Nonparametric estimation of multivariate convex-transformed densities

We study estimation of multivariate densities of the form for and for a fixed monotone function and an unknown convex function . The canonical example is for ; in this case, the resulting class of densities [\mathcal {P}(e^{-y})={p=\exp(-g):g is convex}] is well known as the class of log-concave densities. Other functions allow for classes of densities with heavier tails than the log-concave class. We first investigate when the maximum likelihood estimator exists for the class for various choices of monotone transformations , including decreasing and increasing functions . The resulting models for increasing transformations extend the classes of log-convex densities studied previously in the econometrics literature, corresponding to . We then establish consistency of the maximum likelihood estimator for fairly general functions , including the log-concave class and many others. In a final section, we provide asymptotic minimax lower bounds for the estimation of and its vector of derivatives at a fixed point under natural smoothness hypotheses on and . The proofs rely heavily on results from convex analysis.
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