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  • 1
    Online Resource
    Online Resource
    Washington, D.C : The World Bank
    Language: English
    Pages: 1 Online-Ressource
    Series Statement: Gender Innovation Lab Federation Causal Evidence Series
    Keywords: Agriculture ; Cash Crop Production ; Digital Technologies ; Gender ; Gender and Development ; Gender and Economics ; Gender Monitoring and Evaluation ; New Markets ; Women Farmers
    Abstract: Gender productivity gaps in agriculture are large around the world, even though women comprise 40-50 percent of the agricultural labor force in developing countries. Gender differences in agricultural productivity can be as high as 66 percent and can cost countries up to USD 105 million annually. Women farmers tend to produce lower output per unit of land than men farmers because of gender-specific constraints, such as unequal access to farm labor, agricultural inputs, lower literacy, childcare responsibilities, limited involvement in cash crop production, and lower participation in farmers' groups. Women farmers are concentrated in the lower levels of agricultural value chains and are less likely to be active in commercial farming than men. Restrictive gender norms underlie occupational sex segregation in agriculture, leading women to concentrate in low-value crops. Research by the Africa GIL indicates that when women manage cash crop plots-and have access to the same inputs and resources as men-they are able to be as productive as their male counterparts. The GIL Federation is generating rigorous evidence around the world to understand what works, and what does not, in narrowing gender productivity gaps and helping farmers reach their potential. This note presents evidence on three key findings based on impact evaluations
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