Forward selection and estimation in high dimensional single index models

Q Mathematics Statistical Methodology Pub Date : 2016-12-01 DOI:10.1016/j.stamet.2016.09.002
Shikai Luo, Subhashis Ghosal
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引用次数: 25

Abstract

We propose a new variable selection and estimation technique for high dimensional single index models with unknown monotone smooth link function. Among many predictors, typically, only a small fraction of them have significant impact on prediction. In such a situation, more interpretable models with better prediction accuracy can be obtained by variable selection. In this article, we propose a new penalized forward selection technique which can reduce high dimensional optimization problems to several one dimensional optimization problems by choosing the best predictor and then iterating the selection steps until convergence. The advantage of optimizing in one dimension is that the location of optimum solution can be obtained with an intelligent search by exploiting smoothness of the criterion function. Moreover, these one dimensional optimization problems can be solved in parallel to reduce computing time nearly to the level of the one-predictor problem. Numerical comparison with the LASSO and the shrinkage sliced inverse regression shows very promising performance of our proposed method.

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高维单指标模型的前向选择与估计
针对未知单调光滑连接函数的高维单指标模型,提出了一种新的变量选择和估计方法。在众多预测因子中,通常只有一小部分对预测有显著影响。在这种情况下,通过变量选择可以获得更多的可解释模型和更好的预测精度。在本文中,我们提出了一种新的惩罚正向选择技术,通过选择最佳的预测器,然后迭代选择步骤直到收敛,将高维优化问题减少到几个一维优化问题。一维优化的优点是利用准则函数的平滑性,通过智能搜索得到最优解的位置。此外,这些一维优化问题可以并行解决,从而将计算时间减少到接近单预测器问题的水平。与LASSO和收缩切片逆回归的数值比较表明,该方法具有良好的性能。
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来源期刊
Statistical Methodology
Statistical Methodology STATISTICS & PROBABILITY-
CiteScore
0.59
自引率
0.00%
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0
期刊介绍: Statistical Methodology aims to publish articles of high quality reflecting the varied facets of contemporary statistical theory as well as of significant applications. In addition to helping to stimulate research, the journal intends to bring about interactions among statisticians and scientists in other disciplines broadly interested in statistical methodology. The journal focuses on traditional areas such as statistical inference, multivariate analysis, design of experiments, sampling theory, regression analysis, re-sampling methods, time series, nonparametric statistics, etc., and also gives special emphasis to established as well as emerging applied areas.
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