Web query recommendation via sequential query prediction
Web query recommendation has long been considered a key feature of search engines. Building a good Web query recommendation system, however, is very difficult due to the fundamental challenge of predicting users' search intent, especially given the limited user context information. In this pape...
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sg-smu-ink.sis_research-13272018-12-05T01:27:44Z Web query recommendation via sequential query prediction HE, Qi JIANG, Daxin LIAO, Zhen HOI, Steven C. H. CHANG, Kuiyu LIM, Ee Peng LI, Hang Web query recommendation has long been considered a key feature of search engines. Building a good Web query recommendation system, however, is very difficult due to the fundamental challenge of predicting users' search intent, especially given the limited user context information. In this paper, we propose a novel "sequential query prediction" approach that tries to grasp a user's search intent based on his/her past query sequence and its resemblance to historical query sequence models mined from massive search engine logs. Different query sequence models were examined, including the naive variable length N-gram model, Variable Memory Markov (VMM) model, and our proposed Mixture Variable Memory Markov (MVMM) model. Extensive experiments were conducted to benchmark our sequence prediction algorithms against two conventional pairwise approaches on large-scale search logs extracted from a commercial search engine. Results show that the sequence-wise approaches significantly outperform the conventional pair-wise ones in terms of prediction accuracy. In particular, our MVMM approach, consistently leads the pack, making it an effective and practical approach towards Web query recommendation. 2009-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/328 info:doi/10.1109/ICDE.2009.71 https://ink.library.smu.edu.sg/context/sis_research/article/1327/viewcontent/Web_Query_Recommendation_via_Sequential_Query_Pred.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Query recommendation Sequential query prediction Mixture variable memory Markov model Databases and Information Systems |
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Query recommendation Sequential query prediction Mixture variable memory Markov model Databases and Information Systems HE, Qi JIANG, Daxin LIAO, Zhen HOI, Steven C. H. CHANG, Kuiyu LIM, Ee Peng LI, Hang Web query recommendation via sequential query prediction |
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Web query recommendation has long been considered a key feature of search engines. Building a good Web query recommendation system, however, is very difficult due to the fundamental challenge of predicting users' search intent, especially given the limited user context information. In this paper, we propose a novel "sequential query prediction" approach that tries to grasp a user's search intent based on his/her past query sequence and its resemblance to historical query sequence models mined from massive search engine logs. Different query sequence models were examined, including the naive variable length N-gram model, Variable Memory Markov (VMM) model, and our proposed Mixture Variable Memory Markov (MVMM) model. Extensive experiments were conducted to benchmark our sequence prediction algorithms against two conventional pairwise approaches on large-scale search logs extracted from a commercial search engine. Results show that the sequence-wise approaches significantly outperform the conventional pair-wise ones in terms of prediction accuracy. In particular, our MVMM approach, consistently leads the pack, making it an effective and practical approach towards Web query recommendation. |
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HE, Qi JIANG, Daxin LIAO, Zhen HOI, Steven C. H. CHANG, Kuiyu LIM, Ee Peng LI, Hang |
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HE, Qi JIANG, Daxin LIAO, Zhen HOI, Steven C. H. CHANG, Kuiyu LIM, Ee Peng LI, Hang |
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HE, Qi |
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Web query recommendation via sequential query prediction |
title_short |
Web query recommendation via sequential query prediction |
title_full |
Web query recommendation via sequential query prediction |
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Web query recommendation via sequential query prediction |
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Web query recommendation via sequential query prediction |
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web query recommendation via sequential query prediction |
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Institutional Knowledge at Singapore Management University |
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2009 |
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https://ink.library.smu.edu.sg/sis_research/328 https://ink.library.smu.edu.sg/context/sis_research/article/1327/viewcontent/Web_Query_Recommendation_via_Sequential_Query_Pred.pdf |
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