Uncertainty reduction in collaborative bootstrapping: Measure and algorithm

ISSN: 0736587X
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Abstract

This paper proposes the use of uncertainty reduction in machine learning methods such as co-training and bilingual bootstrapping, which are referred to, in a general term, as 'collaborative bootstrapping'. The paper indicates that uncertainty reduction is an important factor for enhancing the performance of collaborative bootstrapping. It proposes a new measure for representing the degree of uncertainty correlation of the two classifiers in collaborative bootstrapping and uses the measure in analysis of collaborative bootstrapping. Furthermore, it proposes a new algorithm of collaborative bootstrapping on the basis of uncertainty reduction. Experimental results have verified the correctness of the analysis and have demonstrated the significance of the new algorithm.

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APA

Cao, Y., Li, H., & Lian, L. (2003). Uncertainty reduction in collaborative bootstrapping: Measure and algorithm. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 2003-July). Association for Computational Linguistics (ACL).

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