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December 1, 2017 21:11
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Curve fitting for Polynomial, Logarithmic, and Power
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import pandas as pd | |
import numpy as np | |
import matplotlib.pyplot as plt | |
from scipy.optimize import curve_fit | |
df = pd.DataFrame({ | |
'y': [0.996559203, 0.99161362, 0.9925214090000001, 0.986498352, | |
0.9826329420000001, 0.977550635, 0.9542758440000001, 0.941359915, | |
0.933388103, 0.929990698, 0.920058004, 0.90789857, 0.909764261, | |
0.8944469829999999, 0.912682288, 0.913135466, 0.913485262, | |
0.911788038, 0.912034259, 0.910293632, 0.9170476590000001, | |
0.907575858, 0.9098013140000001, 0.90602062, 0.8972021179999999, | |
0.9008619929999999, 0.891679112, 0.909098825, 0.8898716590000001, | |
0.90187596, 0.8846790999999999, 0.902215421, 0.900445068, | |
0.894368245, 0.891844857, 0.893816449, 0.885442787, 0.887642119, | |
0.877802234, 0.8745246609999999, 0.8620522279999999, 0.825483603], | |
'X': [ | |
3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, | |
19, 20, 21, 22, 23, 24, 25, 26, 28, 29, 31, 33, 35, 38, | |
41, 45, 49, 55, 61, 70, 82, 98, 122, 163, 244, 487]}, | |
columns=['X', 'y']) | |
x = np.linspace(df['X'].min(), df['X'].max(), 1000) | |
for i in range(1, 5): | |
poly = np.polyfit(df['X'], df['y'], i) | |
curve = np.polyval(poly, x) | |
if i == 1: | |
plt.scatter(df['X'], df['y'], label='Correlations') | |
plt.plot(x, curve, label='Deg: {}'.format(i)) | |
# logarithmic curve fit y = A + B log x | |
popt, pcov = curve_fit(lambda t,a,b: a+b*np.log(t), df['X'], df['y']) | |
logy = popt[0] + popt[1]*np.log(df['X']) | |
plt.plot(df['X'], logy, label='log-fit') | |
# power curve fit y = A x^-B | |
# note that df['X'] is passed in as t and we're solving for a and b variables | |
popt, pcov = curve_fit(lambda t,a,b: a*t**-b, df['X'], df['y']) | |
powery = popt[0]*df['X']**-popt[1] | |
plt.plot(df['X'], powery, label='power-fit') | |
plt.legend() | |
plt.show() |
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