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I'm using matplotlib + numpy to generate linear regressions using the polyfit and polyval functions

lateReg = np.polyfit(x=xm,y=mcherryp,deg=1)
ax1.plot(xm, np.polyval(lateReg,xm), 'r-')
earlyReg = np.polyfit(xv,venusp,deg=1)
ax1.plot(xv, np.polyval(earlyReg,xv), 'g-')

However, since my x axis is log, the lines don't look very linear. This site says I can simply use y=m*log(x)+b and my line will be linear again, but I'm unsure of how to do so with the code I have (and I'd like to use these functions instead of doing it manually). Any ideas? Is it as simple as:

ax1.plot(log(xm), np.polyval(lateReg,xm), 'r-')


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1 Answer 1

up vote 2 down vote accepted

Assuming that your data looks like a straight line on the semilog plot, you want

p = np.polyfit(np.log(xm), mcherryp, 1)
ax1.semilogx(xm, p[0] * np.log(xm) + p[1], 'r-')

In this case, and the loglog case, I usually think that polyval is not useful.

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Works like a charm. Thanks a ton :) –  mcdustin Feb 20 '14 at 15:42

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