具有已知标签的高斯混杂模型的多重响应回归。

IF 2.1 4区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Statistical Analysis and Data Mining Pub Date : 2012-12-01 DOI:10.1002/sam.11158
Wonyul Lee, Ying Du, Wei Sun, D Neil Hayes, Yufeng Liu
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引用次数: 0

摘要

多重响应回归是一种有用的回归技术,可使用同一组预测变量对多个响应变量进行建模。大多数现有的多重响应回归方法都是为同质数据建模而设计的。然而,在许多应用中,人们可能会遇到样本被分为多组的异质数据。我们以癌症数据集为例,其中的样本属于多种癌症亚型。在本文中,我们考虑对来自多个高斯分布混合物的数据进行建模,这些混合物具有已知的组标签。最简单的方法是根据标签将数据分成几组,然后分别对每组数据建模。这种方法虽然简单,却忽略了不同组之间潜在的共同结构。我们提出了新的惩罚性方法,对所有组别进行联合建模,从而识别出共同和独特的结构。所提出的方法可以估计回归系数矩阵以及响应变量的条件逆协方差矩阵。我们探讨了所提方法的渐近特性。通过数值示例,我们证明了使用所提出的方法对所有组进行联合建模,可以改进估计和预测。对胶质母细胞瘤癌症数据集的应用揭示了不同癌症亚型中一些有趣的共同和独特基因关系。
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Multiple Response Regression for Gaussian Mixture Models with Known Labels.

Multiple response regression is a useful regression technique to model multiple response variables using the same set of predictor variables. Most existing methods for multiple response regression are designed for modeling homogeneous data. In many applications, however, one may have heterogeneous data where the samples are divided into multiple groups. Our motivating example is a cancer dataset where the samples belong to multiple cancer subtypes. In this paper, we consider modeling the data coming from a mixture of several Gaussian distributions with known group labels. A naive approach is to split the data into several groups according to the labels and model each group separately. Although it is simple, this approach ignores potential common structures across different groups. We propose new penalized methods to model all groups jointly in which the common and unique structures can be identified. The proposed methods estimate the regression coefficient matrix, as well as the conditional inverse covariance matrix of response variables. Asymptotic properties of the proposed methods are explored. Through numerical examples, we demonstrate that both estimation and prediction can be improved by modeling all groups jointly using the proposed methods. An application to a glioblastoma cancer dataset reveals some interesting common and unique gene relationships across different cancer subtypes.

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来源期刊
Statistical Analysis and Data Mining
Statistical Analysis and Data Mining COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.20
自引率
7.70%
发文量
43
期刊介绍: Statistical Analysis and Data Mining addresses the broad area of data analysis, including statistical approaches, machine learning, data mining, and applications. Topics include statistical and computational approaches for analyzing massive and complex datasets, novel statistical and/or machine learning methods and theory, and state-of-the-art applications with high impact. Of special interest are articles that describe innovative analytical techniques, and discuss their application to real problems, in such a way that they are accessible and beneficial to domain experts across science, engineering, and commerce. The focus of the journal is on papers which satisfy one or more of the following criteria: Solve data analysis problems associated with massive, complex datasets Develop innovative statistical approaches, machine learning algorithms, or methods integrating ideas across disciplines, e.g., statistics, computer science, electrical engineering, operation research. Formulate and solve high-impact real-world problems which challenge existing paradigms via new statistical and/or computational models Provide survey to prominent research topics.
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