Projective inference in high-dimensional problems: Prediction and feature selection

Juho Piironen, Markus Paasiniemi,Aki Vehtari

ELECTRONIC JOURNAL OF STATISTICS(2020)

引用 39|浏览7
暂无评分
摘要
This paper reviews predictive inference and feature selection for generalized linear models with scarce but high-dimensional data. We demonstrate that in many cases one can benefit from a decision theoretically justified two-stage approach: first, construct a possibly non-sparse model that predicts well, and then find a minimal subset of features that characterize the predictions. The model built in the first step is referred to as the reference model and the operation during the latter step as predictive projection. The key characteristic of this approach is that it finds an excellent tradeoff between sparsity and predictive accuracy, and the gain comes from utilizing all available information including prior and that coming from the left out features. We review several methods that follow this principle and provide novel methodological contributions. We present a new projection technique that unifies two existing techniques and is both accurate and fast to compute. We also propose a way of evaluating the feature selection process using fast leave-one-out cross-validation that allows for easy and intuitive model size selection. Furthermore, we prove a theorem that helps to understand the conditions under which the projective approach could be beneficial. The key ideas are illustrated via several experiments using simulated and real world data.
更多
查看译文
关键词
Projection,prediction,feature selection,sparsity,post-selection inference
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要