Normal-distributed Random Generator

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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.


[math]Z0 = \sqrt{-2ln(U_1)}.cos(2\pi U_2)[/math]


[math]Z1 = \sqrt{-2ln(U_1)}.sin(2\pi U_2)[/math]


The Box-Muller Sampling for a Normal Distribution is [math]\mathcal {N}(\mu, \sigma) = z \times \sigma + \mu[/math], where [math]z = Z_0 \text{ or } Z_1[/math].

Sample Python Code

1 million attempts sample
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