Bayesian Network trainbr: Effective number of parameters
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While training a simple network using Matlab trainbr (maximum parameters 22, effective parameters 6), I noticed that the weights and biases, 22 in all, have finite values after initialization AND after convergence. I'd have expected only "effective" 6 converged weights (and biases), with the rest being zero or NaN.
The trainbr source code shows how the effective number of parameters (gamk) is calculated, but offers no clues as to why the full suite of parameters is still populated (22 in my case) even after the code declares convergence. If only some of the parameters are ultimately effective (6 in my case), why aren't the rest of the parameters zero or undefined?
Thanks in advance for any insights
2 Kommentare
Sree Srinivasan
am 4 Apr. 2013
Arekusandoru
am 28 Nov. 2013
Hello! At some moment of training, gamk begins highly jittering, and sometimes take negative values. Is that normal?
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