Publication:
Probabilistic modeling of joint-context in distributional similarity

Placeholder

Departments

School / College / Institute

Program

KU-Authors

KU Authors

Co-Authors

Melamud, Oren
Dagan, Ido
Goldberger, Jacob
Szpektor, Idan

Publication Date

Language

Embargo Status

Journal Title

Journal ISSN

Volume Title

Alternative Title

Abstract

Most traditional distributional similarity models fail to capture syntagmatic patterns that group together multiple word features within the same joint context. In this work we introduce a novel generic distributional similarity scheme under which the power of probabilistic models can be leveraged to effectively model joint contexts. Based on this scheme, we implement a concrete model which utilizes probabilistic n-gram language models. Our evaluations suggest that this model is particularly well-suited for measuring similarity for verbs, which are known to exhibit richer syntagmatic patterns, while maintaining comparable or better performance with respect to competitive baselines for nouns. Following this, we propose our scheme as a framework for future semantic similarity models leveraging the substantial body of work that exists in probabilistic language modeling.

Source

Publisher

Association for Computational Linguistics (ACL)

Subject

Computer science

Citation

Has Part

Source

CoNLL 2014 - 18th Conference on Computational Natural Language Learning, Proceedings

Book Series Title

Edition

DOI

10.3115/v1/w14-1619

item.page.datauri

Link

Rights

Copyrights Note

Endorsement

Review

Supplemented By

Referenced By

0

Views

0

Downloads

View PlumX Details