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Cluster-Specific Variable Selection for Product Partition Models

机译:产品分区模型的特定于群集的变量选择

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摘要

We propose a random partition model that implements prediction with many candidate covariates and interactions. The model is based on a modified product partition model that includes a regression on covariates by favouring homogeneous clusters in terms of these covariates. Additionally, the model allows for a cluster-specific choice of the covariates that are included in this evaluation of homogeneity. The variable selection is implemented by introducing a set of cluster-specific latent indicators that include or exclude covariates. The proposed model is motivated by an application to predicting mortality in an intensive care unit in Lisboa, Portugal.
机译:我们提出了一个随机分区模型,该模型通过许多候选协变量和交互作用来实现预测。该模型基于修改后的产品划分模型,该模型包括通过在协变量方面偏向于均质聚类来对协变量进行回归。此外,该模型允许对均一性评估中包括的协变量进行集群特定选择。通过引入一组包含或排除协变量的特定于集群的潜在指标来实现变量选择。所提出的模型的动机是通过预测葡萄牙里斯本的重症监护病房的死亡率。

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