# Python implementation of gradient descent (Machine Learning)

I have tried to implement gradient descent here in python but the cost J just seems to be increasing irrespective of lambda ans alpha value, i am unable to figure out what the issue over here is. It'll be great if someone can help me out with this. The input is a matrix Y and R with same dimensions. Y is a matrix of movies x users and R is just to say if a user has rated a movie.

``````#Recommender system ML
import numpy
import scipy.io

(nm,nu) = numpy.shape(y)
x =  numpy.mat(numpy.random.randn(nm,10))
theta =  numpy.mat(numpy.random.randn(nu,10))
for i in range(1,10):
(x,theta) = costFunc(x,theta,y,r)

def costFunc(x,theta,y,r):

X_tmp = numpy.power(x , 2)
Theta_tmp = numpy.power(theta , 2)
lmbda = 0.1
reg = ((lmbda/2) * numpy.sum(Theta_tmp))+ ((lmbda/2)*numpy.sum(X_tmp))
ans = numpy.multiply(numpy.power(((theta * x.T).T - y),2) , r)
res = (0.5 * numpy.sum(ans))+reg
print "J:",res
print "reg:",reg
(nm,nu) = numpy.shape(y)
alpha = 0.1
#       [m f] = size(X);
(m,f) = numpy.shape(x);

for i in range(0,m):
for k in range(0,f):
tmp = 0
#                       X_grad(i,k) += (((theta * x'(:,i)) - y(i,:)').*r(i,:)')' * theta(:,k);
tmp += ((numpy.multiply(((theta * x.T[:,i]) - y[i,:].T),r[i,:].T)).T) * theta[:,k];
tmp += (lmbda*x[i,k]);

#       [m f] = size(Theta);
(m,f) = numpy.shape(theta);

for i in range(0,m):
for k in range(0,f):
tmp = 0
#                       Theta_grad(i,k) += (((theta(i,:) * x') - y(:,i)').*r(:,i)') * x(:,k);
tmp += (numpy.multiply(((theta[i,:] * x.T) - y[:,i].T),r[:,i].T)) * x[:,k];
tmp += (lmbda*theta[i,k]);

def main():
Y = mat1['Y']
R = mat1['R']
r = numpy.mat(R)
y = numpy.mat(Y)

#if __init__ == '__main__':
main()
``````
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possible duplicate of gradient descent using python and numpy ,machine learning –  Thomas Jungblut Nov 10 '13 at 13:03

I did not check the whole code logic, but assuming it is correct, your `costfunc` is supposed to return gradient of the cost function, and in these lines:

``````for i in range(1,10):
(x,theta) = costFunc(x,theta,y,r)
``````

you are overwriting the last values of x and theta with its gradient, while gradient is the measure of change, so you should move in the opposite direction (substract the gradient instead of overwriting the values):

``````for i in range(1,10):
(x,theta) -= costFunc(x,theta,y,r)
``````

But it seems that you already assign the minus sign to the gradient in your `costfunc` so you should add this value instead

``````for i in range(1,10):
(x,theta) += costFunc(x,theta,y,r)
``````
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