A Bayesian Approach to Spherical Factor Analysis for Binary Data

Xingchen Yu, Abel Rodríguez
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Abstract

Factor models are widely used across diverse areas of application for purposes that include dimensionality reduction, covariance estimation, and feature engineering. Traditional factor models can be seen as an instance of linear embedding methods that project multivariate observations onto a lower dimensional Euclidean latent space. This paper discusses a new class of geometric embedding models for multivariate binary data in which the embedding space correspond to a spherical manifold, with potentially unknown dimension. The resulting models include traditional factor models as a special case, but provide additional flexibility. Furthermore, unlike other techniques for geometric embedding, the models are easy to interpret, and the uncertainty associated with the latent features can be properly quantified. These advantages are illustrated using both simulation studies and real data on voting records from the U.S. Senate.
二值数据球面因子分析的贝叶斯方法
因子模型广泛应用于不同的应用领域,包括降维、协方差估计和特征工程。传统的因子模型可以看作是线性嵌入方法的一个实例,它将多变量观测投影到较低维的欧几里得潜空间上。本文讨论了一类新的多元二值数据的几何嵌入模型,其中嵌入空间对应于一个可能未知维数的球面流形。生成的模型包括传统的因子模型作为特例,但提供了额外的灵活性。此外,与其他几何嵌入技术不同,该模型易于解释,并且与潜在特征相关的不确定性可以适当量化。这些优势可以通过模拟研究和美国参议院投票记录的真实数据来说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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