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- Title
A Hybrid Fuzzy System via Topic Model for Recommending Highlight Topics of CQA in Developer Communities.
- Authors
Jelodar, Hamed; Wang, Yongli; Vajdi, Ahamdreza; Rabbani, Mahdi; Zhao, Ruxin; Boukela, Lynda; Li, Hao
- Abstract
Question-answering (QA) websites supply a quickly growing source of useful information in numerous areas. These platforms present novel opportunities for online users to supply solutions, they also pose numerous challenges with the ever-growing size of the QA community. QA sites supply platforms for users to cooperate in the form of asking questions or giving answers. Stack Overflow is a massive source of information for both industry and academic practitioners, and its analysis can supply useful insights. Topic modeling of Stack Overflow is very beneficial for pattern discovery and behavior analysis in programming knowledge. In this paper, we propose a framework based on the Latent Dirichlet Allocation (LDA) algorithm and fuzzy rules for question topic mining and recommending highlight latent topics in a community question-answering (CQA) forum of developer community. We consider a real dataset and use 170,091 programmer questions in the R language forum from the Stack Overflow website. Our result shows that LDA topic models via novel fuzzy rules can play an effective role for extracting meaningful concepts and semantic mining in question-answering forums in developer communities.
- Subjects
FUZZY systems; HYBRID systems; BEHAVIORAL assessment; FUZZY algorithms; QUESTION &; answer websites
- Publication
Journal of Circuits, Systems & Computers, 2020, Vol 29, Issue 15, pN.PAG
- ISSN
0218-1266
- Publication type
Article
- DOI
10.1142/S0218126620502485