J
James P. Crutchfield
Researcher at University of California, Davis
Publications - 338
Citations - 20738
James P. Crutchfield is an academic researcher from University of California, Davis. The author has contributed to research in topics: Entropy rate & Dynamical systems theory. The author has an hindex of 62, co-authored 314 publications receiving 19299 citations. Previous affiliations of James P. Crutchfield include University of California, Santa Cruz & PARC.
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Geometry from a Time Series
TL;DR: In this paper, the existence of low-dimensional chaotic dynamical systems describing turbulent fluid flow was determined experimentally by reconstructing phase-space pictures from the observation of a single coordinate of any dissipative dynamical system and determining the dimensionality of the system's attractor.
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Inferring statistical complexity.
James P. Crutchfield,Karl Young +1 more
TL;DR: A technique is presented that directly reconstructs minimal equations of motion from the recursive structure of measurement sequences, demonstrating a form of superuniversality that refers only to the entropy and complexity of a data stream.
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The calculi of emergence: computation, dynamics and induction
TL;DR: An overview of an inductive framework-hierarchical ϵ-machine reconstruction—in which the emergence of complexity is associated with the innovation of new computational model classes is presented, along with an analysis of the constraints on the dynamics of innovation.
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Neutral evolution of mutational robustness.
TL;DR: The results quantify the extent to which populations evolve mutational robustness-the insensitivity of the phenotype to mutations-and thus reduce genetic load.
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Computational Mechanics: Pattern and Prediction, Structure and Simplicity
TL;DR: This paper showed that the causal-state representation of ∈-machine is the minimal one consistent with accurate prediction and established several results on ∈machine optimality and uniqueness and on how ∆-machines compare to alternative representations.