Yang and Callan 2009

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Revision as of 21:07, 1 October 2012 by Ydalal (talk | contribs) (Created page with '[http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.164.5667 Weblink] == Abstract == This paper presents a novel metric-based framework for the task of automatic taxonomy i…')
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Abstract

This paper presents a novel metric-based framework for the task of automatic taxonomy induction. The framework incrementally clusters terms based on ontology metric, a score indicating semantic distance; and transforms the task into a multi-criteria optimization based on minimization of taxonomy structures and modeling of term abstractness. It combines the strengths of both lexico-syntactic patterns and clustering through incorporating heterogeneous features. The flexible design of the framework allows a further study on which features are the best for the task under various conditions. The experiments not only show that our system achieves higher F1-measure than other state-of-the-art systems, but also reveal the interaction between features and various types of relations, as well as the interaction between features and term abstractness.