8

I have a very specific requirement for interpolating nonlinear data using a 6th degree polynomial. I've seen numpy/scipy routines (scipy.interpolate.InterpolatedUnivariateSpline) that allow interpolation only up to degree 5.

Even if there's no direct function to do this, is there a way to replicate Excel's LINEST linear regression algorithm in Python? LINEST allows 6th degree curve-fitting but I do NOT want to use Excel for anything as this calculation is part of a much larger Python script.

Any help would be appreciated!

8

Use numpys polyfit routine.

http://docs.scipy.org/doc/numpy-1.3.x/reference/generated/numpy.polyfit.html

  • I can't believe I didn't think of that before! Thanks :) – prrao Apr 13 '12 at 15:26
  • 1
    +1 I can't believe I wrote out an unnecessarily complicated example rather than remember the polyfit routine! – Chris Apr 13 '12 at 15:45
18

You can use scipy.optimize.curve_fit to fit whatever function you want (within reason) to your data. The signature of this function is

curve_fit(f, xdata, ydata, p0=None, sigma=None, **kw)

and it uses non-linear least squares fitting to fit a function f to the data ydata(xdata). In your case I would try something like:

import numpy
from scipy.optimize import curve_fit
import matplotlib.pyplot as plt

def _polynomial(x, *p):
    """Polynomial fitting function of arbitrary degree."""
    poly = 0.
    for i, n in enumerate(p):
        poly += n * x**i
    return poly

# Define some test data:
x = numpy.linspace(0., numpy.pi)
y = numpy.cos(x) + 0.05 * numpy.random.normal(size=len(x))

# p0 is the initial guess for the fitting coefficients, set the length
# of this to be the order of the polynomial you want to fit. Here I
# have set all the initial guesses to 1., you may have a better idea of
# what values to expect based on your data.
p0 = numpy.ones(6,)

coeff, var_matrix = curve_fit(_polynomial, x, y, p0=p0)

yfit = [_polynomial(xx, *tuple(coeff)) for xx in x] # I'm sure there is a better
                                                    # way of doing this

plt.plot(x, y, label='Test data')
plt.plot(x, yfit, label='fitted data')

plt.show()

which should give you something like:

enter image description here

  • You can use yfit = _polynomial(xx, *coeff), also note that p0 should have at least a length of 1, for a 0 degree polynomial. – martijnn2008 Jun 6 '16 at 20:04

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.