The International Journal of Multidisciplinary Studies and Innovative Research (IJMSIR) is an open-access, multidisciplinary journal that publishes research across social sciences, education, business, engineering, and technology-related fields. It aims to promote innovative and cross-disciplinary scholarship, particularly applied and emerging research. The journal operates an APC-based open-access model and generally offers relatively fast peer-review turnaround times. IJMSIR is visible on platforms such as Google Scholar, though it is not consistently indexed in major databases like Scopus or Web of Science. As such, it is suitable for rapid dissemination and general academic visibility but should be carefully evaluated against institutional or promotion requirements.
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Description
Statistics
Current Volumes
Volume 212132, 2025
Volume 1, 2025
Editor In Chief
Yaw Opoku
Built Environment, University of Mines and Technology, Ghana
Editor-in-Chief
Recently Published Articles
Computer Science1
Machine Learning Classification of Morphological Signatures in Bat Species a Comparative Analysis of Trait Variability across Microbat and Megabat Lineages
Understanding morphological diversity in bats is central to ecological classification, evolutionary interpretation, and conservation planning. This study analyzed key morphological, …
Computer Science1
morphometrics with machine learning to enhance taxonomic resolution
DOI:
11111123
Understanding morphological diversity in bats is central to ecological classification, evolutionary interpretation, and conservation planning. This study analyzed key morphological, …
View all articles
Machine Learning Classification of Morphological Signatures in Bat Species a Comparative Analysis of Trait Variability across Microbat and Megabat Lineages
Understanding morphological diversity in bats is central to ecological classification, evolutionary interpretation, and conservation planning. This study analyzed key morphological, …
morphometrics with machine learning to enhance taxonomic resolution
Understanding morphological diversity in bats is central to ecological classification, evolutionary interpretation, and conservation planning. This study analyzed key morphological, …
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