On the Selection of Tuning Parameters for Patch-Stitching Embedding Methods
Abstract
While classical scaling, just like principal component analysis, is parameter-free, other methods for embedding multivariate data require the selection of one or several tuning parameters. This tuning can be difficult due to the unsupervised nature of the situation. We propose a simple, almost obvious, approach to supervise the choice of tuning parameter(s): minimize a notion of stress. We apply this approach to the selection of the patch size in a prototypical patch-stitching embedding method, both in the multidimensional scaling (aka network localization) setting and in the dimensionality reduction (aka manifold learning) setting. In our study, we uncover a new bias--variance tradeoff phenomenon.
Cite
@article{arxiv.2207.07218,
title = {On the Selection of Tuning Parameters for Patch-Stitching Embedding Methods},
author = {Ery Arias-Castro and Phong Alain Chau},
journal= {arXiv preprint arXiv:2207.07218},
year = {2023}
}
Comments
Title change. Theory was removed to spin off another paper [arXiv:2310.10900]