Gaius

Conception et évaluation d’un nouveau modèle d’indexation de la documentation juridique

Query enrichment for web-query classification

Type de ressource
Auteurs/contributeurs
Titre
Query enrichment for web-query classification
Résumé
Web-search queries are typically short and ambiguous. To classify these queries into certain target categories is a difficult but important problem. In this article, we present a new technique called query enrichment, which takes a short query and maps it to intermediate objects. Based on the collected intermediate objects, the query is then mapped to target categories. To build the necessary mapping functions, we use an ensemble of search engines to produce an enrichment of the queries. Our technique was applied to the ACM Knowledge Discovery and Data Mining competition (ACM KDDCUP) in 2005, where we won the championship on all three evaluation metrics (precision, F1 measure, which combines precision and recall, and creativity, which is judged by the organizers) among a total of 33 teams worldwide. In this article, we show that, despite the difficulty of an abundance of ambiguous queries and lack of training data, our query-enrichment technique can solve the problem satisfactorily through a two-phase classification framework. We present a detailed description of our algorithm and experimental evaluation. Our best result for F1 and precision is 42.4% and 44.4%;, respectively, which is 9.6%; and 24.3%; higher than those from the runner-ups, respectively. (Author abstract)
Publication
ACM Transactions on Information Systems
Volume
24
Numéro
3
Pages
320-352
Date
2006
Langue
English
ISSN
1046-8188
Titre abrégé
Query enrichment for web-query classification
Consulté le
2016-10-10 14 h 58
Catalogue de bibl.
ProQuest
Référence
Shen, D., Pan, R., Sun, J.-T., Pan, J. J., Wu, K., Yin, J. et Yang, Q. (2006). Query enrichment for web-query classification. ACM Transactions on Information Systems, 24(3), 320‑352. https://doi.org/10.1145/1165774.1165776
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