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How to bypass automatic differentiation?

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sunny Yang
sunny Yang il 21 Feb 2020
Commentato: Xuefu Dong il 5 Lug 2023
I'm trying to implement a simple speech recognition by Deep Learning Toolbox.
the network receives a piece of spectrogram,and it gives the possibility of each phone(ɔi au əu,。。。 etc) at each timetick.
I have some speech sentences recording & corresponding phonetic sign,but I must use CTC(Connectionist Temporal Classification) algorithm to match the phoentic sequence onto the possibility sequence outputed by CNN.
But the problem is:
CTC algorithm contains several nesting looped process,making it extremely unfriendly to automatic differentiation.A typical CTC call takes less then 0.1sec,but it takes 20 seconds to finish under dlfeval().
CTC algorithm gives a relation index,like(#1~#5 output of NN-> first sign in Supervise output,#6~#7 -> second sign...etc ),
On the other words,Loss = sum( [Neural_Network_Outp_vector - Supervise(CTC_relation_index) ].^2,'all'),and (CTC relation index) is a constant indexing vector here .
So,How to bypass the automatic differentiation here,to let the CTC call gives the relation index quickly?
Now I use this method:call neural network forward() and CTC outside dlfeval() to get the relation index ,and send both the input and this index into dlfeval(),forward() again to get the gradient.
Can I do forward() once?

Risposte (1)

sunny Yang
sunny Yang il 16 Apr 2020
Modificato: sunny Yang il 16 Apr 2020
use extractdata() to bypass grad:
x=dlarray(1);
[y,Y,dy_dx,dY_dx] = dlfeval(@goat,x)
% y=Y=4
dy_dx=4=d(x^2+2*x+1)/dx|x=1
dY_dx=2=d(x^2+1)/dx|x=1
function [y,Y,dy_dx,dY_dx] = goat(x)
X=x.extractdata();
y=x^2+2*x+1;
Y = x^2+2*X+1;
dy_dx = dlgradient(y,x);
dY_dx = dlgradient(Y,x);
end
better
  1 Commento
Xuefu Dong
Xuefu Dong il 5 Lug 2023
Thanks a lot! do you mind if I ask some questions regarding CTC in matlab?

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