In short how matlab generate feed-forward neural network with 100 neurons for 33 inputs and 256 output classes. What will be the structure? So that I can implement it on other platforms.
Use matlab trained patternnet in C/other platform
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I trained a neural network for pattern recognition with 100 neurons and 33 inputs. I used the command
net = patternnet(100);
I got all the weight and other matrices. Now I want to use this trained network on ARM platform.
I have been told that if you have all the matrices you can implement the network in any language and can get approximately same results. All you need is simple feed-forward neural network for which weights have been trained.
I don't know the maths of NN. Please guide me how to implement feed-forward network by myself.
How do I know that how many neurons are connected to how many inputs in how many manners in a feedforward network created by matlab with 100 neurons for 33 inputs.
I only know the structure of simple neural network ,which is for 3 inputs and 3 neurons are used in hidden layer. Where each neuron is connected to each input. And each neuron has activation function.and then there is output layer. I can code this network in any language.
I know its naive and basic level but I don't really know that how 100 neuron with 33 input make a feed-forward network.and further how can I know the structure of trained neural network in Matlab so that I can code the same in any other language and can use the trained weights on the same network. In short how matlab generate feed-forward neural network with 100 neurons for 33 inputs and 256 output classes. What will be the structure? So that I can implement it on other platforms.
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