# 6th degree curve fitting with numpy/scipy

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!

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Use numpys polyfit routine.

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

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I can't believe I didn't think of that before! Thanks :) –  prrao Apr 13 '12 at 15:26
+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

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:

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