BASIC OF PROCESS LEARNING ARTIFICIAL NEURAL NETWORK

Abstract

In this article the authors make revive three general paradigms of the machines learning: “with educator”, “without educator” and combined. Displayed general researches on neuromodeling that may be interesting for engineers and scientists. Have been made the comparison of the Funnymen machine and biological neural system. Made a look on the more developed activation functions and basics of the neural networks learning algorithms, neurochips. The authors point of view may be useful for students, researchers, computer engineers and scientists.

Authors and Affiliations

Volodymyr Brodkevych, Viacheslav Remeslo

Keywords

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  • EP ID EP610470
  • DOI -
  • Views 62
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How To Cite

Volodymyr Brodkevych, Viacheslav Remeslo (2018). BASIC OF PROCESS LEARNING ARTIFICIAL NEURAL NETWORK. Международный научный журнал "Интернаука", 1(14), 64-68. https://www.europub.co.uk/articles/-A-610470