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Information technologies and systems

February 14, 2025; Boston, USA: VII International Scientific and Practical Conference «SCIENTIFIC PRACTICE: MODERN AND CLASSICAL RESEARCH METHODS»


ENHANCING IMAGE RECOGNITION PATTERNS WITH HOPFIELD NEURAL NETWORKS


DOI
https://doi.org/10.36074/logos-14.02.2025.041
Published
14.03.2025

Abstract

In 1982, John Hopfield introduced his associative network during a presentation at the National Academy of Sciences. To pay homage to Hopfield and this innovative modeling approach, this network paradigm is commonly known as the Hopfield network. This network concept draws inspiration from the principles of dynamic systems in physics. Initially, it found applications in associative memory and problem optimization.

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