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Finite mixture regression: A sparse variable selection by model selection for clustering

机译:有限混合回归:通过模型选择进行聚类的稀疏变量选择

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We consider a finite mixture of Gaussian regression models for high-dimensional data, where the number of covariates may be much larger than the sample size. We propose to estimate the unknown conditional mixture density by a maximum likelihood estimator, restricted on relevant variables selected by an $ell_{1}$-penalized maximum likelihood estimator. We get an oracle inequality satisfied by this estimator with a Jensen-Kullback-Leibler type loss. Our oracle inequality is deduced from a general model selection theorem for maximum likelihood estimators on a random model subcollection. We can derive the penalty shape of the criterion, which depends on the complexity of the random model collection.
机译:对于高维数据,我们考虑高斯回归模型的有限混合,其中协变量的数量可能远大于样本量。我们建议通过最大似然估计器来估计未知条件混合密度,该条件受限于由 ell_ {1} $惩罚的最大似然估计器选择的相关变量。我们得到了这个估计量满足Jensen-Kullback-Leibler类型损失的预言不等式。我们的oracle不等式是根据随机模型子集合上最大似然估计的一般模型选择定理推导出的。我们可以得出准则的惩罚形状,这取决于随机模型集合的复杂性。

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