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costFunctionJ.py
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costFunctionJ.py
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from numpy import *
def costFunctionJ(X, y, theta):
#COSTFUNCTION Compute cost and gradient for logistic regression
# J = COSTFUNCTION(theta, X, y) computes the cost of using theta as the
# parameter for logistic regression and the gradient of the cost
# w.r.t. to the parameters.
# Initialize some useful values
m = size(y,1) # number of training examples
# You need to return the following variables correctly
J = 0
grad = zeros(size(theta,1))
# ====================== YOUR CODE HERE ======================
# Instructions: Compute the cost of a particular choice of theta.
# You should set J to the cost.
# Compute the partial derivatives and set grad to the partial
# derivatives of the cost w.r.t. each parameter in theta
#
# Note: grad should have the same dimensions as theta
#
# ===========================================
return J