This paper addresses the challenge of missing crop yield data in large-scale agricultural surveys, where crop-cutting, the most accurate method for yield measurement, is often limited due to cost constraints. Multiple imputation techniques, supported by machine learning models are used to predict missing yield data. This method is validated using survey data from Mali, which includes both crop-cut and self-reported yield information. The analysis...
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详细
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2024/11/04
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政策研究报告
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WPS10964
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1
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2024/11/04
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Disclosed
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Yielding Insights : Machine Learning-Driven Imputations to Filling Agricultural Data Gaps