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Group Factor Analysis

机译:群体因素分析

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摘要

Factor analysis (FA) provides linear factors that describe the relationships between individual variables of a data set. We extend this classical formulation into linear factors that describe the relationships between groups of variables, where each group represents either a set of related variables or a data set. The model also naturally extends canonical correlation analysis to more than two sets, in a way that is more flexible than previous extensions. Our solution is formulated as a variational inference of a latent variable model with structural sparsity, and it consists of two hierarchical levels: 1) the higher level models the relationships between the groups and 2) the lower models the observed variables given the higher level. We show that the resulting solution solves the group factor analysis (GFA) problem accurately, outperforming alternative FA-based solutions as well as more straightforward implementations of GFA. The method is demonstrated on two life science data sets, one on brain activation and the other on systems biology, illustrating its applicability to the analysis of different types of high-dimensional data sources.
机译:因子分析(FA)提供了线性因子,用于描述数据集各个变量之间的关系。我们将此经典公式扩展为描述变量组之间关系的线性因子,其中每组代表一组相关变量或一个数据集。该模型还自然地将规范相关性分析扩展到两个以上的集合,其方式比以前的扩展更加灵活。我们的解决方案被公式化为具有结构稀疏性的潜在变量模型的变分推理,它包括两个层次级别:1)较高级别对组之间的关系进行建模; 2)较低级别对观察到的变量进行建模(给定较高级别)。我们表明,最终的解决方案可以准确地解决组因子分析(GFA)问题,胜过基于FA的替代解决方案以及GFA的更直接实现。在两个生命科学数据集上演示了该方法,一个数据集涉及大脑激活,另一个数据集涉及系统生物学,说明了该方法适用于分析不同类型的高维数据源。

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