Post Selection Inference with Kernels
Abstract
We propose a novel kernel based post selection inference (PSI) algorithm, which can not only handle non-linearity in data but also structured output such as multi-dimensional and multi-label outputs. Specifically, we develop a PSI algorithm for independence measures, and propose the Hilbert-Schmidt Independence Criterion (HSIC) based PSI algorithm (hsicInf). The novelty of the proposed algorithm is that it can handle non-linearity and/or structured data through kernels. Namely, the proposed algorithm can be used for wider range of applications including nonlinear multi-class classification and multi-variate regressions, while existing PSI algorithms cannot handle them. Through synthetic experiments, we show that the proposed approach can find a set of statistically significant features for both regression and classification problems. Moreover, we apply the hsicInf algorithm to a real-world data, and show that hsicInf can successfully identify important features.
Keywords
Cite
@article{arxiv.1610.03725,
title = {Post Selection Inference with Kernels},
author = {Makoto Yamada and Yuta Umezu and Kenji Fukumizu and Ichiro Takeuchi},
journal= {arXiv preprint arXiv:1610.03725},
year = {2016}
}