# classification with four classes by matlab

I have a classification problem with four classes of input vector.The four classes are

``````A = [1 , 1; 1 ,2];
B = [2,2; -1,0];
C = [-1,-2;2,1];
D = [-1,-2; -1,-2];
``````

I wan Implement this problem by Matlab, I Use this code :

`````` C = [-1,-2;2,1];
A = [1 , 1; 1 ,2];
B = [2,2; -1,0];
D = [-1,-2; -1,-2];

hold on
grid on

plot(A(1,:),A(2,:),'bs')
plot(B(1,:),B(2,:),'r+')
plot(C(1,:),C(2,:),'go')
plot(D(1,:),D(2,:),'m*')
a = [0 1]';
b = [1 1]';
c = [1 0]';
d = [0 0]';
P = [A B C D];

T = [repmat(a,1,length(A)) repmat(b,1,length(B)) repmat(c,1,length(C))    repmat(d,1,length(D)) ];
net = perceptron;
E = 1;
linehandle = plotpc(net.IW{1},net.b{1});
n = 0;
while (sse(E))
n = n+1;
linehandle = plotpc(net.IW{1},net.b{1},linehandle);
drawnow;
end
``````

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what does not work? what is your error? how does the result differ from your expected result? –  thewaywewalk Oct 7 '13 at 6:50
while loop never finish!! –  user2853483 Oct 7 '13 at 6:53
your while loop is dependent on the error flag `E` which is the output of the adapt function. But you never change its inputs, so the while loop is doing the same over and over. –  thewaywewalk Oct 7 '13 at 7:00
I'm not familiar with neural networks, so I can't tell you where the error is, just where you could search for it. Insert cell breaks `%%` before and after your function call `[net,Y,E] = adapt(net,P,T); ` - then you can execute just these section, therefore you can see the results for every single iteration. Does `E` change? I further guess that `sse(E)` ist not correct, i'd rather use `~E`, also `sse` actually requires more than one input argument, not just `E`. –  thewaywewalk Oct 7 '13 at 8:07

As has been suggested by thewaywewalk, the trouble is your `while`-loop and the fact that you do not provide an adequate check for the statement you wish to evaluate.
Replace your `while`-statement with these two lines:

``````ACCEPTABLE_ERROR = 3.0;
while (sse(E)>ACCEPTABLE_ERROR)
``````

And you should see your script terminate after three iterations. You can play with the `ACCEPTABLE_ERROR` variable to check which solution works best for you. If you set it too small, your while loop will not exit, because the statement will not be false.

An explanation to your original `while`-statement:
All you ever evaluated if `sse(e)` returned a results - which it did in each case. That's why it never stopped.

To the question of `sse` requires more than one input argument:
That depends on what input arguments you provide.
The documentation says:

perf = sse(net,t,y,ew) takes these input arguments and optional function parameters,

net: Neural network
t: Matrix or cell array of target vectors
y: Matrix or cell array of output vectors
ew: Error weights (default = {1})

and returns the sum squared error.

However, it is not necessary, to provide the error weights, `ew`, as the source code reveals:

Only the first three arguments are required. The default error weight is {1}, which weights the importance of all targets equally.

In your case you should, based on the documentation, call `sse` like this:

``````sse(net,T,Y)
``````

Without being mentioned in the documentation (or I haven't found it), this is equivalent to what you have done, by providing simply the network errors, `E` as provided from `adapt`:

``````sse(E)
``````

Both give the same results.

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