Model theory and machine learning: points of intersection
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Karagandy University of the name of academician E.A. Buketov
Abstract
This paper explores the key points of intersection between model theory—a branch of
mathematical logic concerned with the interpretation of formal languages—and machine learning
techniques. It examines the potential of using tools from model theory to formalize data models
and learning algorithms, thereby enabling a deeper understanding of the expressive power and
limitations of data-driven models. Particular attention is paid to generalization, formal verification,
correctness of inference, as well as the formalization of environments and interaction rules in
reinforcement learning tasks. The contribution of model theory to the development of hybrid
Қарағанды, 2025
Пәнаралық ғылыми зерттеулердiң ѳзектi мәселелерi 129
and explainable artificial intelligence models is also discussed. The findings demonstrate that
integrating model-theoretic approaches into machine learning opens new opportunities for
building more robust, interpretable, and formally grounded intelligent systems.
Description
Citation
Issayeva A. Model theory and machine learning: points of intersection/A. Issayeva, N. Popova, Y. Pankin//Пәнаралық ғылыми зерттеулердің өзекті мәселелері = Актуальные вопросы междисциплинарных научных исследований = Current Issues of Interdisciplinary Scientific Research: Академик Е.А. Бөкетовтің 100 жылдығына орай ұйымдастырылған Халықаралық ғылыми конференцияның тезистер жинағы. -2025. Р.128-130.