i have a 3x2000 numpy array in x_data and a 1x2000 numpy array in y_data which i pass to this function regress to give me a regression line. it works fine. the problem is that i am trying to do some backtesting and to test 1000 situations i have to regress 1000 times and it will take me about 5 minutes to run this.
i tried standardizing the variables it didn't seem to make it faster.
i also briefly tried fmin_powell and fmin_bfgs which seemed to break it.
any ideas? thanks!
def regress(x_data, y_data, fg_spread, fg_line): theta = np.matrix(np.ones((1,x_data.shape))*.11) hyp = lambda theta, x: 1 / (1 + np.exp(-(theta*x))) cost_hyp = lambda theta, x, y: ((np.multiply(-y,np.log10(hyp(theta,x)))) - \ (np.multiply((1-y),(np.log10(1-hyp(theta, x)))))).sum() theta = scipy.optimize.fmin(cost_hyp, theta, args=(x_data,y_data), xtol=.00001, disp=0) return hyp(np.matrix(theta),np.matrix([1,fg_spread, fg_line]).reshape(3,1))