This study considers the treatment choice problem when outcome variables are
binary. We focus on statistical treatment rules that plug in fitted values
based on nonparametric kernel regression and show that optimizing two
parameters enables the calculation of the maximum regret. Using this result, we
propose a novel bandwidth selection method based on the minimax regret
criterion. Finally, we perform a numerical analysis to compare the optimal
bandwidth choices for the binary and normally distributed outcomes