Feature selection for spectral clustering: to help or not to help spectral clustering when performing sense discrimination for IR?

Author:

Chifu Adrian-Gabriel,Hristea Florentina

Abstract

Abstract Whether or not word sense disambiguation (WSD) can improve information retrieval (IR) results represents a topic that has been intensely debated over the years, with many inconclusive or contradictory conclusions. The most rarely used type of WSD for this task is the unsupervised one, although it has been proven to be beneficial at a large scale. Our study builds on existing research and tries to improve the most recent unsupervised method which is based on spectral clustering. It investigates the possible benefits of “helping” spectral clustering through feature selection when it performs sense discrimination for IR. Results obtained so far, involving large data collections, encourage us to point out the importance of feature selection even in the case of this advanced, state of the art clustering technique that is known for performing its own feature weighting. By suggesting an improvement of what we consider the most promising approach to usage of WSD in IR, and by commenting on its possible extensions, we state that WSD still holds a promise for IR and hope to stimulate continuation of this line of research, perhaps at an even more successful level.

Publisher

Walter de Gruyter GmbH

Subject

General Computer Science

Reference24 articles.

1. Supervised corpus based forWSD In Sense and Technology;Màrquez;methods Word Disambiguation Text Speech Language Springer Dordrecht,2007

2. Semantic indexing using WordNet senses In : Proceedings of the workshop on Recent Advances in Natural Language Processing and held in conjunction with the th Annual Meeting of the Association for - Volume Association for Stroudsburg PA;Mihalcea;Information Retrieval Computational Linguistics Computational Linguistics USA,2000

3. word sense discrimination of;Schütze;Automatic Journal Computational Linguistics,1998

4. iuc - Pietro word sense disambiguation with gram features;Preot;Artificial Intelligence Review,2014

5. retrieval based on word senses In of the th annual Symposium on Document Analysis and;Schütze;Information Proceedings Information Retrieval,1995

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