How to calculate error for polynomial fitting (in slope and intercept)

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 *

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] )

plt.subplot(111)
plt.loglog(xdata,ydata,'.k',xdata,yfit,'-r')
plt.show()
``````

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