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Sparse group lasso for multiclass functional logistic regression models

机译:稀疏组套索用于多类功能Logistic回归模型

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摘要

Sparsity-inducing penalties are useful tools for variable selection and are also effective for regression problems where the data are functions. We consider the problem of selecting not only variables but also decision boundaries in multiclass logistic regression models for functional data, using sparse regularization. The parameters of the functional logistic regression model are estimated in the framework of the penalized likelihood method with the sparse group lasso-type penalty, and then tuning parameters for the model are selected using the model selection criterion. The effectiveness of the proposed method is investigated through simulation studies and the analysis of a gene expression data set.
机译:稀疏性惩罚是变量选择的有用工具,对于以数据为函数的回归问题也很有效。我们考虑使用稀疏正则化在功能数据的多类逻辑回归模型中不仅选择变量而且选择决策边界的问题。在稀疏组套索类型罚分的惩罚似然法框架内,估计功能逻辑回归模型的参数,然后使用模型选择标准为模型选择调整参数。通过仿真研究和基因表达数据集的分析,研究了该方法的有效性。

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