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Adaptive quantile low-rank matrix factorization

机译:自适应量级低级矩阵分解

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摘要

Low-rank matrix factorization (LRMF) has received much popularity owing to its successful applications in both computer vision and data mining. By assuming noise to come from a Gaussian, Laplace or mixture of Gaussian distributions, significant efforts have been made on optimizing the (weighted) L-1 or L-2-norm loss between an observed matrix and its bilinear factorization. However, the type of noise distribution is generally unknown in real applications and inappropriate assumptions will inevitably deteriorate the behavior of LRMF. On the other hand, real data are often corrupted by skew rather than symmetric noise. To tackle this problem, this paper presents a novel LRMF model called AQ-LRMF by modeling noise with a mixture of asymmetric Laplace distributions. An efficient algorithm based on the expectation-maximization (EM) algorithm is also offered to estimate the parameters involved in AQ-LRMF. The AQ-LRMF model possesses the advantage that it can approximate noise well no matter whether the real noise is symmetric or skew. The core idea of AQ-LRMF lies in solving a weighted L-1 problem with weights being learned from data. The experiments conducted on synthetic and real data sets show that AQ-LRMF outperforms several state-of-the-art techniques. Furthermore, AQ-LRMF also has the superiority over the other algorithms in terms of capturing local structural information contained in real images. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于其计算机视觉和数据挖掘成功的应用,低级矩阵分组(LRMF)已经受到了很大的普及。通过假设来自高斯,拉普拉斯或高斯分布的LAPLACH或混合的噪声,已经在优化观察到的基质及其双线性分解之间的(加权)L-1或L-2-NOM损耗来进行大量努力。然而,噪声分布类型通常在实际应用中均为未知,并且不可避免地将不可避免地恶化LRMF的行为。另一方面,实际数据通常由偏差而不是对称噪声损坏。为了解决这个问题,本文提出了一种新颖的LRMF模型,通过使用不对称拉普拉斯分布的混合物建模噪声来提出一个名为AQ-LRMF的新型LRMF模型。还提供了一种基于期望 - 最大化(EM)算法的有效算法来估计AQ-LRMF中涉及的参数。 AQ-LRMF模型具有可利用近似噪声的优点,无论真正的噪声是否是对称的或歪斜。 AQ-LRMF的核心思想在于解决从数据学习的权重的加权L-1问题。对合成和实数据集进行的实验表明,AQ-LRMF优于几种最先进的技术。此外,在捕获真实图像中包含的局部结构信息方面,AQ-LRMF还具有对其他算法的优越性。 (c)2020 elestvier有限公司保留所有权利。

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