A Method for the Identification of Competence Centers Based on the Example of the Artificial Intelligence Domain

Allerton Press - Tập 44 - Trang 253-260 - 2018
D. A. Devyatkin1, R. E. Suvorov1, I. A. Tikhomirov1
1Federal Research Center “Computer Science and Control,” Russian Academy of Sciences, Moscow, Russia

Tóm tắt

A method for the identification of competence centers is proposed using large scientific and technical document collections and computer-linguistic techniques. Artificial Intelligence was chosen as an example of the problem domain to test this method. The research is carried out on the basis of full-text proceedings of the National Conference on Artificial Intelligence, synopses of candidate’s and doctoral theses, and the ELibrary. Major specialties with respect to defended theses on artificial intelligence were selected, a defense dynamic was constructed, scientometric indicators of scientists who work in the field of artificial intelligence were obtained, and basic competence centers and their specialization were detected.

Tài liệu tham khảo

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