Title :
Semi-Supervised Nearest Mean Classification Through a Constrained Log-Likelihood
Author :
Loog, Marco ; Jensen, Are Charles
Author_Institution :
Pattern Recognition Lab., Delft Univ. of Technol., Delft, Netherlands
Abstract :
We cast a semi-supervised nearest mean classifier, previously introduced by the first author, in a more principled log-likelihood formulation that is subject to constraints. This, in turn, leads us to make the important suggestion to not only investigate error rates of semi-supervised learners but also consider the risk they originally aim to optimize. We demonstrate empirically that in terms of classification error, mixed results are obtained when comparing supervised to semi-supervised nearest mean classification, while in terms of log-likelihood on the test set, the semi-supervised method consistently outperforms its supervised counterpart. Comparisons to self-learning, a standard approach in semi-supervised learning, are included to further clarify the way, in which our constrained nearest mean classifier improves over regular, supervised nearest mean classification.
Keywords :
learning (artificial intelligence); pattern classification; constrained log-likelihood; error classification; principled log-likelihood formulation; semisupervised learners; semisupervised nearest mean classification; Equations; Error analysis; Estimation; Gaussian distribution; Semisupervised learning; Standards; Training; Constrained estimation; inherent loss; log-likelihood; nearest centroid; nearest mean classifier; semi-supervised learning; surrogate loss; surrogate loss.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2329567