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Nonparametric Preference Completion

Clayton Scott
Abstract

We consider the task of collaborative preference completion: given a pool of items, a pool of users and a partially observed item-user rating matrix, the goal is to recover the \emph{personalized ranking} of each user over all of the items. Our approach is nonparametric: we assume that each item ii and each user uu have unobserved features xix_i and yuy_u, and that the associated rating is given by gu(f(xi,yu))g_u(f(x_i,y_u)) where ff is Lipschitz and gug_u is a monotonic transformation that depends on the user. We propose a kk-nearest neighbors-like algorithm and prove that it is consistent. To the best of our knowledge, this is the first consistency result for the collaborative preference completion problem in a nonparametric setting. Finally, we demonstrate the performance of our algorithm with experiments on the Netflix and Movielens datasets.

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