Investigating the Optimal Neural Network Parameters for Decoding

04/20/2022
by   Joshua Tshifhiwa Maumela, et al.
0

Neural Networks have been proved to work as decoders in telecommunications, so the ways of making it efficient will be investigated in this thesis. The different parameters to maximize the Neural Network Decoder's efficiency will be investigated. The parameters will be tested for inversion errors only.

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