Algorithmic complexity and statistical mechanics

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Abstract

We apply the algorithmic complexity theory to statistical mechanics; in particular, we consider the maximum entropy principle and the entropy concentration theorem for non-ordered data in a non-probabilistic setting. The main goal of this paper is to deduce asymptotic relations for the frequencies of energy levels in a non-ordered collection ωN = [ω1, ..., ωN] from the assumption of maximality of the Kolmogorov complexity K(ωN) given a constraint , where E is a number and f is a numerical function; f(ωi) is an energy level. We also consider a combinatorial model of the securities market and give some applications of the entropy concentration theorem to finance. 

Keywords

Algorithmic complexity , algorithmic information theory , statistical mechanics , maximum entropy principle , Jaynes‘ entropy concentration theorem , distribution of investments
  • Vladimir V'yugin Institute for information transmission problems, Russian academy of sciences, Bol'shoi Karetnyi per. 19, Moscow GSP-4, 127994, Russia.
  • Victor Maslov Moscow State University, Physical Faculty, Vorobyevy Gory, Moscow 119899, Russia.
  • Pages: 15-36
  • Date Published: 2007-08-01
  • Vol. 9 No. 2 (2007): CUBO, A Mathematical Journal

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Published

2007-08-01

How to Cite

[1]
V. V’yugin and V. Maslov, “Algorithmic complexity and statistical mechanics”, CUBO, vol. 9, no. 2, pp. 15–36, Aug. 2007.