Sparse Linear Centroid-Encoder: A Convex Method for Feature Selection
Abstract
We present a novel feature selection technique, Sparse Linear Centroid-Encoder (SLCE). The algorithm uses a linear transformation to reconstruct a point as its class centroid and, at the same time, uses the -norm penalty to filter out unnecessary features from the input data. The original formulation of the optimization problem is nonconvex, but we propose a two-step approach, where each step is convex. In the first step, we solve the linear Centroid-Encoder, a convex optimization problem over a matrix . In the second step, we only search for a sparse solution over a diagonal matrix while keeping fixed. Unlike other linear methods, e.g., Sparse Support Vector Machines and Lasso, Sparse Linear Centroid-Encoder uses a single model for multi-class data. We present an in-depth empirical analysis of the proposed model and show that it promotes sparsity on various data sets, including high-dimensional biological data. Our experimental results show that SLCE has a performance advantage over some state-of-the-art neural network-based feature selection techniques.
Cite
@article{arxiv.2306.04824,
title = {Sparse Linear Centroid-Encoder: A Convex Method for Feature Selection},
author = {Tomojit Ghosh and Michael Kirby and Karim Karimov},
journal= {arXiv preprint arXiv:2306.04824},
year = {2023}
}
Comments
A novel linear feature selection technique using convex optimization. Total 13 pages including references, 7 figures. The article is under review