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A Maximum Entropy Method for the Prediction of Size Distributions
by
Metzig, Cornelia
, Colijn, Caroline
in
Computer simulation
/ Containers
/ Entropy (Information theory)
/ Mathematical models
/ Maximum entropy method
2020
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A Maximum Entropy Method for the Prediction of Size Distributions
by
Metzig, Cornelia
, Colijn, Caroline
in
Computer simulation
/ Containers
/ Entropy (Information theory)
/ Mathematical models
/ Maximum entropy method
2020
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A Maximum Entropy Method for the Prediction of Size Distributions
Paper
A Maximum Entropy Method for the Prediction of Size Distributions
2020
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Overview
We propose a method to derive the stationary size distributions of a system, and the degree distributions of networks, using maximisation of the Gibbs-Shannon entropy. We apply this to a preferential attachment-type algorithm for systems of constant size, which contains exit of balls and urns (or nodes and edges for the network case). Knowing mean size (degree) and turnover rate, the power law exponent and exponential cutoff can be derived. Our results are confirmed by simulations and by computation of exact probabilities. We also apply this entropy method to reproduce existing results like the Maxwell-Boltzmann distribution for the velocity of gas particles, the Barabasi-Albert model and multiplicative noise systems.
Publisher
Cornell University Library, arXiv.org
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