Part of Speech Based Term Weighting for Information Retrieval

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Part of Speech Based Term Weighting for Information Retrieval. / Lioma, Christina; Blanco, Roi.

ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval . 2009. p. 412-423.

Research output: Chapter in Book/Report/Conference proceedingArticle in proceedingsResearchpeer-review

Harvard

Lioma, C & Blanco, R 2009, Part of Speech Based Term Weighting for Information Retrieval. in ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval . pp. 412-423. <http://64.238.147.53/citation.cfm?id=1533720.1533768&coll=DL&dl=GUIDE&CFID=87655016&CFTOKEN=30826131>

APA

Lioma, C., & Blanco, R. (2009). Part of Speech Based Term Weighting for Information Retrieval. In ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval (pp. 412-423) http://64.238.147.53/citation.cfm?id=1533720.1533768&coll=DL&dl=GUIDE&CFID=87655016&CFTOKEN=30826131

Vancouver

Lioma C, Blanco R. Part of Speech Based Term Weighting for Information Retrieval. In ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval . 2009. p. 412-423

Author

Lioma, Christina ; Blanco, Roi. / Part of Speech Based Term Weighting for Information Retrieval. ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval . 2009. pp. 412-423

Bibtex

@inproceedings{8fca3dafe42a4c2ea4dfd2210c53ec97,
title = "Part of Speech Based Term Weighting for Information Retrieval",
abstract = "Automatic language processing tools typically assign to terms so-called `weights' corresponding to the contribution of terms to information content. Traditionally, term weights are computed from lexical statistics, e.g., term frequencies. We propose a new type of term weight that is computed from part of speech (POS) n-gram statistics. The proposed POS-based term weight represents how informative a term is in general, based on the `POS contexts' in which it generally occurs in language. We suggest five different computations of POS-based term weights by extending existing statistical approximations of term information measures. We apply these POS-based term weights to information retrieval, by integrating them into the model that matches documents to queries. Experiments with two TREC collections and 300 queries, using TF-IDF & BM25 as baselines, show that integrating our POS-based term weights to retrieval always leads to gains (up to +33.7% from the baseline). Additional experiments with a different retrieval model as baseline (Language Model with Dirichlet priors smoothing) and our best performing POS-based term weight, show retrieval gains always and consistently across the whole smoothing range of the baseline.",
author = "Christina Lioma and Roi Blanco",
note = "Published in: · Proceeding ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval Pages 412 - 423 Springer-Verlag Berlin, Heidelberg {\textcopyright}2009 ISBN: 978-3-642-00957-0 doi>10.1007/978-3-642-00958-7_37",
year = "2009",
language = "English",
pages = "412--423",
booktitle = "ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval",

}

RIS

TY - GEN

T1 - Part of Speech Based Term Weighting for Information Retrieval

AU - Lioma, Christina

AU - Blanco, Roi

N1 - Published in: · Proceeding ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval Pages 412 - 423 Springer-Verlag Berlin, Heidelberg ©2009 ISBN: 978-3-642-00957-0 doi>10.1007/978-3-642-00958-7_37

PY - 2009

Y1 - 2009

N2 - Automatic language processing tools typically assign to terms so-called `weights' corresponding to the contribution of terms to information content. Traditionally, term weights are computed from lexical statistics, e.g., term frequencies. We propose a new type of term weight that is computed from part of speech (POS) n-gram statistics. The proposed POS-based term weight represents how informative a term is in general, based on the `POS contexts' in which it generally occurs in language. We suggest five different computations of POS-based term weights by extending existing statistical approximations of term information measures. We apply these POS-based term weights to information retrieval, by integrating them into the model that matches documents to queries. Experiments with two TREC collections and 300 queries, using TF-IDF & BM25 as baselines, show that integrating our POS-based term weights to retrieval always leads to gains (up to +33.7% from the baseline). Additional experiments with a different retrieval model as baseline (Language Model with Dirichlet priors smoothing) and our best performing POS-based term weight, show retrieval gains always and consistently across the whole smoothing range of the baseline.

AB - Automatic language processing tools typically assign to terms so-called `weights' corresponding to the contribution of terms to information content. Traditionally, term weights are computed from lexical statistics, e.g., term frequencies. We propose a new type of term weight that is computed from part of speech (POS) n-gram statistics. The proposed POS-based term weight represents how informative a term is in general, based on the `POS contexts' in which it generally occurs in language. We suggest five different computations of POS-based term weights by extending existing statistical approximations of term information measures. We apply these POS-based term weights to information retrieval, by integrating them into the model that matches documents to queries. Experiments with two TREC collections and 300 queries, using TF-IDF & BM25 as baselines, show that integrating our POS-based term weights to retrieval always leads to gains (up to +33.7% from the baseline). Additional experiments with a different retrieval model as baseline (Language Model with Dirichlet priors smoothing) and our best performing POS-based term weight, show retrieval gains always and consistently across the whole smoothing range of the baseline.

M3 - Article in proceedings

SP - 412

EP - 423

BT - ECIR '09 Proceedings of the 31th European Conference on IR Research on Advances in Information Retrieval

ER -

ID: 38252017