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dc.contributor.authorAbramov G.-
dc.contributor.authorKuklin V.-
dc.contributor.authorMelnyk I.-
dc.contributor.authorLuntovskyy A.-
dc.date.accessioned2025-12-16T15:30:58Z-
dc.date.available2025-12-16T15:30:58Z-
dc.date.issued2025-
dc.identifier.citationAbramov G. Evolution and Sustainability of Neural Networks Theory / G. Abramov, V. Kuklin, I. Melnyk and other // In book: Luntovskyy, A., Klymash, M., Melnyk, I., Beshley, M., Gütter, D. (eds) Networks and Sustainability. TCSET 2024. Lecture Notes in Electrical Engineering. – 2025. - Vol 1473. - P. 216-252.uk_UA
dc.identifier.urihttps://repository.hneu.edu.ua/handle/123456789/38137-
dc.description.abstractIn this chapter the historical review and current state of neural network development is presented . It is pointed out that the modern philosophical concept of linguistic neural networks, which has been in development in the last 60–70 years, is based on both ancient and current history of human knowledge. From a mathematical point of view, the concepts of single-layer and multilayer perceptron’s, corresponding schemes, and corresponding mathematical relations are discussed. Probabilistic models of linguistic neural networks are also considered. Namely, classic recurrent networks, networks with encoders and decoders for translation, networks with attentional mechanisms, and the model of modern Transfer Technology are considered. It is pointed out that modern models of neural networks are based on converting words into vectors and using vector and matrix operations. As examples on using word vectors for text encoding and decoding, context modeling algorithms and length estimation between the symbols are considered. A comparison of these two methods of text coding is also given. Novel approaches and standards in large language models’ neural networks are also considered. Several practical examples are given. Due to immense development, AI-driven apps based on LLMs can be deployed practically everywhere. These areas include healthcare, finances, industry, traffic and logistics, education, science, and customer services. As an example, for further deployment areas, programming and software technology have been considered.uk_UA
dc.language.isoenuk_UA
dc.subjectartificial intelligenceuk_UA
dc.subjectCPUuk_UA
dc.subjectGPU computinguk_UA
dc.subjectsymbolic methodsuk_UA
dc.subjectexpert systemsuk_UA
dc.subjectrecommender systemsuk_UA
dc.subjectcomputational graphsuk_UA
dc.subjectmathematical logicuk_UA
dc.subjectdeep learninguk_UA
dc.subjectKolmogorov–Arnold networksuk_UA
dc.subjectproblem-solvinguk_UA
dc.titleEvolution and Sustainability of Neural Networks Theoryuk_UA
dc.typeBook chapteruk_UA
Розташовується у зібраннях:Монографії (КІТ)

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