主成分分析的非递减凹正则化极小化

IF 3.2 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Qinghai Zheng;Yixin Zhuang
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引用次数: 0

摘要

主成分分析(PCA)是一种广泛应用于信号处理的方法,它利用线性变换对高维数据进行压缩和恢复。考虑到主成分分析的鲁棒性,如何在主成分分析中区分正确的样本和异常值是一个关键而具有挑战性的问题。在本文中,我们提出了一个通用模型,该模型通过非递减凹正则化最小化来进行主成分分析,简称PCA- ncrm。现有的大多数PCA方法通过最小化恢复数据与原始数据在最小二乘意义上的恢复误差来学习线性变换,而我们的模型采用单调不减小的凹函数来提高模型区分正确样本和离群点的能力。具体而言,PCA-NCRM增加了对恢复误差较小的样本的关注,同时减少了对恢复误差较大的样本的关注。所提出的最小化问题可以通过采用迭代重加权优化有效地解决。在多个数据集上的实验结果表明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Decreasing Concave Regularized Minimization for Principal Component Analysis
As a widely used method in signal processing, Principal Component Analysis (PCA) performs both the compression and the recovery of high dimensional data by leveraging the linear transformations. Considering the robustness of PCA, how to discriminate correct samples and outliers in PCA is a crucial and challenging issue. In this paper, we present a general model, which conducts PCA via a non-decreasing concave regularized minimization and is termed PCA-NCRM for short. Different from most existing PCA methods, which learn the linear transformations by minimizing the recovery errors between the recovered data and the original data in the least squared sense, our model adopts the monotonically non-decreasing concave function to enhance the ability of model in distinguishing correct samples and outliers. To be specific, PCA-NCRM enlarges the attention to samples with smaller recovery errors and diminishes the attention to samples with larger recovery errors at the same time. The proposed minimization problem can be efficiently addressed by employing an iterative re-weighting optimization. Experimental results on several datasets show the effectiveness of our model.
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来源期刊
IEEE Signal Processing Letters
IEEE Signal Processing Letters 工程技术-工程:电子与电气
CiteScore
7.40
自引率
12.80%
发文量
339
审稿时长
2.8 months
期刊介绍: The IEEE Signal Processing Letters is a monthly, archival publication designed to provide rapid dissemination of original, cutting-edge ideas and timely, significant contributions in signal, image, speech, language and audio processing. Papers published in the Letters can be presented within one year of their appearance in signal processing conferences such as ICASSP, GlobalSIP and ICIP, and also in several workshop organized by the Signal Processing Society.
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