research

Collaborative Filtering in a Non-Uniform World: Learning with the Weighted Trace Norm

Abstract

We show that matrix completion with trace-norm regularization can be significantly hurt when entries of the matrix are sampled non-uniformly. We introduce a weighted version of the trace-norm regularizer that works well also with non-uniform sampling. Our experimental results demonstrate that the weighted trace-norm regularization indeed yields significant gains on the (highly non-uniformly sampled) Netflix dataset.Comment: 9 page

    Similar works

    Full text

    thumbnail-image

    Available Versions