Thermodynamics of the Minimum Description Length on Community Detection
Juan Ignacio Perotti, Claudio Juan Tessone, Aaron Clauset and, Guido Caldarelli

TL;DR
This paper introduces a thermodynamics-inspired formalization of the Minimum Description Length principle, called Boltzmannian MDL, and applies it to community detection, providing new insights and improvements over existing methods.
Contribution
The paper develops Boltzmannian MDL, linking statistical modeling with thermodynamics, and demonstrates its application to community detection, deriving and improving existing algorithms.
Findings
BMDL improves community detection accuracy.
Thermodynamic concepts explain phase transitions in model selection.
BMDL justifies and enhances Girvan-Newman and Zhang-Moore methods.
Abstract
Modern statistical modeling is an important complement to the more traditional approach of physics where Complex Systems are studied by means of extremely simple idealized models. The Minimum Description Length (MDL) is a principled approach to statistical modeling combining Occam's razor with Information Theory for the selection of models providing the most concise descriptions. In this work, we introduce the Boltzmannian MDL (BMDL), a formalization of the principle of MDL with a parametric complexity conveniently formulated as the free-energy of an artificial thermodynamic system. In this way, we leverage on the rich theoretical and technical background of statistical mechanics, to show the crucial importance that phase transitions and other thermodynamic concepts have on the problem of statistical modeling from an information theoretic point of view. For example, we provide…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Advanced Text Analysis Techniques
