Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management
Question answering (QA) helps one go beyond traditional keywords-based querying and retrieve information in more precise form than given by a document or a list of documents. These communities allow users to submit queries and receive answers or responses from other members. But, there is no clear w...
Main Authors: | , |
---|---|
Format: | Article |
Language: | fas |
Published: |
Iranian Research Institute for Information and Technology
2021-04-01
|
Series: | Iranian Journal of Information Processing & Management |
Subjects: | |
Online Access: | http://jipm.irandoc.ac.ir/article-1-4316-en.html |
id |
doaj-e1ce3f74dc844c7e85b7bbb332d64d30 |
---|---|
record_format |
Article |
spelling |
doaj-e1ce3f74dc844c7e85b7bbb332d64d302021-05-02T07:53:08ZfasIranian Research Institute for Information and TechnologyIranian Journal of Information Processing & Management2251-82232251-82312021-04-01363709736Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Managementsahar Anbaraki0Abdolrasool Jowkar1 Shiraz University;Shiraz,Iran Shiraz University;Shiraz,Iran Question answering (QA) helps one go beyond traditional keywords-based querying and retrieve information in more precise form than given by a document or a list of documents. These communities allow users to submit queries and receive answers or responses from other members. But, there is no clear way of evaluating the quality of that information. The purpose of this study was to evaluate and predict the quality of responses in the Research Gate Social Science Network. To achieve this goal, the questions and answers entered in the field from January to May 2019 surveyed in the field and the required information was collected by the site crawler. Finally, 54 questions and 443 answers were analyzed in descriptive and inferential levels by SPSS 22 software. The results show that the relevance, adequacy, and concordance variables with the odds ratios of 3.626, 3.440 and 3.148 have the most power to predict the correct or incorrect responses, respectively.http://jipm.irandoc.ac.ir/article-1-4316-en.htmlquestion and answer systemsocial science networkresearch gatequality prediction of responses |
collection |
DOAJ |
language |
fas |
format |
Article |
sources |
DOAJ |
author |
sahar Anbaraki Abdolrasool Jowkar |
spellingShingle |
sahar Anbaraki Abdolrasool Jowkar Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management Iranian Journal of Information Processing & Management question and answer system social science network research gate quality prediction of responses |
author_facet |
sahar Anbaraki Abdolrasool Jowkar |
author_sort |
sahar Anbaraki |
title |
Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management |
title_short |
Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management |
title_full |
Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management |
title_fullStr |
Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management |
title_full_unstemmed |
Evaluating and Predicting the Quality of Answers Factors in the Research Gate’s Question and Answer System: A Case Study of the Thematic domain of Knowledge Management |
title_sort |
evaluating and predicting the quality of answers factors in the research gate’s question and answer system: a case study of the thematic domain of knowledge management |
publisher |
Iranian Research Institute for Information and Technology |
series |
Iranian Journal of Information Processing & Management |
issn |
2251-8223 2251-8231 |
publishDate |
2021-04-01 |
description |
Question answering (QA) helps one go beyond traditional keywords-based querying and retrieve information in more precise form than given by a document or a list of documents. These communities allow users to submit queries and receive answers or responses from other members. But, there is no clear way of evaluating the quality of that information. The purpose of this study was to evaluate and predict the quality of responses in the Research Gate Social Science Network. To achieve this goal, the questions and answers entered in the field from January to May 2019 surveyed in the field and the required information was collected by the site crawler. Finally, 54 questions and 443 answers were analyzed in descriptive and inferential levels by SPSS 22 software. The results show that the relevance, adequacy, and concordance variables with the odds ratios of 3.626, 3.440 and 3.148 have the most power to predict the correct or incorrect responses, respectively. |
topic |
question and answer system social science network research gate quality prediction of responses |
url |
http://jipm.irandoc.ac.ir/article-1-4316-en.html |
work_keys_str_mv |
AT saharanbaraki evaluatingandpredictingthequalityofanswersfactorsintheresearchgatesquestionandanswersystemacasestudyofthethematicdomainofknowledgemanagement AT abdolrasooljowkar evaluatingandpredictingthequalityofanswersfactorsintheresearchgatesquestionandanswersystemacasestudyofthethematicdomainofknowledgemanagement |
_version_ |
1721493908175716352 |