Intuitionistic fuzzy evaluation of artificial neural network model
Keyword(s):
In this paper a method that evaluates a trained artificial neural network is presented. The learning type of an artificial neural network is supervised learning which requires labeled input training vectors. Labeled medical data is provided to train the network, where the labels can either be 1 if the person is alive, or 0 if the person has deceased. The data is divided into training and validation vectors. The validation input vectors are used to evaluate the model and the results are summarized by using intuitionistic fuzzy values.
2019 ◽
Vol 7
(5)
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pp. 901-905
2014 ◽
Vol 1
(1)
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pp. 1-10
2021 ◽
Vol 1734
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pp. 012026
2016 ◽
2016 ◽
Vol 55
(8)
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pp. 1239-1248
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