Rank based Least-squares Independent Component Analysis

Jafar Rahmanishamsi, A. Dolati
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引用次数: 1

Abstract

. In this paper, we propose a nonparametric rank-based alternative to the least-squares independent component analysis algorithm developed. The basic idea is to estimate the squared-loss mutual information, which used as the objective function of the algorithm, based on its copula density version. Therefore, no marginal densities have to be estimated. We provide empirical evaluation of the proposed algorithm through simulation and real data analysis. Since the proposed algorithm uses rank values rather than the actual values of the observations, it is extremely robust to the outliers and suffers less from the presence of noise than the other algorithms.
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基于秩的最小二乘独立成分分析
. 在本文中,我们提出了一种基于非参数秩的替代最小二乘独立分量分析算法。其基本思想是基于其copula密度版本估计作为算法目标函数的平方损失互信息。因此,不需要估计边际密度。我们通过仿真和真实数据分析对所提出的算法进行了实证评估。由于所提出的算法使用秩值而不是观测值的实际值,因此它对异常值具有极强的鲁棒性,并且比其他算法受到的噪声影响更小。
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