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Tensor denoising and completion based on ordinal observations

16 February 2020
Chanwoo Lee
Miaoyan Wang
ArXiv (abs)PDFHTML
Abstract

Higher-order tensors arise frequently in applications such as neuroimaging, recommendation system, social network analysis, and psychological studies. We consider the problem of low-rank tensor estimation from possibly incomplete, ordinal-valued observations. Two related problems are studied, one on tensor denoising and another on tensor completion. We propose a multi-linear cumulative link model, develop a rank-constrained M-estimator, and obtain theoretical accuracy guarantees. Our mean squared error bound enjoys a faster convergence rate than previous results, and we show that the proposed estimator is minimax optimal under the class of low-rank models. Furthermore, the procedure developed serves as an efficient completion method which guarantees consistent recovery of an order-KKK (d,…,d)(d,\ldots,d)(d,…,d)-dimensional low-rank tensor using only O~(Kd)\tilde{\mathcal{O}}(Kd)O~(Kd) noisy, quantized observations. We demonstrate the outperformance of our approach over previous methods on the tasks of clustering and collaborative filtering.

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