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Time-sensitive Personalized Query Auto-Completion

Published: 03 November 2014 Publication History

Abstract

Query auto-completion (QAC) is a prominent feature of modern search engines. It is aimed at saving user's time and enhancing the search experience. Current QAC models mostly rank matching QAC candidates according to their past popularity, i.e., frequency. However, query popularity changes over time and may vary drastically across users. Hence, rankings of QAC candidates should be adjusted accordingly. In previous work time-sensitive QAC models and user-specific QAC models have been developed separately. Both types of QAC model lead to important improvements over models that are neither time-sensitive nor personalized. We propose a hybrid QAC model that considers both of these aspects: time-sensitivity and personalization.
Using search logs, we return the top N QAC candidates by predicted popularity based on their recent trend and cyclic behavior. We use auto-correlation to detect query periodicity by long-term time-series analysis, and anticipate the query popularity trend based on observations within an optimal time window returned by a regression model. We rerank the returned top N candidates by integrating their similarities with a user's preceding queries (both in the current session and in previous sessions by the same user) on a character level to produce a final QAC list. Our experimental results on two real-world datasets show that our hybrid QAC model outperforms state-of-the-art time-sensitive QAC baseline, achieving total improvements of between 3% and 7% in terms of MRR.

References

[1]
E. Alfonseca, M. Ciaramita, and K. Hall. Gazpacho and summer rash: Lexical relationships from temporal patterns of web search queries. In EMNLP '09, pages 1046--1055, 2009.
[2]
M. Arias, J. M. Cantera, and J. Vegas. Context-based personalization for mobile web search. In VLDB '08, pages 33--39, 2008.
[3]
Z. Bar-Yossef and N. Kraus. Context-sensitive query auto-completion. In WWW '11, pages 107--116, 2011.
[4]
H. Bast and I. Weber. Type less, find more: Fast autocompletion search with a succinct index. In SIGIR '06, pages 364--371, 2006.
[5]
H. Bast, D. Majumdar, and I. Weber. Efficient interactive query expansion with complete search. In CIKM '07, pages 857--860, 2007.
[6]
P. N. Bennett, R. W. White, W. Chu, S. T. Dumais, P. Bailey, F. Borisyuk, and X. Cui. Modeling the impact of short- and long-term behavior on search personalization. In SIGIR '12, pages 185--194, 2012.
[7]
S. Bhatia, D. Majumdar, and P. Mitra. Query suggestions in the absence of query logs. In SIGIR '11, pages 795--804, 2011.
[8]
S. Bickel, P. Haider, and T. Scheffer. Learning to complete sentences. In ECML '05, pages 497--504, 2005.
[9]
F. Cai, S. Liang, and M. de Rijke. Personalized document re-ranking based on bayesian probabilistic matrix factorization. In SIGIR '14, pages 835--838, 2014.
[10]
H. Cao, D. Jiang, J. Pei, Q. He, Z. Liao, E. Chen, and H. Li. Context-aware query suggestion by mining click-through and session data. In KDD '08, pages 875--883, 2008.
[11]
C. Chatfield. The Analysis of Time Series: An Introduction. Chapman and Hall, New York, 2004.
[12]
S. Chaudhuri and R. Kaushik. Extending autocompletion to tolerate errors. In SIGMOD '09, pages 707--718, 2009.
[13]
S. Chien and N. Immorlica. Semantic similarity between search engine queries using temporal correlation. In WWW '05, pages 2--11, 2005.
[14]
J. Fan, H. Wu, G. Li, and L. Zhou. Suggesting topic-based query terms as you type. In APWEB '10, pages 61--67, 2010.
[15]
J. Gama, I. Žliobaité, A. Bifet, M. Pechenizkiy, and A. Bouchachia. A survey on concept drift adaptation. ACM Comput. Surv., 46(4): 44:1--44:37, March 2014.
[16]
N. G. Golbandi, L. K. Katzir, Y. K. Koren, and R. L. Lempel. Expediting search trend detection via prediction of query counts. In WSDM '13, pages 295--304, 2013.
[17]
K. Grabski and T. Scheffer. Sentence completion. In SIGIR '04, pages 433--439, 2004.
[18]
J. Guo, X. Cheng, G. Xu, and X. Zhu. Intent-aware query similarity. In CIKM '11, pages 259--268, 2011.
[19]
Q. He, D. Jiang, Z. Liao, S. C. H. Hoi, K. Chang, E.-P. Lim, and H. Li. Web query recommendation via sequential query prediction. In ICDE '09, pages 1443--1454, 2009.
[20]
B. Huurnink, L. Hollink, W. van den Heuvel, and M. de Rijke. Search behavior of media professionals at an audiovisual archive: A transaction log analysis. J. Am. Soc. Inf. Sci. Techn., 61(6): 1180--1197, June 2010.
[21]
A. Kulkarni, J. Teevan, K. M. Svore, and S. T. Dumais. Understanding temporal query dynamics. In WSDM '11, pages 167--176, 2011.
[22]
Z. Liao, D. Jiang, E. Chen, J. Pei, H. Cao, and H. Li. Mining concept sequences from large-scale search logs for context-aware query suggestion. ACM Trans. Intell. Syst. Technol., 3(1):Article 17, 2011.
[23]
W. Litwin, R. Mokadem, P. Rigaux, and T. Schwarz. Fast ngram-based string search over data encoded using algebraic signatures. In VLDB '07, pages 207--218, 2007.
[24]
N. Liu, J. Yan, S. Yan, W. Fan, and Z. Chen. Web query prediction by unifying model. In ICDM '08, pages 437--441, 2008.
[25]
V. Michail, M. Christopher, V. Zografoula, and G. Dimitrios. Identifying similarities periodicities and bursts for online search queries. In SIGMOD '04, pages 131--142, 2004.
[26]
T. Miyanishi and T. Sakai. Time-aware structured query suggestion. In SIGIR '13, pages 809--812, 2013.
[27]
G. Pass, A. Chowdhury, and C. Torgeson. A picture of search. In InfoScale '06, 2006.
[28]
R. L. T. Santos, C. Macdonald, and I. Ounis. Learning to rank query suggestions for adhoc and diversity search. Inf. Retr., 16:429--451, 2013.
[29]
C. Sengstock and M. Gertz. Conquer: A system for efficient context-aware query suggestions. In WWW '11, pages 265--268, 2011.
[30]
M. Shokouhi. Detecting seasonal queries by time-series analysis. In SIGIR '11, pages 1171--1172, 2011.
[31]
M. Shokouhi. Learning to personalize query auto-completion. In SIGIR '13, pages 103--112, 2013.
[32]
M. Shokouhi and K. Radinsky. Time-sensitive query auto-completion. In SIGIR '12, pages 601--610, 2012.
[33]
A. Strizhevskaya, A. Baytin, I. Galinskaya, and P. Serdyukov. Actualization of query suggestions using query logs. In WWW '12, pages 611--612, 2012.
[34]
I. Weber and C. Castillo. The demographics of web search. In SIGIR '10, pages 523--530, 2010.
[35]
R. W. White and G. Marchionini. Examining the effectiveness of real-time query expansion. Inf. Proc. Man., 43(3):685--704, 2007.
[36]
S. Whiting and J. M. Jose. Recent and robust query auto-completion. In WWW '14, pages 971--982, 2014.

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  • (2024)On-Device Query Auto-completion for Email SearchAdvances in Information Retrieval10.1007/978-3-031-56027-9_18(295-309)Online publication date: 20-Mar-2024
  • (2023)Sequence Graph-Based Query Auto-Suggestion (SGQAS)Handbook of Research on AI and Machine Learning Applications in Customer Support and Analytics10.4018/978-1-6684-7105-0.ch018(362-380)Online publication date: 26-May-2023
  • (2023)trie-nlg: trie context augmentation to improve personalized query auto-completion for short and unseen prefixesData Mining and Knowledge Discovery10.1007/s10618-023-00966-037:6(2306-2329)Online publication date: 7-Aug-2023
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    cover image ACM Conferences
    CIKM '14: Proceedings of the 23rd ACM International Conference on Conference on Information and Knowledge Management
    November 2014
    2152 pages
    ISBN:9781450325981
    DOI:10.1145/2661829
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    Published: 03 November 2014

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    Author Tags

    1. personalization
    2. query auto-completion
    3. time-sensitive

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    CIKM '14 Paper Acceptance Rate 175 of 838 submissions, 21%;
    Overall Acceptance Rate 1,861 of 8,427 submissions, 22%

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    Cited By

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    • (2024)On-Device Query Auto-completion for Email SearchAdvances in Information Retrieval10.1007/978-3-031-56027-9_18(295-309)Online publication date: 20-Mar-2024
    • (2023)Sequence Graph-Based Query Auto-Suggestion (SGQAS)Handbook of Research on AI and Machine Learning Applications in Customer Support and Analytics10.4018/978-1-6684-7105-0.ch018(362-380)Online publication date: 26-May-2023
    • (2023)trie-nlg: trie context augmentation to improve personalized query auto-completion for short and unseen prefixesData Mining and Knowledge Discovery10.1007/s10618-023-00966-037:6(2306-2329)Online publication date: 7-Aug-2023
    • (2022)Continual Learning of Long Topic Sequences in Neural Information RetrievalAdvances in Information Retrieval10.1007/978-3-030-99736-6_17(244-259)Online publication date: 10-Apr-2022
    • (2021)Session-Aware Query Auto-completion using Extreme Multi-Label RankingProceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining10.1145/3447548.3467087(3835-3844)Online publication date: 14-Aug-2021
    • (2020)Learning to Generate Personalized Query Auto-Completions via a Multi-View Multi-Task Attentive ApproachProceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining10.1145/3394486.3403350(2998-3007)Online publication date: 23-Aug-2020
    • (2020)Personalized Prefix Embedding for POI Auto-Completion in the Search Engine of Baidu MapsProceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining10.1145/3394486.3403318(2677-2685)Online publication date: 23-Aug-2020
    • (2020)Personalized Query Auto-Completion for Large-Scale POI Search at Baidu MapsACM Transactions on Asian and Low-Resource Language Information Processing10.1145/339413719:5(1-16)Online publication date: 18-Jun-2020
    • (2020)Future Directions of Query UnderstandingQuery Understanding for Search Engines10.1007/978-3-030-58334-7_9(205-224)Online publication date: 2-Dec-2020
    • (2020)Query Auto-CompletionQuery Understanding for Search Engines10.1007/978-3-030-58334-7_7(145-170)Online publication date: 2-Dec-2020
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