Authors
Pavan Kumar Mallapragada, Rong Jin, Anil K Jain, Yi Liu
Publication date
2008/9/26
Journal
IEEE transactions on pattern analysis and machine intelligence
Volume
31
Issue
11
Pages
2000-2014
Publisher
IEEE
Description
Semi-supervised learning has attracted a significant amount of attention in pattern recognition and machine learning. Most previous studies have focused on designing special algorithms to effectively exploit the unlabeled data in conjunction with labeled data. Our goal is to improve the classification accuracy of any given supervised learning algorithm by using the available unlabeled examples. We call this as the Semi-supervised improvement problem, to distinguish the proposed approach from the existing approaches. We design a metasemi-supervised learning algorithm that wraps around the underlying supervised algorithm and improves its performance using unlabeled data. This problem is particularly important when we need to train a supervised learning algorithm with a limited number of labeled examples and a multitude of unlabeled examples. We present a boosting framework for semi-supervised …
Total citations
2008200920102011201220132014201520162017201820192020202120222023202469193234334037373232252731232110
Scholar articles
PK Mallapragada, R Jin, AK Jain, Y Liu - IEEE transactions on pattern analysis and machine …, 2008