Matrix regression heterogeneity analysis

IF 1.6 2区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS
Fengchuan Zhang, Sanguo Zhang, Shi-Ming Li, Mingyang Ren
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引用次数: 0

Abstract

The development of modern science and technology has facilitated the collection of a large amount of matrix data in fields such as biomedicine. Matrix data modeling has been extensively studied, which advances from the naive approach of flattening the matrix into a vector. However, existing matrix modeling methods mainly focus on homogeneous data, failing to handle the data heterogeneity frequently encountered in the biomedical field, where samples from the same study belong to several underlying subgroups, and different subgroups follow different models. In this paper, we focus on regression-based heterogeneity analysis. We propose a matrix data heterogeneity analysis framework, by combining matrix bilinear sparse decomposition and penalized fusion techniques, which enables data-driven subgroup detection, including determining the number of subgroups and subgrouping membership. A rigorous theoretical analysis is conducted, including asymptotic consistency in terms of subgroup detection, the number of subgroups, and regression coefficients. Numerous numerical studies based on simulated and real data have been constructed, showcasing the superior performance of the proposed method in analyzing matrix heterogeneous data.

Abstract Image

矩阵回归异质性分析
现代科学技术的发展促进了生物医学等领域大量矩阵数据的收集。矩阵数据建模已被广泛研究,它从将矩阵扁平化为矢量的天真方法中发展而来。然而,现有的矩阵建模方法主要针对同质数据,无法处理生物医学领域经常遇到的数据异质性问题,即同一研究的样本属于多个基础亚组,而不同的亚组遵循不同的模型。本文重点研究基于回归的异质性分析。我们结合矩阵双线性稀疏分解和惩罚融合技术,提出了一种矩阵数据异质性分析框架,实现了数据驱动的亚组检测,包括确定亚组数量和亚组成员。我们进行了严格的理论分析,包括子群检测、子群数量和回归系数的渐进一致性。基于模拟数据和真实数据构建了大量数值研究,展示了所提方法在分析矩阵异构数据时的优越性能。
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来源期刊
Statistics and Computing
Statistics and Computing 数学-计算机:理论方法
CiteScore
3.20
自引率
4.50%
发文量
93
审稿时长
6-12 weeks
期刊介绍: Statistics and Computing is a bi-monthly refereed journal which publishes papers covering the range of the interface between the statistical and computing sciences. In particular, it addresses the use of statistical concepts in computing science, for example in machine learning, computer vision and data analytics, as well as the use of computers in data modelling, prediction and analysis. Specific topics which are covered include: techniques for evaluating analytically intractable problems such as bootstrap resampling, Markov chain Monte Carlo, sequential Monte Carlo, approximate Bayesian computation, search and optimization methods, stochastic simulation and Monte Carlo, graphics, computer environments, statistical approaches to software errors, information retrieval, machine learning, statistics of databases and database technology, huge data sets and big data analytics, computer algebra, graphical models, image processing, tomography, inverse problems and uncertainty quantification. In addition, the journal contains original research reports, authoritative review papers, discussed papers, and occasional special issues on particular topics or carrying proceedings of relevant conferences. Statistics and Computing also publishes book review and software review sections.
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