The Organization of Intrinsic Computation:
Complexity-Entropy Diagrams and the Diversity of Natural Information Processing

David P. Feldman
College of the Atlantic
Bar Harbor, MA 04609,
Complexity Sciences Center and Physics Department
University of California at Davis
Davis, CA 95616, and
Santa Fe Institute
1399 Hyde Park Road
Santa Fe, NM 87501

Carl S. McTague
DPMMS, Centre for Mathematical Sciences
University of Cambridge
Wilberforce Road, Cambridge, CB3 0WB, England, and
Santa Fe Institute
1399 Hyde Park Road
Santa Fe, NM 87501

James P. Crutchfield
Complexity Sciences Center and Physics Department
University of California at Davis
Davis, CA 95616, and
Santa Fe Institute
1399 Hyde Park Road
Santa Fe, NM 87501

ABSTRACT: Intrinsic computation refers to how dynamical systems store, structure, and transform historical and spatial information. By graphing a measure of structural complexity against a measure of randomness, complexity-entropy diagrams display the range and different kinds of intrinsic computation across an entire class of system. Here, we use complexity-entropy diagrams to analyze intrinsic computation in a broad array of deterministic nonlinear and linear stochastic processes, including maps of the interval, cellular automata and Ising spin systems in one and two dimensions, Markov chains, and probabilistic minimal finite-state machines. Since complexity-entropy diagrams are a function only of observed configurations, they can be used to compare systems without reference to system coordinates or parameters. It has been known for some time that in special cases complexity-entropy diagrams reveal that high degrees of information processing are associated with phase transitions in the underlying process space, the so-called “edge of chaos”. Generally, though, complexity-entropy diagrams differ substantially in character, demonstrating a genuine diversity of distinct kinds of intrinsic computation.


David P. Feldman, Carl S. McTague, and J. P. Crutchfield, "The Organization of Intrinsic Computation: Complexity-Entropy Diagrams and the Diversity of Natural Information Processing", CHAOS 18:4 (2008) 59-73.
[pdf] 2076 kB
Santa Fe Institute Working Paper 08-07-028.
arXiv:v0806.4789[nlin.CD].