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Polyfit is a great tool to fit a line to a set of points. However my data has varying levels of statistical significance.

For example, for one point (x1,y2) I might only have 10 observations, while for another point (x2,y2) I might have 10,000 observations. I usually have at least 10 points and I'd like to weight each according to statistical significance when using polyfit. Is there any way (or a similar function) that allows for that?

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3 Answers 3

One possibility is to use weighted least squares in statsmodels


y is response or endogenous variable (endog)

x is your 1 dimensional explanatory variable

w your weight array, the higher the more weight on that observation

to get the polynomial matrix, and fit

import numpy as np
import statsmodels.api as sm
exog = np.vander(x, degree+1)
result = sm.WLS(y, exog, weight=w).fit()

the parameters are in result.params. The fitted values are in result.fittedvalues

Prediction has changed between versions. With version 0.4 you can use

result.predict(np.vander(x_new, degree+1))
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bmu: thank you for updating this –  user333700 Jun 30 '12 at 12:48

I do not know about numpy but you can write your own polyfit function. Polyfit is just solving of linear equation.

(in your case epsilon is probably 0)

You can see that all you have to do is multipling each line in y and each line in x whit your coeficient.
This shoul be like 10 lines of code (i remeber that it took me like 4h to reinvent minsquare equation on my own, but only 2 lines of code in MATLAB)

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more straightforward:

import numpy as np
result = np.polynomial.polynomial.polyfit(x,y,deg,w=weight of each observation)
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