We propose an innovative approach to finding experts for community question answering (CQA). The idea is to recommend answerers, who are credited the highest expertise under question tags at routing time. The expertise of answerers under already replied question tags is intuitively discounted by accounting for the observed tags, votes and temporal information of their answers. Instead, the discounted expertise under not yet replied tags is predicted via a latent-factor representation of both answerers and tags. These representations are inferred by means of Gibbs sampling under a new Bayesian probabilistic model of discounted user expertise and asking-answering behavior. The devised model unprecedentedly explains the latter two CQA aspects as the result of a generative process, that seamlessly integrates probabilistic matrix factorization and network behavior characterization. An extensive comparative experimentation over real-world CQA data demonstrates that our approach outperforms several-state-of-the-art competitors in recommendation effectiveness.

Collaborative Recommendation of Temporally-Discounted Tag-Based Expertise for Community Question Answering

Costa Gianni;Ortale Riccardo
2020

Abstract

We propose an innovative approach to finding experts for community question answering (CQA). The idea is to recommend answerers, who are credited the highest expertise under question tags at routing time. The expertise of answerers under already replied question tags is intuitively discounted by accounting for the observed tags, votes and temporal information of their answers. Instead, the discounted expertise under not yet replied tags is predicted via a latent-factor representation of both answerers and tags. These representations are inferred by means of Gibbs sampling under a new Bayesian probabilistic model of discounted user expertise and asking-answering behavior. The devised model unprecedentedly explains the latter two CQA aspects as the result of a generative process, that seamlessly integrates probabilistic matrix factorization and network behavior characterization. An extensive comparative experimentation over real-world CQA data demonstrates that our approach outperforms several-state-of-the-art competitors in recommendation effectiveness.
2020
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR
Inglese
Advances in Knowledge Discovery and Data Mining
Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD)
12084 LNAI
41
52
12
9783030474256
http://www.scopus.com/record/display.url?eid=2-s2.0-85085738750&origin=inward
Sì, ma tipo non specificato
11-14/05/2020
Community Question Answering
Expert Recommendation
Temporally-Discounted Tag-based Expertise
2
open
Costa, Giovanni; Ortale, Riccardo
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/381062
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