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Sparse logistic principal components analysis for binary data

机译:二进制数据的稀疏逻辑主成分分析

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摘要

We develop a new principal components analysis (PCA) type dimension reduction method for binary data. Different from the standard PCA which is defined on the observed data, the proposed PCA is defined on the logit transform of the success probabilities of the binary observations. Sparsity is introduced to the principal component (PC) loading vectors for enhanced interpretability and more stable extraction of the principal components. Our sparse PCA is formulated as solving an optimization problem with a criterion function motivated from a penalized Bernoulli likelihood. A Majorization-Minimization algorithm is developed to efficiently solve the optimization problem. The effectiveness of the proposed sparse logistic PCA method is illustrated by application to a single nucleotide polymorphism data set and a simulation study. © Institute ol Mathematical Statistics, 2010.
机译:我们针对二进制数据开发了一种新的主​​成分分析(PCA)类型降维方法。与在观测数据上定义的标准PCA不同,提议的PCA是在二元观测成功概率的logit变换上定义的。稀疏性被引入到主成分(PC)加载向量中,以增强解释性和更稳定地提取主成分。我们的稀疏PCA被公式化为以受罚的伯努利似然性为动机,以准则函数来解决优化问题。为了有效地解决优化问题,开发了一种Majorization-Minimization算法。通过将其应用于单核苷酸多态性数据集和仿真研究,说明了所提出的稀疏逻辑PCA方法的有效性。 ©研究所数学统计,2010年。

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