Optimistic Semi-supervised Least Squares Classification
Abstract
The goal of semi-supervised learning is to improve supervised classifiers by using additional unlabeled training examples. In this work we study a simple self-learning approach to semi-supervised learning applied to the least squares classifier. We show that a soft-label and a hard-label variant of self-learning can be derived by applying block coordinate descent to two related but slightly different objective functions. The resulting soft-label approach is related to an idea about dealing with missing data that dates back to the 1930s. We show that the soft-label variant typically outperforms the hard-label variant on benchmark datasets and partially explain this behaviour by studying the relative difficulty of finding good local minima for the corresponding objective functions.
Cite
@article{arxiv.1610.03713,
title = {Optimistic Semi-supervised Least Squares Classification},
author = {Jesse H. Krijthe and Marco Loog},
journal= {arXiv preprint arXiv:1610.03713},
year = {2016}
}
Comments
6 pages, 6 figures. International Conference on Pattern Recognition (ICPR) 2016, Cancun, Mexico