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Generalized integrative principal component analysis for multi-type data with block-wise missing structure

机译:具有块状缺失结构的多型数据的广义一体化主成分分析

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摘要

High-dimensional multi-source data are encountered in many fields. Despite recent developments on the integrative dimension reduction of such data, most existing methods cannot easily accommodate data of multiple types (e.g. binary or count-valued). Moreover, multi-source data often have block-wise missing structure, i.e. data in one or more sources may be completely unobserved for a sample. The heterogeneous data types and presence of block-wise missing data pose significant challenges to the integration of multi-source data and further statistical analyses. In this article, we develop a low-rank method, called generalized integrative principal component analysis (GIPCA), for the simultaneous dimension reduction and imputation of multi-source block-wise missing data, where different sources may have different data types. We also devise an adapted Bayesian information criterion (BIC) criterion for rank estimation. Comprehensive simulation studies demonstrate the efficacy of the proposed method in terms of rank estimation, signal recovery, and missing data imputation. We apply GIPCA to a mortality study. We achieve accurate block-wise missing data imputation and identify intriguing latent mortality rate patterns with sociological relevance.
机译:在许多字段中遇到高维多源数据。尽管最近对这种数据的综合维度降低了发展,但大多数现有方法不能容易地容纳多种类型的数据(例如二进制或计数值)。此外,多源数据通常具有块明智的结构,即一个或多个源中的数据可以完全未被观察到样本。异构数据类型和块明智的数据的存在对多源数据的集成以及进一步的统计分析构成了重大挑战。在本文中,我们开发了一个较低级别的方法,称为广义综合主成分分析(GIPCA),用于同时尺寸减小和归因于多源块缺失数据,其中不同的源可能具有不同的数据类型。我们还为等级估算设计了适应的贝叶斯信息标准(BIC)标准。综合仿真研究表明了所提出的方法在等级估计,信号恢复和缺失数据归档方面的功效。我们将GIPCA应用于死亡率。我们实现了具有社会学相关性的精确块缺失的数据归档,并识别有趣的潜在死亡率模式。

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