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The Zipf probability distribution is often used to model file size distribution or item access distributions on items in P2P systems. e.g. "Web Caching and Zip like Distribution Evidence and Implications", but neither Boost or the GSL (Gnu Scientific Library) provide an implementation to generate random numbers using this distribution. I have not found a (trustworthy) implementation using the common search engines.

How can random numbers that are distributed according to the Zipf distribution by using a U(0,1) random generator, e.g. the Mersenne twister?

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3 Answers

up vote 8 down vote accepted

zipfR is a free and open source library implemented with R. VGAM is another R package that also implements Zipf.

It's also worth noting that the Gnu Scientific Library has an implementation of the Pareto distribution which is effectively the continuous analogue of the discrete Zipf distribution.

Also, the Zeta distribution is equivalent to Zipf for infinite N. The GSL has an implementation of the Riemann zeta function, so you could use that to construct the distribution yourself.

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+1 for VGAM. Its dzipf function will give you a list of probabilities for each rank, which you can use to generate item accesses. –  Mihai Capotă Apr 19 '13 at 9:52
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numpy.random.zipf generates Zipf samples using python.

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Unfortunately, it uses Riemann's zeta function, so it only takes exponents higher than 1, while many P2P populations are best modeled with exponents lower than 1. –  Mihai Capotă Apr 19 '13 at 9:57
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Here's a Python Zipf-like distribution generator for n items with parameter alpha >= 0:

import random 
import bisect 
import math 

class ZipfGenerator: 

    def __init__(self, n, alpha): 
        # Calculate Zeta values from 1 to n: 
        tmp = [1. / (math.pow(float(i), alpha)) for i in range(1, n+1)] 
        zeta = reduce(lambda sums, x: sums + [sums[-1] + x], tmp, [0]) 

        # Store the translation map: 
        self.distMap = [x / zeta[-1] for x in zeta] 

    def next(self): 
        # Take a uniform 0-1 pseudo-random value: 
        u = random.random()  

        # Translate the Zipf variable: 
        return bisect.bisect(self.distMap, u) - 1
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Excellent answer. For Python 3.x, add "from functools import *" –  Daniel Lemire Mar 20 '12 at 1:11
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