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Measures of Statistical Complexity: Why?

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Abstract

We review several statistical complexity measures proposed over the last decade and a half as general indicators of structure or correlation. Recently, L\`opez-Ruiz, Mancini, and Calbet [Phys. Lett. A 209 (1995) 321] introduced another measure of statistical complexity $C_{\rm LMC}$ that, like others, satisfies the ``boundary conditions'' of vanishing in the extreme ordered and disordered limits. We examine some properties of $C_{\rm LMC}$ and find that it is neither an intensive nor an extensive thermodynamic variable. It depends nonlinearly on system size and vanishes exponentially in the thermodynamic limit for all one-dimensional finite-range spin systems. We propose a simple alteration of $C_{\rm LMC}$ that renders it extensive. however, this remedy results in a quantity that is a trivial function of the entropy density and hence of no use as a measure of structure or memory. We conclude by suggesting that a useful ``statistical complexity'' must not only obey the ordered-random bounary conditions of vanishing, it must also be defined in a setting that gives a clear interpretation to what structures are quantified.

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  • David P. Feldman & James P. Crutchfield, 1997. "Measures of Statistical Complexity: Why?," Working Papers 97-07-064, Santa Fe Institute.
  • Handle: RePEc:wop:safiwp:97-07-064
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    Cited by:

    1. Joshua M. Epstein, 2000. "Learning to Be Thoughtless: Social Norms and Individual Computation," Working Papers 00-03-022, Santa Fe Institute.

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