How to update the weights of a Shallow neural network by supplying one sample at a time?
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I would like to use a shallow neural network inside a simulation loop. Every loop will generate a new input that is used to update the weights of the neural network. This online training of a shallow network.
To clarify, I am not asking how to use concurrent nerual network, or reinforcement learning. I am just asking how to make the shallow neural network perform one backprobagation operation based on one desired output. Nothing more. Thanks.
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Emmanouil Tzorakoleftherakis
on 9 Jan 2024
By the way, if you are willing to try a packaged solution, please take a look at this example that shows how to train a neural state space model.
Answers (1)
Venu
on 25 Dec 2023
Edited: Venu
on 25 Dec 2023
You can refer to the documentation below to start with.
To perform online training of a shallow neural network in MATLAB by supplying one sample at a time and updating the weights based on that sample, you can use the "adapt" function.
The "adapt" function is designed to perform online updates to the network weights and biases according to the specified training function (example "traingd") for each new input-target pair.
Read the "adapt" documentation for more understanding.
help adapt
doc adapt
Hope this helps
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