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Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs

Publication ,  Conference
Cao, H; Jiang, D; Pei, J; Chen, E; Li, H
Published in: WWW'09 - Proceedings of the 18th International World Wide Web Conference
December 1, 2009

Capturing the context of a user's query from the previous queries and clicks in the same session may help understand the user's information need. A context-aware approach to document re-ranking, query suggestion, and URL recommendation may improve users' search experience substantially. In this paper, we propose a general approach to context-aware search. To capture contexts of queries, we learn a variable length Hidden Markov Model (vlHMM) from search sessions extracted from log data. Although the mathematical model is intuitive, how to learn a large vlHMM with millions of states from hundreds of millions of search sessions poses a grand challenge. We develop a strategy for parameter initialization in vlHMM learning which can greatly reduce the number of parameters to be estimated in practice. We also devise a method for distributed vlHMM learning under the map-reduce model. We test our approach on a real data set consisting of 1:8 billion queries, 2:6 billion clicks, and 840 million search sessions, and evaluate the effectiveness of the vlHMM learned from the real data on three search applications: document re-ranking, query suggestion, and URL recommendation. The experimental results show that our approach is both effective and efficient. Copyright is held by the International World Wide Web Conference Committee (IW3C2).

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Published In

WWW'09 - Proceedings of the 18th International World Wide Web Conference

DOI

ISBN

9781605584874

Publication Date

December 1, 2009

Start / End Page

191 / 200
 

Citation

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Cao, H., Jiang, D., Pei, J., Chen, E., & Li, H. (2009). Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs. In WWW’09 - Proceedings of the 18th International World Wide Web Conference (pp. 191–200). https://doi.org/10.1145/1526709.1526736
Cao, H., D. Jiang, J. Pei, E. Chen, and H. Li. “Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs.” In WWW’09 - Proceedings of the 18th International World Wide Web Conference, 191–200, 2009. https://doi.org/10.1145/1526709.1526736.
Cao H, Jiang D, Pei J, Chen E, Li H. Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs. In: WWW’09 - Proceedings of the 18th International World Wide Web Conference. 2009. p. 191–200.
Cao, H., et al. “Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs.” WWW’09 - Proceedings of the 18th International World Wide Web Conference, 2009, pp. 191–200. Scopus, doi:10.1145/1526709.1526736.
Cao H, Jiang D, Pei J, Chen E, Li H. Towards context-aware search by learning a very large variable length Hidden Markov Model from search logs. WWW’09 - Proceedings of the 18th International World Wide Web Conference. 2009. p. 191–200.

Published In

WWW'09 - Proceedings of the 18th International World Wide Web Conference

DOI

ISBN

9781605584874

Publication Date

December 1, 2009

Start / End Page

191 / 200