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Penalized estimation in additive varying coefficient models using grouped regularization

机译:使用分组正则化的加性变化系数模型中的惩罚估计

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Additive varying coefficient models are a natural extension of multiple linear regression models, allowing the regression coefficients to be functions of other variables. Therefore these models are more flexible to model more complex dependencies in data structures. In this paper we consider the problem of selecting in an automaticway the significant variables among a large set of variables,when the interest is on a given response variable. In recent years several grouped regularizationmethods have been proposed and in this paper we present these under one unified framework in this varying coefficient model context. For each of the discussed grouped regularization methods we investigate the optimization problem to be solved, possible algorithms for doing so, and the variable and estimation consistency of the methods. We investigate the finite-sample performance of these methods, in a comparative study, and illustrate them on real data examples.
机译:加性变化系数模型是多个线性回归模型的自然扩展,允许回归系数成为其他变量的函数。因此,这些模型更灵活,可以对数据结构中更复杂的依赖性进行建模。在本文中,我们考虑了当兴趣集中在给定响应变量上时,从大量变量中自动选择重要变量的问题。近年来,已经提出了几种分组的正则化方法,在本文中,我们在这种变化系数模型的环境下,在一个统一的框架下提出了这些方法。对于每种讨论的分组正则化方法,我们研究要解决的优化问题,可能的算法,以及方法的变量和估计一致性。在一项比较研究中,我们调查了这些方法的有限样本性能,并在实际数据示例中进行了说明。

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