Section: New Results
Adaptive estimation in the nonparametric random coefficients binary choice model by needlet thresholding
In the random coefficients binary choice model, a binary variable equals 1 iff an index is positive. The vectors and are independent and belong to the sphere in . We have proven lower bounds on the minimax risk for estimation of the density over Besov bodies where the loss is a power of the norm for . We have shown that a hard thresholding estimator based on a needlet expansion with data-driven thresholds achieves these lower bounds up to logarithmic factors.