Normal-distributed Random Generator
Revisão de 10h00min de 30 de dezembro de 2020 por Abaffa (discussão | contribs) (Criou página com 'commoldura|direita|1 million attempts sample')
Normal or Gaussian distribution is, without any doubt, the most famous statistical distribution (primarily because of its link with the Central Limit Theorem).
It turns out that using a special method called Box-Muller transform, we can generate Normally distributed random variates from Uniform random generators.
The Box-Muller Sampling for a Normal Distribution is , where .
Sample Python Code
def pseudo_normal(mu=0.0, sigma=1.0, size=1):
"""
Generates normal distribution from uniform generator
using Box-Muller transform
"""
# Sets seed based on the decimal portion of the current system clock
t = time.perf_counter()
seed1 = int(10**9*float(str(t-int(t))[0:]))
U1 = pseudo_uniform(seed=seed1, size=size)
t = time.perf_counter()
seed2 = int(10**9*float(str(t-int(t))[0:]))
U2 = pseudo_uniform(seed=seed2, size=size)
# Standard Normal pair
Z0 = np.sqrt(-2*np.log(U1)) * np.cos(2*np.pi*U2)
Z1 = np.sqrt(-2*np.log(U1)) * np.sin(2*np.pi*U2)
# Scaling
Z0 = Z0 * sigma + mu
return Z0