# fmin_cg function usage for minimizing neural network cost function

I am trying to port some of my code from MatLab into Python and am running into problems with `scipy.optimize.fmin_cg` function - this is the code I have at the moment:

My cost function:

``````def nn_costfunction2(nn_params,*args):
Theta1, Theta2 = reshapeTheta(nn_params)

input_layer_size, hidden_layer_size, num_labels, X, y, lam = args[0], args[1], args[2], args[3], args[4], args[5]

m = X.shape[0] #Length of vector
X = np.hstack((np.ones([m,1]),X)) #Add in the bias unit

layer1 = sigmoid(Theta1.dot(np.transpose(X))) #Calculate first layer
layer1 = np.vstack((np.ones([1,layer1.shape[1]]),layer1)) #Add in bias unit
layer2 = sigmoid(Theta2.dot(layer1))

y_matrix = np.zeros([y.shape[0],layer2.shape[0]]) #Create a matrix where vector position of one corresponds to label
for i in range(y.shape[0]):
y_matrix[i,y[i]-1] = 1

#Cost function
J = (1/m)*np.sum(np.sum(-y_matrix.T.conj()*np.log(layer2),axis=0)-np.sum((1-y_matrix.T.conj())*np.log(1-layer2),axis=0))
J = J+(lam/(2*m))*np.sum(np.sum(Theta1[:,1:].conj()*Theta1[:,1:])+np.sum(Theta2[:,1:].conj()*Theta2[:,1:]))

#Backpropagation with vectorization and regularization
delta_3 = layer2 - y_matrix.T
r2 = delta_3.T.dot(Theta2[:,1:])
z_2 = Theta1.dot(X.T)
t1 = (lam/m)*Theta1[:,1:]
t1 = np.hstack((np.zeros([t1.shape[0],1]),t1))
t2 = (lam/m)*Theta2[:,1:]
t2 = np.hstack((np.zeros([t2.shape[0],1]),t2))

return nn_params
``````

My call of the function:

``````args = (input_layer_size, hidden_layer_size, num_labels, X, y, lam)
fmin_cg(nn_costfunction2,nn_params, args=args,maxiter=50)
``````

Gives the following error:

``````  File "C:\WinPython3\python-3.3.2.amd64\lib\site-packages\scipy\optimize\optimize.py", line 588, in approx_fprime
grad[k] = (f(*((xk+d,)+args)) - f0) / d[k]

ValueError: setting an array element with a sequence.
``````

I tried various permutations in passing arguments to fmin_cg but this is the farthest I got. Running the cost function on its own does not throw any errors in this form.

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The input variable in cost function should be an 1D array. So your `Theta1` and `Theta2` in `J` have to be derived from `nn_params`. And you need to `return J` as well.

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I accepted the solution as returning just `J` seems to not run into the same error. The problem then I have that my error does not minimize (as I am not returning `nn_params`). How do you return `nn_params` and not run in the problem that the fmin_cg expects you to return scalars only? In MatLab, you can output both your gradient and your cost. –  Matt Jan 15 '14 at 16:51
@Matt, you need to initialize the nn_params before you call fmin_cg, then hopefully the optimization function will update the nn_params for you. –  lennon310 Jan 15 '14 at 17:32
yes I do random initialization of `nn_params` by generating first `Theta1` and then `Theta2` and unrolling them into `nn_params`. At the moment, my `nn_costfunction2` returns only `J` is that a problem? When I try returning `nn_params`, I get an error that it is an unsupported operand for type tuple (i.e. when I return both `J` and `nn_params`). –  Matt Jan 15 '14 at 18:27
In the end I used info from the following place to solve my second issue. My final function was `scipy.optimize.minimize` set as follows `res = minimize(nn_costfunction2, init_params, args=args, method='CG', options={'maxiter':50,'disp':True})` with `nn_costfunction2` set to return `J,grad`. Thanks for help! –  Matt Jan 15 '14 at 19:09
That's great solution! Thank you too! –  lennon310 Jan 15 '14 at 19:14

Try to add epsilon argument in function call:

``````fmin_cg(nn_costfunction2,nn_params, args=args,epsilon,maxiter=50)
``````
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