A computational mechanics approach to estimate entropy and (approximate) complexity for the dynamics of the 2D Ising Ferromagnet
O. Melchert, A. K. Hartmann

TL;DR
This paper introduces a computational mechanics method to estimate entropy and complexity in the 2D Ising Ferromagnet's spin dynamics, revealing peaks near critical temperature and analyzing finite-size effects.
Contribution
It proposes a new approximate statistical complexity measure based on data compression, applicable to binary sequences from spin systems, and compares multiple entropy estimation algorithms.
Findings
Complexity peaks near the critical temperature.
Finite-size scaling shows the peak approaches critical temperature with larger sequences.
Different spin-flip dynamics yield similar qualitative results.
Abstract
We present a numerical analysis of the entropy rate and statistical complexity related to the spin flip dynamics of the 2D Ising Ferromagnet at different temperatures T. We follow an information theoretic approach and test three different entropy estimation algorithms to asses entropy rate and statistical complexity of binary sequences. The latter are obtained by monitoring the orientation of a single spin on a square lattice of side-length L=256 at a given temperature parameter over time. The different entropy estimation procedures are based on the M-block Shannon entropy (a well established method that yields results for benchmarking purposes), non-sequential recursive pair substitution (providing an elaborate and an approximate estimator) and a convenient data compression algorithm contained in the zlib-library (providing an approximate estimator only). We propose an approximate…
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Taxonomy
TopicsTheoretical and Computational Physics · Computability, Logic, AI Algorithms · Cellular Automata and Applications
