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Robust low-rank tensor factorization by cyclic weighted median

机译:循环加权中值的鲁棒低秩张量分解

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摘要

Low-rank tensor factorization (LRTF) provides a useful mathematical tool to reveal and analyze multi-factor structures underlying data in a wide range of practical applications. One challenging issue in LRTF is how to recover a low-rank higher-order representation of the given high dimensional data in the presence of outliers and missing entries, i.e., the so-called robust LRTF problem. The L1-norm LRTF is a popular strategy for robust LRTF due to its intrinsic robustness to heavy-tailed noises and outliers. However, few L1-norm LRTF algorithms have been developed due to its non-convexity and non-smoothness, as well as the high order structure of data. In this paper we propose a novel cyclic weighted median (CWM) method to solve the L1-norm LRTF problem. The main idea is to recursively optimize each coordinate involved in the L1-norm LRTF problem with all the others fixed. Each of these single-scalar-parameter sub-problems is convex and can be easily solved by weighted median filter, and thus an effective algorithm can be readily constructed to tackle the original complex problem. Our extensive experiments on synthetic data and real face data demonstrate that the proposed method performs more robust than previous methods in the presence of outliers and/or missing entries.
机译:低秩张量因子分解(LRTF)提供了一个有用的数学工具,可以揭示和分析在广泛的实际应用中作为数据基础的多因子结构。 LRTF中一个具有挑战性的问题是如何在存在异常值和缺失条目的情况下,即所谓的鲁棒LRTF问题,如何恢复给定高维数据的低阶高阶表示。 L1规范LRTF由于其对重尾噪声和异常值的固有鲁棒性而成为鲁棒LRTF的流行策略。但是,由于L1-范数LRTF算法的非凸性和非平滑性以及数据的高阶结构,因此很少开发。在本文中,我们提出了一种新颖的循环加权中值(CWM)方法来解决L1-范数LRTF问题。主要思想是递归优化L1范数LRTF问题中涉及的每个坐标,并固定所有其他坐标。这些单标量参数子问题中的每一个都是凸的,并且可以通过加权中值滤波器轻松解决,因此可以轻松构造有效的算法来解决原始的复杂问题。我们对合成数据和真实面部数据进行的大量实验表明,在存在异常值和/或缺失条目的情况下,所提出的方法比以前的方法具有更强的鲁棒性。

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