Regional monitoring networks are essential for assessing cost-effectiveness in agricultural practices, particularly in South Africa where climate variability and economic pressures necessitate such evaluations. The study will employ a Bayesian hierarchical linear regression model incorporating spatial and temporal variations in agricultural data. Uncertainty quantification will be addressed through credible intervals. Initial analysis suggests that the cost-effectiveness of monitoring networks varies significantly across different regions, with some areas showing substantial returns on investment compared to others. The proposed Bayesian hierarchical model provides a robust framework for assessing and optimising regional monitoring networks in agricultural contexts. Investment decisions should be guided by both the projected cost-effectiveness of each region's network and broader socio-economic factors. Bayesian Hierarchical Model, Cost-Effectiveness, Monitoring Networks, Agricultural Practices, South Africa The empirical specification follows Y=₀+^ X+, and inference is reported with uncertainty-aware statistical criteria.
Mabasa et al. (Wed,) studied this question.