English

Slice Weighted Average Regression

Methodology 2022-09-13 v1 Statistics Theory Statistics Theory

Abstract

It has previously been shown that ordinary least squares can be used to estimate the coefficients of the single-index model under only mild conditions. However, the estimator is non-robust leading to poor estimates for some models. In this paper we propose a new sliced least-squares estimator that utilizes ideas from Sliced Inverse Regression. Slices with problematic observations that contribute to high variability in the estimator can easily be down-weighted to robustify the procedure. The estimator is simple to implement and can result in vast improvements for some models when compared to the usual least-squares approach. While the estimator was initially conceived with the single-index model in mind, we also show that multiple directions can be obtained, therefore providing another notable advantage of using slicing with least squares. Several simulation studies and a real data example are included, as well as some comparisons with some other recent methods.

Keywords

Cite

@article{arxiv.2209.04616,
  title  = {Slice Weighted Average Regression},
  author = {Marina Masioti and Joshua Davies and Amanda Shaker and Luke A. Prendergast},
  journal= {arXiv preprint arXiv:2209.04616},
  year   = {2022}
}