Biblio-Analysis of Cohort Intelligence (CI) Algorithm and its allied
applications from Scopus and Web of Science Perspective
- URL: http://arxiv.org/abs/2209.03009v1
- Date: Wed, 7 Sep 2022 09:09:33 GMT
- Title: Biblio-Analysis of Cohort Intelligence (CI) Algorithm and its allied
applications from Scopus and Web of Science Perspective
- Authors: Ishaan Kale, Rahul Joshi, Kalyani Kadam
- Abstract summary: Cohort Intelligence or CI is one of its kind of novel optimization algorithm.
This research paper in a way will be an ice breaker for those who want to take up CI to a new level.
In this research papers, CI publications available in Scopus are analyzed through graphs, networked diagrams about authors, source titles, keywords over the years, journals over the time.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cohort Intelligence or CI is one of its kind of novel optimization algorithm.
Since its inception, in a very short span it is applied successfully in various
domains and its results are observed to be effectual in contrast to algorithm
of its kind. Till date, there is no such type of bibliometric analysis carried
out on CI and its related applications. So, this research paper in a way will
be an ice breaker for those who want to take up CI to a new level. In this
research papers, CI publications available in Scopus are analyzed through
graphs, networked diagrams about authors, source titles, keywords over the
years, journals over the time. In a way this bibliometric paper showcase CI,
its applications and detail outs systematic review in terms its bibliometric
details.
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