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Combining Labeled and Unlabeled Data for MultiClass Text Categorization

104

Citations

0

References

2002

Year

Rayid Ghani

Unknown Venue

Abstract

Supervised learning techniques for text classification often require a large number of labeled examples to learn accurately. One way to reduce the amount of labeled data required is to develop algorithms that can learn effectively from a small number of labeled examples augmented with a large number of unlabeled examples. Current text learning techniques for combining labeled and unlabeled, such as EM and Co-Training, are mostly applicable for classification tasks with a small number of classes and do not scale up well for large multiclass problems. In this paper, wedevelop a framework to incorporate unlabeled data in the Error-Correcting Output Coding (ECOC) setup by first decomposing multiclass problems into multiple binary problems and then using Co-Training to learn the individual binary classification problems.