TY - JOUR
T1 - Experts and likely to be closed discussions in question and answer communities
T2 - An analytical overview
AU - Procaci, Thiago Baesso
AU - Siqueira, Sean Wolfgand Matsui
AU - Pereira Nunes, Bernardo
AU - Nurmikko-Fuller, Terhi
N1 - Publisher Copyright:
© 2018 Elsevier Ltd
PY - 2019/3
Y1 - 2019/3
N2 - How do important members of online Question & Answer communities (who we call experts) behave? And how do they influence the discussions in which they take part? This work reports on an investigation into these questions, which we answer through analyses exploring metrics, machine learning classifiers, and recommendations. We report on several findings: the degree of expertise correlates to behavioral patterns, whereby experts would rarely ask for help, and instead, predominantly provide help to other community members; the inclusion of an expert results in longer discussions. We propose a metric (the weighted sum), which enables us to better quantify the reputations of expert members of the community. We describe the use of four machine learning classifiers for the identification of both expert users and the most significant conversations within these communities. We propose a novel approach for a recommendation system, which utilizes semantic annotations to identify topical experts and to ascertain their respective area of specialism. We foresee the suitability of our expertise-finding methods and findings to support Learning Analytics, and in scenarios where users may apply lessons learnt from our results to improve their status in a community. Our findings can also inform systems for recommending experts and discussions.
AB - How do important members of online Question & Answer communities (who we call experts) behave? And how do they influence the discussions in which they take part? This work reports on an investigation into these questions, which we answer through analyses exploring metrics, machine learning classifiers, and recommendations. We report on several findings: the degree of expertise correlates to behavioral patterns, whereby experts would rarely ask for help, and instead, predominantly provide help to other community members; the inclusion of an expert results in longer discussions. We propose a metric (the weighted sum), which enables us to better quantify the reputations of expert members of the community. We describe the use of four machine learning classifiers for the identification of both expert users and the most significant conversations within these communities. We propose a novel approach for a recommendation system, which utilizes semantic annotations to identify topical experts and to ascertain their respective area of specialism. We foresee the suitability of our expertise-finding methods and findings to support Learning Analytics, and in scenarios where users may apply lessons learnt from our results to improve their status in a community. Our findings can also inform systems for recommending experts and discussions.
KW - Expert behavior
KW - Graph analysis
KW - Interaction analysis
KW - Likely to be closed discussions
KW - Q&A community analysis
KW - Topical experts
UR - http://www.scopus.com/inward/record.url?scp=85060921535&partnerID=8YFLogxK
U2 - 10.1016/j.chb.2018.06.004
DO - 10.1016/j.chb.2018.06.004
M3 - Article
SN - 0747-5632
VL - 92
SP - 519
EP - 535
JO - Computers in Human Behavior
JF - Computers in Human Behavior
ER -