Abstract

Proposed here is a new framework for the analysis of complex systems as a non-explicitly programmed mathematical hierarchy of subsystems using only the fundamental principle of causality, the mathematics of groupoid symmetries, and a basic causal metric needed to support measurement in Physics. The complex system is described as a discrete set S of state variables. Causality is described by an acyclic partial order w on S, and is considered as a constraint on the set of allowed state transitions. Causal set (S, w) is the mathematical model of the system. The dynamics it describes is uncertain. Consequently, we focus on invariants, particularly group-theoretical block systems. The symmetry of S by itself is characterized by its symmetric group, which generates a trivial block system over S. The constraint of causality breaks this symmetry and degrades it to that of a groupoid, which may yield a non-trivial block system on S. In addition, partial order w determines a partial order for the blocks, and the set of blocks becomes a causal set with its own, smaller block system. Recursion yields a multilevel hierarchy of invariant blocks over S with the properties of a scale-free mathematical fractal. This is the invariant being sought. The finding hints at a deep connection between the principle of causality and a class of poorly understood phenomena characterized by the formation of hierarchies of patterns, such as emergence, selforganization, adaptation, intelligence, and semantics. The theory and a thought experiment are discussed and previous evidence is referenced. Several predictions in the human brain are confirmed with wide experimental bases. Applications are anticipated in many disciplines, including Biology, Neuroscience, Computation, Artificial Intelligence, and areas of Engineering such as system autonomy, robotics, systems integration, and image and voice recognition.

Highlights

  • Groups and groupoids are very similar, but a critically important case where they behave very differentlyHow to cite this paper: Pissanetzky, S. (2014) Causal Groupoid Symmetries

  • The notion of symmetry was further extended to directed graphs, and defined as the set of node permutations that preserve the topology of the graph [5] [6], reporting rhythmic, periodic motion that follows from groupoid symmetries underlying the dynamics

  • We show that groupoids arise naturally from causal models of complex systems

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Summary

Introduction

Groups and groupoids are very similar, but a critically important case where they behave very differently. The notion of symmetry was further extended to directed graphs, and defined as the set of node permutations that preserve the topology of the graph [5] [6], reporting rhythmic, periodic motion that follows from groupoid symmetries underlying the dynamics This led to studies of synchrony, phase lock, multirythms, synchronized chaos, and bifurcation, including mammal gait and other examples of repetitive dynamics usually considered as adaptive behavior. The formalization presented here is the result of several years of work that followed the initial discovery This is a bottom-up theory that follows directly from the principle of causality and an abstract metric for causal sets that is necessary to support measurement in Physics, and nothing else. The supplementary material is available from http://www.scicontrols.com

Mathematics
Physics
Analysis
Thought Experiment
Causal Models
Practical Implementation
Predictions
Conclusions
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