A bibliometric statistical analysis of the fuzzy inference system - based classifiers

Nowadays, under the pressure of numerous research publications, researchers increasingly pay attention to writing survey papers to track and understand one research topic they are interested in, and then begin to conduct more in-depth research. Until this moment, there are two types of survey papers...

Full description

Bibliographic Details
Main Authors: Chen, Wenhao, Ahmed, Md Manjur, Wan Isni Sofiah, Wan Din, Nor Ashidi, Mat Isa, Ebrahim, Nader Ale, Hai, Tao
Format: Article
Language:English
Published: IEEE 2021
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/31725/1/A%20bibliometric%20statistical%20analysis%20of%20the%20fuzzy%20inference%20system.pdf
_version_ 1825813913417023488
author Chen, Wenhao
Ahmed, Md Manjur
Wan Isni Sofiah, Wan Din
Nor Ashidi, Mat Isa
Ebrahim, Nader Ale
Hai, Tao
author_facet Chen, Wenhao
Ahmed, Md Manjur
Wan Isni Sofiah, Wan Din
Nor Ashidi, Mat Isa
Ebrahim, Nader Ale
Hai, Tao
author_sort Chen, Wenhao
collection UMP
description Nowadays, under the pressure of numerous research publications, researchers increasingly pay attention to writing survey papers to track and understand one research topic they are interested in, and then begin to conduct more in-depth research. Until this moment, there are two types of survey papers: traditional review analysis and bibliometric statistical analysis. Compared with traditional review analysis, due to the analysis of various bibliometric information that can be quickly summarized to assess and predict one research field’s development, the bibliometric statistical analysis is progressively proposed. However, no research relied on the bibliometric approach to explore fuzzy inference system (FIS) -based classifiers. More importantly, since the current open-ended bibliometric analysis approaches have different assessment focuses, choosing a suitable approach is problematic. Therefore, based on the extraction, integration, and expansion of previous bibliometric analysis theories, this research proposes a new systematic and time-saving bibliometric statistical analysis approach. It is worth noting that the proposed approach eliminates the need to read the internal content of all publications. Two core parts (Publication Information and TOP 20 SETs) are generated by the proposed analysis approach. Among them, analyzing Author Keywords and TOP 20 SETs are unprecedented guiding features to assist researchers in exploring research topic. Significantly, this research relies on the proposed approach to explore FIS-based classifiers. Various assessments cover the bibliometric information of the entire related publications. In addition, these results may need to be considered to increase the citation rate of future publications.
first_indexed 2024-03-06T12:51:03Z
format Article
id UMPir31725
institution Universiti Malaysia Pahang
language English
last_indexed 2024-03-06T12:51:03Z
publishDate 2021
publisher IEEE
record_format dspace
spelling UMPir317252021-07-28T08:52:13Z http://umpir.ump.edu.my/id/eprint/31725/ A bibliometric statistical analysis of the fuzzy inference system - based classifiers Chen, Wenhao Ahmed, Md Manjur Wan Isni Sofiah, Wan Din Nor Ashidi, Mat Isa Ebrahim, Nader Ale Hai, Tao QA76 Computer software Nowadays, under the pressure of numerous research publications, researchers increasingly pay attention to writing survey papers to track and understand one research topic they are interested in, and then begin to conduct more in-depth research. Until this moment, there are two types of survey papers: traditional review analysis and bibliometric statistical analysis. Compared with traditional review analysis, due to the analysis of various bibliometric information that can be quickly summarized to assess and predict one research field’s development, the bibliometric statistical analysis is progressively proposed. However, no research relied on the bibliometric approach to explore fuzzy inference system (FIS) -based classifiers. More importantly, since the current open-ended bibliometric analysis approaches have different assessment focuses, choosing a suitable approach is problematic. Therefore, based on the extraction, integration, and expansion of previous bibliometric analysis theories, this research proposes a new systematic and time-saving bibliometric statistical analysis approach. It is worth noting that the proposed approach eliminates the need to read the internal content of all publications. Two core parts (Publication Information and TOP 20 SETs) are generated by the proposed analysis approach. Among them, analyzing Author Keywords and TOP 20 SETs are unprecedented guiding features to assist researchers in exploring research topic. Significantly, this research relies on the proposed approach to explore FIS-based classifiers. Various assessments cover the bibliometric information of the entire related publications. In addition, these results may need to be considered to increase the citation rate of future publications. IEEE 2021 Article PeerReviewed pdf en cc_by_4 http://umpir.ump.edu.my/id/eprint/31725/1/A%20bibliometric%20statistical%20analysis%20of%20the%20fuzzy%20inference%20system.pdf Chen, Wenhao and Ahmed, Md Manjur and Wan Isni Sofiah, Wan Din and Nor Ashidi, Mat Isa and Ebrahim, Nader Ale and Hai, Tao (2021) A bibliometric statistical analysis of the fuzzy inference system - based classifiers. IEEE Access, 9. 77811 -77829. ISSN 2169-3536. (Published) https://doi.org/10.1109/ACCESS.2021.3082908 https://doi.org/10.1109/ACCESS.2021.3082908
spellingShingle QA76 Computer software
Chen, Wenhao
Ahmed, Md Manjur
Wan Isni Sofiah, Wan Din
Nor Ashidi, Mat Isa
Ebrahim, Nader Ale
Hai, Tao
A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title_full A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title_fullStr A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title_full_unstemmed A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title_short A bibliometric statistical analysis of the fuzzy inference system - based classifiers
title_sort bibliometric statistical analysis of the fuzzy inference system based classifiers
topic QA76 Computer software
url http://umpir.ump.edu.my/id/eprint/31725/1/A%20bibliometric%20statistical%20analysis%20of%20the%20fuzzy%20inference%20system.pdf
work_keys_str_mv AT chenwenhao abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT ahmedmdmanjur abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT wanisnisofiahwandin abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT norashidimatisa abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT ebrahimnaderale abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT haitao abibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT chenwenhao bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT ahmedmdmanjur bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT wanisnisofiahwandin bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT norashidimatisa bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT ebrahimnaderale bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers
AT haitao bibliometricstatisticalanalysisofthefuzzyinferencesystembasedclassifiers