what is neural network sim function?
Mostrar comentarios más antiguos
I set the input layer with 2 neurons and a hidden layer with 3 neurons in Matlab ANN, and trained the model.
Why are these two methods lead to differernt output:
1.
z1 = IW * I' + b1; % Output of the first hidden layer
a1 = logsig(z1); % Apply the sigmoid activation function
z2 = LW1 * a1 + b2; % Final output
output = logsig(z2); % Apply the sigmoid activation function
2.
output = sim(net, I')
I really want to use the first method, but it seems something wrong with it.
Respuesta aceptada
Más respuestas (1)
Ayush Aniket
el 25 de Oct. de 2023
Hi Wang,
As per my understanding, the neural network analytical equations are not giving you the same result as through “sim” function. The reason behind this is that the "net” object returned by the “feedforwardnet” neural network function in MATLAB uses pre-processing and post-processing functions to process the input and output data.
To achieve the same output through the “sim” function, you can add these lines to your code:
normalized_I' = mapminmax('apply', I', net.inputs{1}.processSettings{1}); %we are applying the same pre-processing as in the feedforwardnet
output = mapminmax('reverse', output, net.outputs{2}.processSettings{1});%we are applying the same post-processing as in the feedforwardnet
To read more about the process functions please refer to the following documentation page:
Hope it helps.
Categorías
Más información sobre Deep Learning Toolbox en Centro de ayuda y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!