基于网络结构协变量的多类分析与预测

Q2 Mathematics
Li-Pang Chen, Grace Y. Yi, Qihuang Zhang, Wenqing He
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引用次数: 7

摘要

与数据采集相关的技术进步导致了复杂结构化数据集的产生。近年来多类响应分类研究的发展使预测因子的依赖结构得以纳入。然而,可用的方法受到限制性要求的阻碍。这些方法基本上假设所有受试者的预测因子都有一个共同的网络结构,而没有考虑到不同类别中存在的异质性。此外,这些方法主要集中在预测因子的正态分布情况下。在本文中,我们提出了解决这些限制的分类方法。我们的方法在处理变量可能依赖于类的网络结构方面是灵活的,并允许预测器遵循指数族中的分布,其中包括正态分布作为一种特殊情况。我们的方法在计算上很容易实现。数值研究证明了所提方法的令人满意的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiclass analysis and prediction with network structured covariates
Technological advances associated with data acquisition are leading to the production of complex structured data sets. The recent development on classification with multiclass responses makes it possible to incorporate the dependence structure of predictors. The available methods, however, are hindered by the restrictive requirements. Those methods basically assume a common network structure for predictors of all subjects without taking into account the heterogeneity existing in different classes. Furthermore, those methods mainly focus on the case where the distribution of predictors is normal. In this paper, we propose classification methods which address these limitations. Our methods are flexible in handling possibly class-dependent network structures of variables and allow the predictors to follow a distribution in the exponential family which includes normal distributions as a special case. Our methods are computationally easy to implement. Numerical studies are conducted to demonstrate the satisfactory performance of the proposed methods.
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来源期刊
Journal of Statistical Distributions and Applications
Journal of Statistical Distributions and Applications Decision Sciences-Statistics, Probability and Uncertainty
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审稿时长
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