作者
Manolis C Tsakiris, Liangzu Peng, Aldo Conca, Laurent Kneip, Yuanming Shi, Hayoung Choi
发表日期
2020/2/28
期刊
IEEE Transactions on Information Theory
卷号
66
期号
8
页码范围
5130-5144
出版商
IEEE
简介
Linear regression without correspondences is the problem of performing a linear regression fit to a dataset for which the correspondences between the independent samples and the observations are unknown. Such a problem naturally arises in diverse domains such as computer vision, data mining, communications and biology. In its simplest form, it is tantamount to solving a linear system of equations, for which the entries of the right hand side vector have been permuted. This type of data corruption renders the linear regression task considerably harder, even in the absence of other corruptions, such as noise, outliers or missing entries. Existing methods are either applicable only to noiseless data or they are very sensitive to initialization or they work only for partially shuffled data. In this paper we address these issues via an algebraic geometric approach, which uses symmetric polynomials to extract permutation …
引用总数
20192020202120222023202412713135
学术搜索中的文章
MC Tsakiris, L Peng, A Conca, L Kneip, Y Shi, H Choi - IEEE Transactions on Information Theory, 2020