Kernel Selection for Modal Linear Regression: Optimal Kernel and IRLS Algorithm
Abstract
Modal linear regression (MLR) is a method for obtaining a conditional mode predictor as a linear model. We study kernel selection for MLR from two perspectives: "which kernel achieves smaller error?" and "which kernel is computationally efficient?". First, we show that a Biweight kernel is optimal in the sense of minimizing an asymptotic mean squared error of a resulting MLR parameter. This result is derived from our refined analysis of an asymptotic statistical behavior of MLR. Secondly, we provide a kernel class for which iteratively reweighted least-squares algorithm (IRLS) is guaranteed to converge, and especially prove that IRLS with an Epanechnikov kernel terminates in a finite number of iterations. Simulation studies empirically verified that using a Biweight kernel provides good estimation accuracy and that using an Epanechnikov kernel is computationally efficient. Our results improve MLR of which existing studies often stick to a Gaussian kernel and modal EM algorithm specialized for it, by providing guidelines of kernel selection.
Cite
@article{arxiv.2001.11168,
title = {Kernel Selection for Modal Linear Regression: Optimal Kernel and IRLS Algorithm},
author = {Ryoya Yamasaki and Toshiyuki Tanaka},
journal= {arXiv preprint arXiv:2001.11168},
year = {2020}
}
Comments
7 pages, 4 figures, published in the proceedings of the 18th IEEE International Conference on Machine Learning and Applications - ICMLA 2019