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I have some training data and some test data. Can anyone tell me is training data is the input data or it is desired data in wavelet neural network?

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I have EEG signals obtained from MIT_BIH. I want to use some of it for training data for seizure detection and some for testing purposes. I have the following code for training in wavelet neural network. What is desired output and input for my case? clear all; clc; close all; %initiate of data P=3 %number of sample m=1%number of input node n=20%number of hidden node N=1%number of ouptut node % %a(n) b(n) scale and shifting parameter matrix %x(P,m) input matrix of P sample %net(P,n) ouput of hidden node %y(P,N) output of network %d(P,N) ideal output of network % phi(P,n) ouput of hidden node wavelet funciton %W(N,n)weight value between ouput and hidden %WW(n,m) weight value between hidden and input node x=[4;5;6] d=[1.3;3.6;6.7] W=rand(N,n) WW=rand(n,m) a=ones(1,n) for j=1:n b(j)=j*P/n; end %%%%%%%%%%%%%%%%%% %EW(N,n) gradient of W %EWW(n,m) gradient of WW %Ea(n) gradient of a %Eb(n) gradient of b %%%%%%%%%%%%%%] epoch=1; epo=100;%???Purpose of it??? error=0.05; err=0.01; delta =1; lin=0.5; while (error>=err && epoch<=epo)
u=0;%u is the middle variant
%caculation of net input
for p=1:P
for j=1:n
u=0;
for k=1:m
u=u+WW(j,k)*x(p,k);%%%probably vj(n)
end
net(p,j)=u;
end
end
%calculation of morlet 0r mexican wavelet output
for p=1:P
for j=1:n
u=net(p,j);
u=(u-b(j))/a(j);
phi(p,j)=cos(1.75*u)*exp(-u*u/2); %morlet wavelet
%phi(p,j)=(1-u^2)*exp(-u*u/2); %mexican hat wavelet
end
end
%calculation of output of network
for p=1:P
for i=1:N
u=0;
for j=1:n
u=u+W(i,j)*phi(p,j);
end
y(p,i)=delta*abs(u);
end
end
%calculation of error of output
u=0;
for p=1:P
for i=1:N
%u=u+abs(d(p,i)*log(y(p,i))+(1-d(p,i)*log(1-y(p,i))));
u=u+(d(p,i)-y(p,i))^2;
end
end
%u=u/2
error=u;
%calculate of gradient of network
for i=1:N
for j=1:n
u=0;
for p=1:P
u=u+(d(p,i)-y(p,i))*phi(p,j);
end
EW(i,j)=u;
%EW(i,j)=-u;%the resule would be wrong
end
end
for j=1:n
for k=1:m
u=0;
for p=1:P
for i=1:N
u=u+(d(p,i)-y(p,i))*W(i,j)*phi(p,j)*x(p,k)/a(j) ;
end
end
EWW(j,k)=u;
%EWW(j,k)=u the result would be wrong
end
end
for j=1:n
u=0;
for p=1:P
for i=1:N
u=u+(d(p,i)-y(p,i))*W(i,j)*phi(p,j)/a(j) ;
end
end
Eb(j)=u;
end
for j=1:n
u=0;
for p=1:P
for i=1:N
u=u+(d(p,i)-y(p,i))*W(i,j)*phi(p,j)*((net(p,j)-b(j))/b(j))/a(j) ;
end
end
Ea(j)=u;
end
%adjust of weight value
WW=WW-lin*EWW;
W=W-lin*EW;
a=a-lin*Ea;
b=b-lin*Eb;
%number of epoch increase by 1
epoch=epoch+1;
end plot(x,d,x,y,'--')

Antworten (2)

Greg Heath
Greg Heath am 12 Feb. 2018
Bearbeitet: Greg Heath am 12 Feb. 2018
Your description should be reformatted to prevent confusion.
data = design + test
design = training + validation
data = training + validation + test
EACH OF THESE 3 SUBSETS CONSIST OF 2 PARTS
DATASUBSET = INPUT + TARGET
default MATLAB division ratios = 0.7/0.15/0.15
HOWEVER, YOU CAN MODIFY THESE RATIOS
nontraining = validation + test
TRAINING: used to calculate weights and biases
VALIDATION: used DURING training to help make sure net works
well on nontraining data. NOT directly involved in
calculating weight values
TEST: used to obtain UNBIASED estimate of performance on
ALL (i.e., TEST + UNKNOWN) data not involved in
training or validation
Hope this helps.
Thank you for formally accepting my answer
Greg
  1 Kommentar
Naznin Sultana
Naznin Sultana am 13 Feb. 2018
Thanks for answering. however i am looking at a WNN training code where input x and output y (called desired value) was used. My question was if i have EEG features as training set, what i will set as desired output?

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Greg Heath
Greg Heath am 13 Feb. 2018
Correct notation:
x input
t target = desired output
y output = net(x)
e error = t - y
% Reference output and MeanSquareError
tref = mean(t',2)
MSEref = mean((t-tref).^2)
= mean(var(t'),1)
[ net tr y e ] = train(net,x,t);
% y = net(x); e = t-y;
MSE = mse(e)
NMSE = MSE/NMSEref
Rsquare = 1 - NMSE % See Wikipedia
% For training details
tr = tr
Hope this helps
Thank you for formally accepting my answer
Greg

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