A random forest-based analysis of cassava mosaic disease-related factors affecting the on-farm livelihoods of cassava farmers
Dickmi Vaillam Claudette,
Tchouamo Isaac Roger
Abstract:This study aimed to identify key CMD-related factors affecting Cameroon cassava farmers’ incomes originating from both the sale of cassava cuttings (V215) and the sale of cassava roots (V216). To achieve this, nine CMD-related variables were used to independently train two Random Forest models. These models were later employed for regression-based prediction of both financial targets V215 and V216. The Random Forest (RF)-based mean absolute percentage error for targets V215 and V216 were 0.19 and 1.25 respecti… Show more
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