Development of a reviewer recommendation system for scientific articles based on reviewer-article profiles and using multi-criteria analysis and machine learning methods
Το work with title Development of a reviewer recommendation system for scientific articles based on reviewer-article profiles and using multi-criteria analysis and machine learning methods by Toula Maria is licensed under Creative Commons Attribution 4.0 International
Bibliographic Citation
Maria Toula, "Development of a reviewer recommendation system for scientific articles based on reviewer-article profiles and using multi-criteria analysis and machine learning methods ", Master Thesis, School of Production Engineering and Management, Technical University of Crete, Hellenic Army Academy, Chania, Greece, 2025
https://doi.org/10.26233/heallink.tuc.103792
One of the most important problems is the development of valuable user profiles (consumers, products, paper reviewers, ...) with huge fields of application in e-business, e-governance, etc. On the other hand, Artificial Intelligence (AI) in combination with Big Data, has developed rapidly, making it possible to utilize appropriate classifiers and large amounts of data to develop user profiles.Within the framework of the thesis, software was developed that implements AI methods and special algorithms, such as machine learning, data mining, text analysis, natural language processing, etc., and multi-criteria decision analysis, in order to form the appropriate profiles of papers’ reviewers and papers, and then proceed to evaluate the paper-reviewer combinations and formulate the proposal of suitable reviewers per paper.Τo create profiles of user and papers, a hybrid methodology has been developed that is based on direct and indirect feedback, that is, on information provided by both the user himself and his digital footprint (personal websites, published papers, etc.).Finally, the above methodology was applied to a series of cases to evaluate its effectiveness.