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Understanding l4-based Dictionary Learning: Interpretation, Stability, and Robustness

2020-05-01ICLR 2020Code Available0· sign in to hype

Yuexiang Zhai, Hermish Mehta, Zhengyuan Zhou, Yi Ma

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Abstract

Recently, the ^4-norm maximization has been proposed to solve the sparse dictionary learning (SDL) problem. The simple MSP (matching, stretching, and projection) algorithm proposed by zhai2019a has proved surprisingly efficient and effective. This paper aims to better understand this algorithm from its strong geometric and statistical connections with the classic PCA and ICA, as well as their associated fixed-point style algorithms. Such connections provide a unified way of viewing problems that pursue principal, independent, or sparse components of high-dimensional data. Our studies reveal additional good properties of ^4-maximization: not only is the MSP algorithm for sparse coding insensitive to small noise, but it is also robust to outliers and resilient to sparse corruptions. We provide statistical justification for such inherently nice properties. To corroborate the theoretical analysis, we also provide extensive and compelling experimental evidence with both synthetic data and real images.

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