THE MULTI-STAGE TRAINING METHOD FOR A CONVOLUTIONAL NEURAL NETWORK

Abstract

This paper describes methods and algorithms for training neural networks. Also, the organization of multi-stage training of the neural network, based on adaptive and genetic methods, which has been successfully applied to the convergent neural network to solve the problem of object classification.

Authors and Affiliations

Oxana Tarasenko-Klyаtchenkо, Viktoriia Buts

Keywords

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  • EP ID EP599396
  • DOI -
  • Views 60
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How To Cite

Oxana Tarasenko-Klyаtchenkо, Viktoriia Buts (2018). THE MULTI-STAGE TRAINING METHOD FOR A CONVOLUTIONAL NEURAL NETWORK. Международный научный журнал "Интернаука", 1(6), 44-46. https://europub.co.uk/articles/-A-599396