Non-Standard Asymptotics in High Dimensions: Manski's Maximum Score Estimator Revisited

Manski's celebrated maximum score estimator for the binary choice model has been the focus of much investigation in both the econometrics and statistics literatures, but its behavior under growing dimension scenarios still largely remains unknown. This paper seeks to address that gap. Two different cases are considered: grows with but at a slow rate, i.e. ; and (fast growth). By relating Manski's score estimation to empirical risk minimization in a classification problem, we show that under a \emph{soft margin condition} involving a smoothness parameter , the rate of the score estimator in the slow regime is essentially , while, in the fast regime, the penalized score estimator essentially attains the rate , where is the sparsity of the true regression parameter. For the most interesting regime, , the rates of Manski's estimator are therefore and in the slow and fast growth scenarios respectively, which can be viewed as high-dimensional analogues of cube-root asymptotics: indeed, this work is possibly the first study of a non-regular statistical problem in a high-dimensional framework. We also establish upper and lower bounds for the minimax error in the Manski's model that differ by a logarithmic factor, and construct a minimax-optimal estimator in the setting . Finally, we provide computational recipes for the maximum score estimator in growing dimensions that show promising results.
View on arXiv