Topic Expertise Model

Community Question Answering (CQA) websites, where people share expertise on open platforms, have become large repositories of valuable knowledge. To bring the best value out of these knowledge repositories, it is critically important for CQA services to know how to find the right experts, retrieve...

Full description

Saved in:
Bibliographic Details
Main Authors: YANG, Liu, QIU, Minghui, GOTTIPATI, Swapna, ZHU, Feida, JIANG, Jing, SUN, Huiping, CHEN, Zhong
Format: text
Published: Institutional Knowledge at Singapore Management University 2013
Subjects:
Online Access:https://ink.library.smu.edu.sg/researchdata/9
https://github.com/minghui/TopicExpertiseModel
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Singapore Management University
id sg-smu-ink.researchdata-1008
record_format dspace
spelling sg-smu-ink.researchdata-10082015-07-15T07:57:55Z Topic Expertise Model YANG, Liu QIU, Minghui GOTTIPATI, Swapna ZHU, Feida JIANG, Jing SUN, Huiping CHEN, Zhong Community Question Answering (CQA) websites, where people share expertise on open platforms, have become large repositories of valuable knowledge. To bring the best value out of these knowledge repositories, it is critically important for CQA services to know how to find the right experts, retrieve archived similar questions and recommend best answers to new questions. To tackle this cluster of closely related problems in a principled approach, we proposed Topic Expertise Model (TEM), a novel probabilistic generative model with GMM hybrid, to jointly model topics and expertise by integrating textual content model and link structure analysis. Based on TEM results, we proposed CQARank to measure user interests and expertise score under different topics. Leveraging the question answering history based on long-term community reviews and voting, our method could find experts with both similar topical preference and high topical expertise. This package implements Gibbs sampling for Topic Expertise Model for jointly modeling topics and expertise in question answering communities. More details of our model are described in the related publication http://dl.acm.org/citation.cfm?id=2505720. 2013-04-01T07:00:00Z text https://ink.library.smu.edu.sg/researchdata/9 https://github.com/minghui/TopicExpertiseModel SMU Research Data Institutional Knowledge at Singapore Management University Computer Sciences
institution Singapore Management University
building SMU Libraries
country Singapore
collection InK@SMU
topic Computer Sciences
spellingShingle Computer Sciences
YANG, Liu
QIU, Minghui
GOTTIPATI, Swapna
ZHU, Feida
JIANG, Jing
SUN, Huiping
CHEN, Zhong
Topic Expertise Model
description Community Question Answering (CQA) websites, where people share expertise on open platforms, have become large repositories of valuable knowledge. To bring the best value out of these knowledge repositories, it is critically important for CQA services to know how to find the right experts, retrieve archived similar questions and recommend best answers to new questions. To tackle this cluster of closely related problems in a principled approach, we proposed Topic Expertise Model (TEM), a novel probabilistic generative model with GMM hybrid, to jointly model topics and expertise by integrating textual content model and link structure analysis. Based on TEM results, we proposed CQARank to measure user interests and expertise score under different topics. Leveraging the question answering history based on long-term community reviews and voting, our method could find experts with both similar topical preference and high topical expertise. This package implements Gibbs sampling for Topic Expertise Model for jointly modeling topics and expertise in question answering communities. More details of our model are described in the related publication http://dl.acm.org/citation.cfm?id=2505720.
format text
author YANG, Liu
QIU, Minghui
GOTTIPATI, Swapna
ZHU, Feida
JIANG, Jing
SUN, Huiping
CHEN, Zhong
author_facet YANG, Liu
QIU, Minghui
GOTTIPATI, Swapna
ZHU, Feida
JIANG, Jing
SUN, Huiping
CHEN, Zhong
author_sort YANG, Liu
title Topic Expertise Model
title_short Topic Expertise Model
title_full Topic Expertise Model
title_fullStr Topic Expertise Model
title_full_unstemmed Topic Expertise Model
title_sort topic expertise model
publisher Institutional Knowledge at Singapore Management University
publishDate 2013
url https://ink.library.smu.edu.sg/researchdata/9
https://github.com/minghui/TopicExpertiseModel
_version_ 1681132323022569472