Created
August 21, 2018 01:05
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Fast Python implementation of Inverse Transform Sampling for an arbitrary probability distribution
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import numpy as np | |
from numpy.random import random | |
from scipy import interpolate | |
import matplotlib.pyplot as plt | |
import cProfile | |
def f(x): | |
# does not need to be normalized | |
return np.exp(-x**2) * np.cos(3*x)**2 * (x-1)**4/np.cosh(1*x) | |
def sample(g): | |
x = np.linspace(-5,5,1e5) | |
y = g(x) # probability density function, pdf | |
cdf_y = np.cumsum(y) # cumulative distribution function, cdf | |
cdf_y = cdf_y/cdf_y.max() # takes care of normalizing cdf to 1.0 | |
inverse_cdf = interpolate.interp1d(cdf_y,x) # this is a function | |
return inverse_cdf | |
def return_samples(N=1e6): | |
# let's generate some samples according to the chosen pdf, f(x) | |
uniform_samples = random(int(N)) | |
required_samples = sample(f)(uniform_samples) | |
return required_samples | |
cProfile.run('return_samples()') | |
## plot | |
x = np.linspace(-3,3,1e4) | |
fig,ax = plt.subplots() | |
ax.set_xlabel('x') | |
ax.set_ylabel('probability density') | |
ax.plot(x,f(x)/np.sum(f(x)*(x[1]-x[0])) ) | |
ax.hist(return_samples(1e6),bins='auto',normed=True,range=(x.min(),x.max())) | |
plt.show() |
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