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I have a distribution (drawn with numpy.histogram) that seems to be linear when plotted on log-log axis. I'd like to compute and draw a linear regression on this histogram to find out the parameters of the linear regression, as well as the r square.

I've tried different things (using polyfit on the values returned by numpy.histogram), looked around quite a bit but, although this is probably a very common problem, I can't seem to find a simple method to do this. Is there any?

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Did you try good old numpy.linalg.lstsq? coef = lstsq(x, y)[0] –  larsmans Mar 5 '13 at 0:47

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Can you fit a line to the log of the values?

log y = a log x + b (fit a and b)
=> y = x^a e^b
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No I can't, and I suspect that is because I have a few zeros on the y axis. np.polyfit probably doesn't like dealing with values like np.log(0)=-inf... –  Rodolphe Mar 5 '13 at 0:42
So some bins in the histogram have count 0? This means that eg all models have infinite r^2. What if you fit to the data ignoring the 0 bins? –  Dougal Mar 5 '13 at 0:48

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