Article ID Journal Published Year Pages File Type
1873534 Physics Procedia 2012 7 Pages PDF
Abstract

This paper presents a method for designing semi-supervised classifier trained on labeled and unlabeled instances. We explore the trade-off maximizing a generative likelihood of labeled and unlabeled data. Moreover, mixture models are an interesting and flexible model family. The different uses of mixture models include for example generative models and density estimation. This paper investigates semi-supervised learning of mixture models using a unified objective function taking both labeled and unlabeled data into account. We conducted experiments on the WebKB and 20NEWSGROUPS. The results show that unlabeled data results in improvement in classification accuracy over the supervised model.

Related Topics
Physical Sciences and Engineering Physics and Astronomy Physics and Astronomy (General)