Hi I want to calculate errors in slope and intercept which are calculated by scipy.polyfit function. I have (+/-) uncertainty for ydata so how can I include it for calculating uncertainty into slope and intercept? My code is,

from scipy import polyfit
import pylab as plt
from numpy import *

data = loadtxt("data.txt")
xdata,ydata = data[:,0],data[:,1]

x_d,y_d = log10(xdata),log10(ydata)
polycoef = polyfit(x_d, y_d, 1)
yfit = 10**( polycoef[0]*x_d+polycoef[1] )


Thanks a lot


You could use scipy.optimize.curve_fit instead of polyfit. It has a parameter sigma for errors of ydata. If you have your error for every y value in a sequence yerror (so that yerror has the same length as your y_d sequence) you can do:

polycoef, _ = scipy.optimize.curve_fit(lambda x, a, b: a*x+b, x_d, y_d, sigma=yerror)

For an alternative see the paragraph Fitting a power-law to data with errors in the Scipy Cookbook.

  • Thanks for the reply. Yes I have seen that power law function but how can I combine my +/- error together with ydata? For example my ydata looks like, Y = 5 (+0.1, -0.4), 4.7 (+0.7,-0.4),..etc. – physics_for_all Oct 3 '12 at 12:46
  • @viralparekh You have an asymmetric deviation of your values? Never seen that before :) Could you elaborate a little on why the positive deviation is different from the negative. – halex Oct 3 '12 at 12:51
  • It shows confidence region. so 1st Y value is between (5.09 and 4.59) and so on. It just showing +ve(high) and -ve(low) error. – physics_for_all Oct 3 '12 at 12:59

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.