Predicting Answering Behaviour in Online Question Answering Communities

The value of Question Answering (Q&A) communities is dependent on members of the community finding the questions they are most willing and able to answer. This can be difficult in communities with a high volume of questions. Much previous has work attempted to address this problem by recommending questions similar to those already answered. However, this approach disregards the question selection behaviour of the answers and how it is affected by factors such as question recency and reputation. In this paper, we identify the parameters that correlate with such a behaviour by analysing the users' answering patterns in a Q&A community. We then generate a model to predict which question a user is most likely to answer next. We train Learning to Rank (LTR) models to predict question selections using various user, question and thread feature sets. We show that answering behaviour can be predicted with a high level of success, and highlight the particular features that influence users' question selections.

[1]  Matthew Rowe,et al.  Mining and comparing engagement dynamics across multiple social media platforms , 2014, WebSci '14.

[2]  Quoc V. Le,et al.  Abstract , 2003, Appetite.

[3]  Harith Alani,et al.  Automatic Identification of Best Answers in Online Enquiry Communities , 2012, ESWC.

[4]  Chun Chen,et al.  Probabilistic question recommendation for question answering communities , 2009, WWW '09.

[5]  Idan Szpektor,et al.  When relevance is not enough: promoting diversity and freshness in personalized question recommendation , 2013, WWW.

[6]  Lijun Feng,et al.  A Comparison of Features for Automatic Readability Assessment , 2010, COLING.

[7]  David Lo,et al.  Predicting Best Answerers for New Questions: An Approach Leveraging Topic Modeling and Collaborative Voting , 2013, SocInfo Workshops.

[8]  Aditya Pal,et al.  Routing questions for collaborative answering in Community Question Answering , 2013, 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2013).

[9]  Michael J. Pazzani,et al.  Content-Based Recommendation Systems , 2007, The Adaptive Web.

[10]  Xiang Cheng,et al.  Incremental probabilistic latent semantic analysis for automatic question recommendation , 2008, RecSys '08.

[11]  Evangelos E. Milios,et al.  Finding expert users in community question answering , 2012, WWW.

[12]  Yulan He,et al.  A question of complexity: measuring the maturity of online enquiry communities , 2013, HT '13.

[13]  Irwin King,et al.  Routing questions to appropriate answerers in community question answering services , 2010, CIKM.

[14]  Michael R. Lyu,et al.  Question routing in community question answering: putting category in its place , 2011, CIKM '11.

[15]  Idan Szpektor,et al.  I want to answer; who has a question?: Yahoo! answers recommender system , 2011, KDD.

[16]  Mihai Surdeanu,et al.  Learning to Rank Answers to Non-Factoid Questions from Web Collections , 2011, CL.

[17]  Eugene Agichtein,et al.  Modeling Answerer Behavior in Collaborative Question Answering Systems , 2011, ECIR.

[18]  Hung-Yu Kao,et al.  Question Routing by Modeling User Expertise and Activity in cQA services (人工知能学会全国大会(第26回)文化,科学技術と未来) -- (International Organized Session「Special Session on Web Intelligence & Data Mining」) , 2012 .

[19]  Tie-Yan Liu,et al.  Learning to rank: from pairwise approach to listwise approach , 2007, ICML '07.

[20]  Yong Yu,et al.  Recommending questions using the mdl-based tree cut model , 2008, WWW.

[21]  Tie-Yan Liu,et al.  Learning to rank for information retrieval , 2009, SIGIR.

[22]  Yong Yu,et al.  Searching Questions by Identifying Question Topic and Question Focus , 2008, ACL.

[23]  Junjie Yao,et al.  Routing Questions to the Right Users in Online Communities , 2009, 2009 IEEE 25th International Conference on Data Engineering.