(0) | −15.8287 *** I(0) |
Services Value added | −14.1299 *** I(0) | −19.8021 *** I(0) |
Employment | −15.3577 *** I(0) | −21.8893 *** I(0) |
GDP | −16.7491 *** I(0) | −24.7226 *** I(0) |
Control of corruption | −16.5962 *** I(0) | −24.3957 *** I(0) |
The use of energy | −−10.7176 *** I(0) | −22.0644 *** I(0) |
Arable Land | −16.4138 *** I(0) | −23.9380 *** I(0) |
Access to electricity | −6.8424 *** I(0) | −7.8350 *** I(0) |
Appendix H. Unit Root Tests (Standard–Literature Control Variables)
Variables | IPS Test | ADF Fisher Type |
---|---|---|
Early impacts aids | −13.0948 *** I(0) | −9.4739 *** I(0) |
tropics | −4.4270 *** I(0) | −4.8319 *** I(0) |
Repayments | −13.5874 *** I(0) | |
Initial per capita income | −12.6331 *** I(0) | −17.8352 *** I(0) |
Initial GDP per capita | −13.6932 *** I(0) | −20.1427 *** I(0) |
Initial life expectancy | −6.5930 *** I(0) | −25.3291 *** I(0) |
Intuitional quality | −12.6401 *** I(0) | −18.1625 *** I(0) |
Broad money | −7.8095 *** I(0) | −9.4739 *** I(0) |
Population Growth | −13.3353 *** I(0) | −19.5540 *** I(I) |
Oda Gross loan | −12.1773 ***I(0) | −24.7364 *** I(I) |
Appendix I. Instrumented Aids with Three Lagged Periods and GMM and Pooled OLS Driscoll-Kraay Standard Errors
Lagged Aids (t − 1,t − 2,t − 3) | |||
---|---|---|---|
Dependent Variables | Industrial Growth | Agriculture Growth | Service Growth |
Sectoral aids (t − 1) | −0.026 −(0.052) | 3.293 *** 0.586 | −0.148 *** −(0.053) |
Sectoral aids (t − 2) | −0.021 −(0.052) | 3.293 *** (0.586) | −0.135 ** −(0.011) |
Sectoral aids (t − 3) | −0.023 −(0.053) | 2.620 *** 0.596 | −0.125 ** −(0.019) |
Constant (t − 1) | 2.620 * 1.434 | 45.786 *** 1.406 | 46.314 *** 1.604 |
Constant (t − 2) | 1.967 1.487 | 45.539 *** 1.453 | 47.067 *** 1.648 |
Constant (t − 3) | 1.466 1.551 | 45.283 *** 1.510 | 47.805 *** 1.692 |
Observations | (813 Obs.) | ||
Adj. R2 (t − 1) | 0.6852 *** | 0.4149 *** | 0.5938 *** |
Adj. R2 (t − 2) | 0.6822 *** | 0.4160 *** | 0.5828 *** |
Adj. R2 (t − 3) | 0.6800 *** | 0.4234 *** | 0.5644 *** |
Brush pagan Correlation matrix test | 290.496 *** |
Appendix J. Robustness Check GMM
Aids Commitments | Aids Disbursements | |||||
---|---|---|---|---|---|---|
Dependent Variables | Industrial Sector Growth Equation | Agriculture Sector Growth Equation | Service Sector Growth Equation | Industrial Sector Growth Equation | Agriculture Sector Growth Equation | Service Sector Growth Equation |
GMM | GMM | GMM | GMM | GMM | GMM | |
Sectoral aids | 2.833 *** −5.63 | 3.467 *** −4.46 | −0.178 *** (−11.39) | 3.041 −0.6 | 2.908 * −2.58 | −0.105 (−0.48) |
Trade openness | 0.079 *** −16.36 | −0.038 *** (−3.46) | −0.026 *** (−8.23) | 0.096 *** −5.89 | −0.024* (−1.82) | −0.047 *** (−4.01) |
Domestic Saving | 0.564 *** −59.49 | −0.253 *** (−14.97) | −0.145 *** (−24.40) | 0.595 *** −21.38 | −0.223 *** (−10.56) | −0.106 *** (−4.87) |
Government Spending | 0.799 *** −32.57 | −0.668 *** (−11.12) | 0.113 *** −6.49 | 0.791 *** −8.2 | −0.693 *** (−8.64) | 0.229 ** −3.06 |
Government Effectiveness | −0.291 *** (−24.09) | −0.03 (−1.15) | 0.328 *** −37.16 | −0.329 *** (−9.87) | 0.036 −1.08 | 0.315 *** −11.11 |
Employment | 1.221 *** −22.21 | −0.392 ** (−2.86) | 0.175 *** −3.73 | 1.311 *** −9.15 | −0.611 *** (−3.67) | 0.26 −1.85 |
Arable Land | - | 0.000* −2 | - | - | 0 −1.55 | - |
Access to Electricity | - | −0.193 *** (−13.10) | - | - | −0.199 *** (−10.85) | - |
The use of energy | 0.001 *** −4.13 | - | - | 0.002 * −1.98 | - | - |
Control of corruption | - | - | 0.000 *** −3.360 | - | - | 0 −0.32 |
Political Stability | 0.043 *** −4.1 | −0.085 *** (−3.71) | −0.021 ** (−2.69) | 0.065 * −2.31 | −0.118 *** (−4.05) | −0.043 (−1.71) |
Private Capital | 0.113 *** −7.78 | −0.013 (−1.20) | −0.178 *** (−11.39) | 0.105 * −2.57 | −0.009 (−0.82) | 0.01 −0.97 |
constant | 2.875 *** −5.66 | 49.484 *** −39.96 | 39.206 *** −100.49 | 1.003 −0.66 | 48.271 *** −30.23 | 39.101 *** −27.72 |
Observations & countries | 37 countries (813 Obs.) | 30 countries (660 Obs.) | ||||
AR (1 & 2) | −2.86 *** −1.97 ** | −9.79 ** 0.50 * (0.105) | −2.10 ** −1.64 * | −4.25 *** 1.80 * | −9.56 *** −0.23 | −8.23 *** 0.33 |
Sargan OIR | 3858.88 *** | 720.23 * | 6762.42 *** | 218.88 *** | 522.11 | 589.84 ** |
Wald chi2//R-squared | 8887.02 *** | 7189.06 *** | 4915.07 *** | 626.03 *** | 960.42 *** | 368.51 *** |
Appendix K. Lists of the Literature Concerning Allocated Aids to Specific Sectors
Study and Title | Method& Estimation | Foreign Aids Variable | Objectives and Argument | Expected Results |
---|---|---|---|---|
Ssozi et al. (2019) | GMM | Allocated aids for agriculture | To find out whether official development assistance for agriculture is effective. | There is a positive relationship between development assistance and agricultural productivity in general. However, when broken down into the major agricultural recipient sectors, there is a substitution effect between food crop production and industrial crop production. |
Reuben Adeolu Alabi (2014) | Dynamic specification & (GMM) | Allocated aids for agriculture | To investigate the impact of foreign agricultural aid on agricultural GDP and productivity in Sub-Saharan Africa (SSA). | He found positive results of aids allocated to agriculture growth The econometric analysis suggests that foreign agricultural aid has a positive and significant impact on agricultural GDP and agricultural productivity at 10% significance, and that disaster and conflict also have a positive and significant impact on aid receipt at 5% significance. |
Shanka Prasad Ghimire et al. (2013) | SUR | Allocated Aids for the corresponding sector | To examines the relationship between the allocated aids to three specific sectors of export promotion (agriculture, services and industry) | All the corresponding allocated for each sector showed positive and highly significant impact. |
Hugie (2011) | SUR | Allocated aids to the targeted sector | This study addresses whether the absolute and relative impact of economic, political, and humanitarian variables that restrain or boost U.S. foreign assistance varies for different types of aid, from a strictly domestic decision-making framework | He found that various aid budgets unlikely respond with respect to the explanatory variables. |
Ferro et al. (2014) | Identification strategy | Aids allocated to the targeted five sector | To evaluate the impact of foreign aid to five services sectors (transportation, information and communications technologies (ICT), energy, banking/financial services, and business services) on exports of downstream manufacturing sectors in developing countries. | They find a positive effect of aid to services, in general, on downstream manufacturing exports of developing countries across regions and income-level groups |
Goshu (2014) | Multivariate Vector Auto Regression analysis | Allocated aid to the targeted sector | To examined sectoral analysis of the impact of foreign aid on aggregate and sectoral economic growth in Ethiopia over the period 1981 to 2012 | His results implied that allocated for certain sectors is ineffective in achieving its objectives of economic growth |
Ndikumana and Pickbourn (2017) | Panel data estimation techniques controlling for country-specific effects and potential endogeneity of regressors. | Allocated aids to water and sanitation | To investigate whether targeting foreign aid to the water and sanitation sector can help achieve the goal of expanding access to water and sanitation services in sub-Saharan Africa. | The econometric results suggest that increased aid targeted to the supply of water and sanitation is associated with increased access to these services, although the relationship is non-linear. |
Pickbourn and Ndikumana (2016) | GMM, Fixed effect, IRLS, OLS | Allocated aids for gender inequality | to examine the impact of bilateral official aid disbursements aid and its sectoral allocation on overall gender inequality as well as on gender inequality in health and education | We find that the impact of aid on gender inequality is dependent on initial human development and per capita income |
Claudia R. Williamson (2008) | Fixed effect, instrumental variables | Aids allocated to promoting human development | to investigate the effectiveness of aid in promoting human development. | indicate that foreign aid is ineffective at increasing overall health and is an unsuccessful human development tool |
Findley and Hawkins (2010). | Statistical matching | Allocated PLAID/AidData foreign aid data | To examine the sector-by-sector (education, democracy, the respect of human rights, the environment, and terrorism prevention) effectiveness of foreign | The results offer initial support for the need to disaggregate aid and the development outcomes that aid is often designed to address |
Appendix L. The Sample of the Study
No | Sub-Sahara African | No | MENA Countries |
---|---|---|---|
1 | Angola | 1 | Egypt |
2 | Benin | 2 | Iraq |
3 | Burundi | 3 | Jordan |
4 | C. African Republic | 4 | Lebanon |
5 | Chad | 5 | Morocco |
6 | Congo, Dem. Rep. | 6 | Tunisia |
7 | Congo, Rep. | 7 | West Bank and Gaza Strip |
8 | Côte d’Ivoire | 8 | Yemen |
9 | D.R Congo | ||
10 | Gambia | ||
11 | Guinea | ||
12 | Guinea-Bissau | ||
13 | Kenya | ||
14 | Liberia | ||
15 | Liberia | ||
16 | Madagascar | ||
17 | Malawi | ||
18 | Mali | ||
19 | Mauritania | ||
20 | Mozambique | ||
21 | Namibia | ||
22 | Niger | ||
23 | Nigeria | ||
24 | Rwanda | ||
25 | South Africa | ||
26 | Togo | ||
27 | Uganda | ||
28 | Zambia | ||
29 | Zimbabwe |
1 | Currently, the debate of the aid–growth nexus is specifically directed to Sub-Saharan Africa (henceforth, SSA) due to several factors. Most importantly, in spite of substantial aid flows to SSA, the crucial purpose of the United Nation’s Millennium Development Goals, to reduce poverty to half of the 1990 level by 2015, is probably not going to be met in SSA (Addison et al. 2005). Moreover, the existence of increasing signs of donor fatigue due to the global financial crisis and growing concern for government debt levels (OECD 2011) in turn threatens to further stagnate economic development in the regions. |
2 | The Literature Review section provides a detailed discussion about the remaining gaps in this area of the aid literature. |
3 | More details about these issues are found in the Literature Review. |
4 | There were increasing numbers of inefficient but large infrastructure investment projects in SSA as a result of less grounded investment decisions that were motivated by political considerations. The inefficient outcomes of these projects stem from non-adaptation to the real needs of the economy and poor maintenance capabilities (Keza 2005). |
5 | Sectoral aid comprises specified categories of aid that are likely to affect the growth of the corresponding sectors. We collected the sectoral aid data from official development assistance bilateral aid flows as the ODA is segregated and classified for different economic and non-economic sectors according to the CRS of the OECD. |
6 | More information about constructing these two measures can be found in the Methodology section. |
7 | The characteristics and assumptions that are reminiscent of displacement theory, fiscal response and fungibility, Dutch disease etc. |
8 | Standard literature of the aid–growth nexus means the most prominent papers or the most influential cited studies in the aid–growth literature, including: (Boone 1996; Clemens et al. 2004, 2012; Boone 1996; Burnside and Dollar 2000; Collier and Dollar 2002; Dalgaard et al. 2004; Rajan and Subramanian 2008a). |
9 | This is the most inclusive measure of net private capital flows as clarified in Alfaro et al. (2014), where the net private equity is computed as Net FDI + Portf Eqty Capital Flows (% GDP), and private debt flows/GDP is the Net Total Debt from Private Creditors/GDP, which is the annual change in the stock of the total external debt from private creditors, including private nonguaranteed debt flows and PPG debt flows. |
10 | This means that the excess aid inflow may be used to invest in low-productivity sectors and/or to increase government consumption spending and/or to fund tax reduction. The former two would make aid less effective while the latter would deter domestic savings and investments via upward pressure on prices and interest rates. |
11 | Aid inflows bring in a source of “Dutch disease”. This means that high levels of aid inflow cause the overvaluation of exchange rates. Aid would undermine the external competitiveness of the recipient country, thus crowding out investments in the traded goods sector and reducing export earnings. |
12 | The failure of the recipient country to accomplish donor conditionality leads to uncertainty of the aid inflow. This could lead both the public and private sectors in the recipient country to postpone or even cancel investment decisions. |
13 | Other factors such as changes in relative prices may of course also affect sectoral growth rates but we omitted them because reliable proxies can hardly be constructed in a panel data context. |
14 | The metrics’ strategy for institutional quality measure of Rajan and Subramanian (2008a) that was reconstructed in Clemens et al. (2012), used a period averages of the sum of three components (bureaucratic quality, rule of law and corruption), the current study used the same three components and added democratic accountability as a fourth component in the metrics to account for some characteristics of the 37 selected sample countries from MENA and SSA regions. |
15 | Appendix A provides more information about the metrics used in this measure and describes, in detail, all included sectors for each respective sector of interest. |
16 | Appendix B provides more details on the calculation and definition of early-impact metrics; it also enlists Clemens’ classification of early-impact aid categories. |
17 | Masters and Wiebe (2000), for example, suggested that growth in agricultural productivity is restricted in more tropical areas. |
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Variables | Variable Unit Measure | Data Sources and Access Link |
---|---|---|
Industrial Growth | Industry (including construction), value-added growth (annual average growth rate) | Data were obtained from World Bank National Accounts data and OECD National Accounts data files. WDI access link https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Agricultural Growth | Agriculture, forestry and fishing, value-added growth (annual average growth rate) | Data were obtained from World Bank National Accounts data and OECD National Accounts data files. WDI access link https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Service Growth | Services, value-added growth (annual average growth rate) | Data were obtained from World Bank National Accounts data and OECD National Accounts data files. WDI access link https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Sectoral aid allocated to industrial growth | The total of all allocated aid categories (in USD) that primarily affect industrial growth as a % of GDP. The product of (the total aid allocated to agricultural growth/GDP) multiplied by 100 | Data of numerator includes the total of all allocated aid categories in USD dollars that primarily affect industrial growth in commitments or disbursements datasets; they were obtained from CRS, OECD, https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 10 December 2018) Data of denominator (GDP in current USD) were obtained from WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Sectoral aid allocated to agricultural growth | The total of all allocated aid categories, in USD, that primarily affect agricultural growth as a % of GDP. The product of (the total aid allocated to agricultural growth/GDP) by 100 | The data of the numerator includes the total of all allocated aid categories in USD that primarily affect agricultural growth in commitments or disbursements; datasets were obtained from CRS, OECD https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 10 December 2018) Data of denominator (GDP in current USD) were obtained from WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Sectoral aid allocated to service growth | The total of all allocated aid categories in, USD that primarily affect the growth of the service sector as % of GDP. The product of (the total of all aid allocated to service growth/GDP) by 100. | Data of numerator includes the total of all allocated aid categories in USD dollars that primarily affect the growth of the service sector in commitments or disbursements datasets; obtained from CRS, OECD https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 10 December 2018) Data of denominator (GDP in current USD) were obtained from WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 30 November 2018) |
Early-impact aid (2) | For the unit measures of early-impact-aid, we followed the prorating approach of Clemens et al. (2012). For early-impact-aid (as a % of GDP), all data are in current USD. The numerator for early-impact aid is the product of gross ODA (Net ODA + Repayments) and the ratio of total early-impact ODA commitments (as classified in Clemens et al. (2012)) over total ODA commitments from the CRS. This product is calculated according to donor–recipient pairs and then summed across all donors for a given recipient year. | In % of GDP. Data of the numerator were obtained from the Creditor Reporting System (CRS) 2019 https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 12 March 2019) and DAC Table2a https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 20 March 2019) The gross ODA (Net ODA + Repayments) were collected from DAC Table2a https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 20 March 2019) Classified early-impact ODA commitments and total ODA commitments were obtained from the CRS: https://stats.oecd.org/Index.aspx?DataSetCode=CRS1# (accessed on 20 March 2019) |
Private Capita (the most inclusive | Following the methodology of Alfaro et al. (2014), we used the most inclusive measure of net private capital flows, which is computed as Net Private Equity/GDP + Private Debt Flows/GDP. The net private equity is computed as Net FDI+ Portf Equity Capital Flows (% GDP), and private debt flows/GDP is computed as Net Total Debt from Private Creditors/GDP, which represents the annual changes in the stock of total external debt from private creditors, including private nonguaranteed debt flows, PPG debt flows and private creditors. More details about this measure construction methods are found in “Sovereigns, Upstream Capital Flows and Global Imbalances”, Journal of European Economic Association. | The data were obtained from the updated and extended version of the annual panel dataset of net private and public capital flows from the 1970s to 2019 following Alfaro et al.’s (2014) methods. They can be downloaded from http://sovereign-to-sovereign-flows.com/panel.php (accessed on 20 December 2018) |
Trade openness | Total exports plus imports/GDP | Data were obtained from WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 January 2019) |
Employment | Employers, total (% of total employment) | Data were obtained from WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 January 2019) |
Gross domestic savings (% of GDP) | Gross domestic savings are calculated as GDP minus final consumption expenditure (total consumption) | Data of gross domestic savings, calculated as GDP minus final consumption expenditure (total consumption), were obtained from World Bank National Accounts data, and OECD National Accounts data files World bank https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 January 2019) |
Government Spending | General government final consumption expenditure (% of GDP) | Data were obtained from World Bank National Accounts data and OECD National Accounts data files World bank https://databank.worldbank.org/reports.aspx?dsid=2&series=NE.CON.GOVT.ZS (accessed on 5 January 2019) Data for Yemen, Syria, Tunisia and Turkey were obtained from SESRIC http://www.sesric.org/baseind-step1-ar.php (accessed on 16 January 2019) |
Political stability | Political Stability and Absence of Violence/Terrorism: Percentile Rank | Data were obtained from Worldwide Governance Indicators WGI http://info.worldbank.org/governance/wgi/ (accessed on 17 January 2022) |
Government Effectiveness | Government Effectiveness: Percentile Rank | Data were obtained from Worldwide Governance Indicators, WGI http://info.worldbank.org/governance/wgi/#reports (accessed on 10 January 2019) |
Arable land | Arable land (% of land area). | Data were obtained from Worldwide Development Indicators, The World Bank, WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 March 2019) |
Access to Electricity | Access to electricity (% of population) | Data obtained from Worldwide Development Indicators, The World Bank, WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 March 2019) |
Use of energy | Energy use of oil equivalent per-capita | Data were obtained from Worldwide Development Indicators, The World Bank, WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 5 March 2019) |
Control of Corruption | Control of Corruption | Data were obtained from Worldwide Governance Indicators, WGI http://info.worldbank.org/governance/wgi/ (accessed on 10 January 2019) |
Covariates of the second and third Models | ||
Tropics | Geographical tropics, % land area in geographical tropics, calculated in equal-area projection, (Dalgaard et al. 2004; Gallup et al. 1999) | Data were obtained from Country Geography Data, indicative of location in tropics, as in Gallup et al. (1999), https://www.pdx.edu/econ/country-geography-data (accessed on 10 April 2019) |
M2/GDP. | Money and quasi-money (M2) as % of GDP, (Rajan and Subramanian 2008a; Selaya and Thiele 2010; Burnside and Dollar 2000) | Data were obtained from The World Bank https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 15 April 2019) |
Population Growth | Log population growth (annual population growth rate), (Boone 1996; Dalgaard et al. 2004; Burnside and Dollar 2000) | Data on the annual population growth rate were obtained from The World Bank WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 20 April 2019) |
Initial life expectancy | Initial natural logarithm of first non-missing value in each period of total life expectancy, (Clemens et al. 2004, 2012; Rajan and Subramanian 2008a) | Data were obtained from The World Bank WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 25 April 2019) |
Institutional quality | We used period averages of the sum of 4 components (bureaucratic quality, law and order, corruption, and democratic accountability), (Clemens et al. 2004, 2012; Rajan and Subramanian 2008a) | Data were purchased from the updated version of the ICRG PRS Group’s dataset https://www.prsgroup.com/explore-our-products/international-country-risk-guide/ (accessed on 11 June 2019) |
Initial per-capita income | The initial period share of the first non-missing value in each period of per-capita income as in (Clemens et al. 2004, 2012; Rajan and Subramanian 2008a) | Data were obtained from The World Bank WDI https://databank.worldbank.org/reports.aspx?source=world-development-indicators (accessed on 15 June 2019) |
Aid Commitments | Aid Disbursements (2002–2017) | |||||||
---|---|---|---|---|---|---|---|---|
Dependent Variables | Industrial Growth | Agricultural Growth | Service Growth | Industrial Growth | Agricultural Growth | Service Growth | ||
Sectoral aid | 1.494 ** (1.97) | 2.729 *** (4.69) | −0.180 *** (−4.64) | 5.053 (1.31) | 2.906 *** (3.6) | −0.398 * (−1.70) | ||
Trade openness | 0.078 *** (5.85) | −0.051 *** (−4.02) | −0.009 (−0.63) | 0.097 *** (5.52) | −0.048 ** (−2.82) | −0.026 (−1.41) | ||
Domestic saving | 0.576 *** (23.75) | −0.295 *** (−13.19) | −0.222 *** (−8.61) | 0.598 *** (19.89) | −0.271 *** (−9.25) | −0.226 *** (−7.18) | ||
Government spending | 0.781 *** (11.63) | −0.665 *** (−10.65) | −0.048 (−0.65) | 0.738 *** (7.19) | −0.704 *** (−7.23) | 0.027 (0.26) | ||
Government effectiveness | −0.246 *** (−8.57) | −0.089 *** (−3.31) | 0.298 *** (10.14) | −0.298 *** (−8.66) | −0.037 (−1.08) | 0.348 *** (10.1) | ||
Employment | 1.067 *** (8.34) | −0.751 *** (−6.14) | −0.232 * (1.67) | 1.308 *** (8.33) | −0.904 *** (−5.92) | −0.335 * (−2.07) | ||
Arable land | ____ | 0.091 1.11 | ____ | 0.02 (0.04) | ____ | |||
Access to electricity | ____ | −0.066 *** (−6.17) | ____ | ____ | −0.063 *** (−4.44) | ____ | ||
Use of energy | 0.001 (1.44) | ____ | ____ | 0.001 (1.05) | ____ | ____ | ||
Control of corruption | ____ | ____ | −0.001 ** (−2.04) | _____ | −1.307 (−1.25) | |||
Political stability | 0.009 (0.37) | −0.019 (−0.79) | −0.028 (−1.04) | 0.056 (1.86) | −0.038 (−1.24) | −0.087 ** (−2.77) | ||
Private capital | 0.115 ** (2.85) | −0.074 * (−1.98) | −0.018 (−0.41) | 0.087 * (2.04) | −0.05 (−1.23) | −0.013 (−0.30) | ||
Constant | 3.649 ** (2.7) | 46.203 *** (33.66) | 45.624 *** (29.59) | 1.805 (1.07) | 44.750 *** (25.72) | 46.902 *** (26.18) | ||
Observations | 37 countries (813 Obs.) | 37 countries (600 Obs.) | ||||||
Adj. R2 | 0.6748 | 0.4078 | 0.5889 | 0.6548 | 0.4197 | 0.5222 | ||
Correlation matrix of residuals | Industry | Services | Agriculture | Industry | Services | Agriculture | ||
Industry | 1.0000 | Industry | 1.0000 | |||||
Services | −0.4683 | 1.0000 | Services | −0.4201 | 1.0000 | |||
Agriculture | −0.3173 | −0.4574 | 1.0000 | Agriculture | −0.3705 | −0.4765 | 1.0000 | |
Breusch-Pagan test | 290.496 *** | 216.303 *** |
Aid Commitments | ||||
---|---|---|---|---|
Dependent Variables | Industrial Growth | Service Growth | Agricultural Growth | |
Sectoral aid (before lagging M2) | −0.874 (−0.39) | 0.067 ** (0.025) | 3.055 *** 4.75 | |
Sectoral aid after lag M2 (Main Specification) | −5.070 ** (−2.46) | −0.068 * (−1.80) | 2.921 *** −4.55 | |
Aid*lagged financial depth M2 (Average) | −4.486 4.507 | −0.0799 ** 0.038 | −0.760 0.550 | |
Aid*intuitional quality | 0.973 0.54 | −0.059 *** −4.08 | 0.147 0.651 | |
Aid*tropics (dummy level) | −6.544 ** −2.52 | −0.674 *** −3.68 | 4.522 *** 6.04 | |
Tropics | 2.238 *** −7.63 | −0.271 (−1.49) | −1.322 *** (−5.67) | |
Institutional quality | 0.859 * −2.49 | 1.085 *** 5.12 | −1.923 *** (−7.23) | |
Initial life expectancy | 0.577 *** 5 | −0.654 *** (−9.10) | −0.171 (−1.92) | |
Initial per-capita Income | −19.516 *** (−13.68) | 8.756 *** 9.98 | 8.660 *** 7.91 | |
Population growth | −6.101 *** (−3.85) | 4.648 *** 4.77 | 2.723 * 2.24 | |
Lagged M2/GDP Lagged financial depth | −0.051 *** (−4.39) | 0.037 *** 5.28 | 0.023 ** 2.61 | |
Constant | 105.154 *** 9.05 | 7.368 1.01 | −3.662 (−0.41) | |
Observations and countries | 30 countries (660 Obs.) | |||
Adj. R2 | 0.5043 | 0.4788 | 0.3223 | |
Correlation matrix of residuals | Industry | Services | Agriculture | |
Industry | 1.0000 | |||
Services | −0.2505 | 1.0000 | ||
Agriculture | −0.5951 | −0.2820 | 1.0000 | |
Breusch-Pagan test | 308.784 *** |
Dependent Variables | Industrial Growth | Service Growth | Agricultural Growth | |
---|---|---|---|---|
Early-impact aid | −0.145 * (−2.16) | 0.111 ** 2.68 | 0.150 2.29 | |
Tropics | 0.415 1.58 | −0.387 * (−2.38) | 0.385 1.51 | |
Institutional quality | −0.489 * (−1.97) | 1.291 *** 8.38 | −1.427 *** (−5.91) | |
Initial life expectancy | 0.963 *** 10.21 | −0.547 *** (−9.37) | −0.378 *** (−4.13) | |
Initial per-capita income | −8.779 *** (−11.72) | 4.821 *** 10.4 | 3.740 *** 5.14 | |
Population growth | −1.512 * (−2.30) | −0.13 (−0.32) | 2.254 *** 3.53 | |
Lagged M2/GDP | −0.032 * (−1.98) | 0.125 *** 12.33 | −0.101 *** (−6.36) | |
Constant | −0.145 * (−2.16) | 33.953 *** 8 | 25.761 *** 3.87 | |
Observations and countries | 30 countries (660 Obs.) | |||
Adj. R2 | 0.2530 | 0.5673 | 0.3411 | |
Correlation matrix of residuals | Industry | Services | Agriculture | |
Industry | 1.0000 | |||
Services | −0.2298 | 1.0000 | ||
Agriculture | −0.6706 | −0.3271 | 1.0000 | |
Breusch-Pagan test | 377.868 *** |
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Aljonaid, N.A.A.; Qin, F.; Zhang, Z. The Heterogeneous Impact of Sectoral Foreign Aid Inflows on Sectoral Growth: SUR Evidence from Selected Sub-Saharan African and MENA Countries. J. Risk Financial Manag. 2022, 15, 107. https://doi.org/10.3390/jrfm15030107
Aljonaid NAA, Qin F, Zhang Z. The Heterogeneous Impact of Sectoral Foreign Aid Inflows on Sectoral Growth: SUR Evidence from Selected Sub-Saharan African and MENA Countries. Journal of Risk and Financial Management. 2022; 15(3):107. https://doi.org/10.3390/jrfm15030107
Chicago/Turabian StyleAljonaid, Nadeem Abdulmalik Abdulrahman, Fengming Qin, and Zhaoyong Zhang. 2022. "The Heterogeneous Impact of Sectoral Foreign Aid Inflows on Sectoral Growth: SUR Evidence from Selected Sub-Saharan African and MENA Countries" Journal of Risk and Financial Management 15, no. 3: 107. https://doi.org/10.3390/jrfm15030107
APA StyleAljonaid, N. A. A., Qin, F., & Zhang, Z. (2022). The Heterogeneous Impact of Sectoral Foreign Aid Inflows on Sectoral Growth: SUR Evidence from Selected Sub-Saharan African and MENA Countries. Journal of Risk and Financial Management, 15(3), 107. https://doi.org/10.3390/jrfm15030107