The library enables to create perceptrons with desired number of inputs and customized train rate. It enables to train the perceptrons according to the user input.
Check the Wiki page for usage examples and API
Features
- Create perceptrons
- Define the number of the inputs of each perceptron
- Define the training rate of each perceptron
- Train the created perceptrons
- Check the perceptron state and results according to a given input vector
- Change the weights and the threshold at any time
Follow C/C++ Perceptron
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User Reviews
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Seems Ok at first and the example works, but as any programmer knows: "A code without documentations is worthless". The C object oriented approach is well performed. But he could have been written it in C++, but he only knows.