Comparison between the neural networks Adaline and Perceptron using the IRIS database

Authors

  • Allana dos Santos Campos Universidade Estadual de Santa Cruz
  • César Alberto Bravo Pariente Universidade Estadual de Santa Cruz

Keywords:

Adaline, Perceptron, Redes Neurais

Abstract

Initially, neural networks were developed with the objective of creating a computational system that models the functioning of the human brain, however they started to be used to solve specific tasks. Adaline and Perceptron are two neural networks that calculate an input function using a set of adaptive weights and a bias, despite their similarities, it is known that the Adaline neural network converges to a result more quickly than the Perceptron neural network. This work was designed as a didactic exercise, in order to present how such conclusions are obtained, using the IRIS database as data for classification and training. Throughout the work, Processing programming language was used to develop neural networks and Python programming language for visual presentation of results. The results found show the database classes that can be linearly separated and those that cannot, the conclusion for the best performance among neural networks is defined by the percentage of correct answers in the data classifications.

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References

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Published

2021-04-28

How to Cite

Comparison between the neural networks Adaline and Perceptron using the IRIS database. (2021). Colloquium Exactarum. ISSN: 2178-8332, 13(1), 1-8. https://revistas.unoeste.br/index.php/ce/article/view/3769

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