Towards a Better Understanding of Query Reformulation Behavior in Web Search
暂无分享,去创建一个
Yiqun Liu | Shaoping Ma | Jiaxin Mao | Min Zhang | Fan Zhang | Jia Chen | M. Zhang | Yiqun Liu | Shaoping Ma | Jiaxin Mao | Fan Zhang | Jia Chen
[1] Yiqun Liu,et al. Investigating Query Reformulation Behavior of Search Users , 2019, CCIR.
[2] Enrique Alfonseca,et al. Learning to Attend, Copy, and Generate for Session-Based Query Suggestion , 2017, CIKM.
[3] Milad Shokouhi,et al. Learning to personalize query auto-completion , 2013, SIGIR.
[4] David Carmel,et al. One Query, Many Clicks: Analysis of Queries with Multiple Clicks by the Same User , 2016, CIKM.
[5] Sebastian Dungs,et al. An Eye-Tracking Study of Query Reformulation , 2015, SIGIR.
[6] Wei Gao,et al. Exploiting query logs for cross-lingual query suggestions , 2010, TOIS.
[7] Daqing He,et al. Searching, browsing, and clicking in a search session: changes in user behavior by task and over time , 2014, SIGIR.
[8] Wei Wang,et al. RIN: Reformulation Inference Network for Context-Aware Query Suggestion , 2018, CIKM.
[9] Ryen W. White,et al. Understanding and Predicting Graded Search Satisfaction , 2015, WSDM.
[10] Maarten de Rijke,et al. Personalized Query Suggestion Diversification , 2017, SIGIR.
[11] Abdur Chowdhury,et al. A picture of search , 2006, InfoScale '06.
[12] Emine Yilmaz,et al. User Behaviour and Task Characteristics: A Field Study of Daily Information Behaviour , 2017, CHIIR.
[13] Xiaojun Yuan,et al. Domain knowledge, search behaviour, and search effectiveness of engineering and science students: an exploratory study , 2005, Inf. Res..
[14] Yiqun Liu,et al. TianGong-ST: A New Dataset with Large-scale Refined Real-world Web Search Sessions , 2019, CIKM.
[15] Nivio Ziviani,et al. Using association rules to discover search engines related queries , 2003, Proceedings of the IEEE/LEOS 3rd International Conference on Numerical Simulation of Semiconductor Optoelectronic Devices (IEEE Cat. No.03EX726).
[16] W. Bruce Croft,et al. Query reformulation using anchor text , 2010, WSDM '10.
[17] Oren Kurland,et al. Query Reformulation in E-Commerce Search , 2020, SIGIR.
[18] Yiqun Liu,et al. The Influence of Image Search Intents on User Behavior and Satisfaction , 2019, WSDM.
[19] Enhong Chen,et al. Towards context-aware search by learning a very large variable length hidden markov model from search logs , 2009, WWW '09.
[20] O. J. Dunn. Multiple Comparisons Using Rank Sums , 1964 .
[21] Yen-Jen Oyang,et al. Relevant term suggestion in interactive web search based on contextual information in query session logs , 2003, J. Assoc. Inf. Sci. Technol..
[22] Jakob Grue Simonsen,et al. A Hierarchical Recurrent Encoder-Decoder for Generative Context-Aware Query Suggestion , 2015, CIKM.
[23] Chaoqun Ni,et al. What Affects Word Changes in Query Reformulation During a Task-based Search Session? , 2016, CHIIR.
[24] Bhaskar Mitra,et al. Exploring Session Context using Distributed Representations of Queries and Reformulations , 2015, SIGIR.
[25] Umut Ozertem,et al. Learning to suggest: a machine learning framework for ranking query suggestions , 2012, SIGIR '12.
[26] Efthimis N. Efthimiadis,et al. Analyzing and evaluating query reformulation strategies in web search logs , 2009, CIKM.
[27] Craig MacDonald,et al. Learning to rank query suggestions for adhoc and diversity search , 2012, Information Retrieval.
[28] ChengXiang Zhai,et al. Mining term association patterns from search logs for effective query reformulation , 2008, CIKM '08.
[29] Yiqun Liu,et al. How Does Domain Expertise Affect Users’ Search Interaction and Outcome in Exploratory Search? , 2018, ACM Trans. Inf. Syst..
[30] Yiqun Liu,et al. Models Versus Satisfaction: Towards a Better Understanding of Evaluation Metrics , 2020, SIGIR.
[31] Nick Craswell,et al. Beyond clicks: query reformulation as a predictor of search satisfaction , 2013, CIKM.
[32] W. Kruskal,et al. Use of Ranks in One-Criterion Variance Analysis , 1952 .
[33] Filip Radlinski,et al. Inferring query intent from reformulations and clicks , 2010, WWW '10.
[34] Amanda Spink,et al. Patterns of query reformulation during Web searching , 2009, J. Assoc. Inf. Sci. Technol..
[35] Pu-Jen Cheng,et al. Learning user reformulation behavior for query auto-completion , 2014, SIGIR.
[36] Tie-Yan Liu,et al. LightGBM: A Highly Efficient Gradient Boosting Decision Tree , 2017, NIPS.
[37] Tuukka Ruotsalo,et al. Why do Users Issue Good Queries?: Neural Correlates of Term Specificity , 2019, SIGIR.
[38] Tianqi Chen,et al. XGBoost: A Scalable Tree Boosting System , 2016, KDD.
[39] Philip Sedgwick,et al. Multiple significance tests: the Bonferroni correction , 2012, BMJ : British Medical Journal.