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Learning Interactions via Hierarchical Group-Lasso Regularization

机译:通过分层组套索正则化学习交互

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摘要

We introduce a method for learning pairwise interactions in a linear regression or logistic regression model in a manner that satisfies strong hierarchy: whenever an interaction is estimated to be nonzero, both its associated main effects are also included in the model. We motivate our approach by modeling pairwise interactions for categorical variables with arbitrary numbers of levels, and then show how we can accommodate continuous variables as well. Our approach allows us to dispense with explicitly applying constraints on the main effects and interactions for identifiability, which results in interpretable interaction models. We compare our method with existing approaches on both simulated and real data, including a genome-wide association study, all using our R package glinternet.
机译:我们介绍了一种以满足强大层次结构的方式在线性回归或逻辑回归模型中学习成对交互的方法:每当交互被估计为非零时,其相关的两个主要影响也都包括在模型中。我们通过对具有任意数量级别的分类变量的成对交互建模来激发我们的方法,然后说明如何也可以容纳连续变量。我们的方法使我们可以免除对主要效果和交互的明确应用约束以实现可识别性,从而产生可解释的交互模型。我们将我们的方法与模拟和真实数据的现有方法进行了比较,包括使用R包glinternet进行的全基因组关联研究。

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