Computing Integrated Information
Stephan Krohn, Dirk Ostwald

TL;DR
This paper provides a comprehensive probabilistic formulation of integrated information theory (IIT), enabling its application to experimental data by defining a general measure of consciousness based on Markov processes.
Contribution
It introduces a general, mathematically precise formulation of $oldsymbol{ ext{Φ}}^{ ext{max}}$ for first-order Markov processes, expanding IIT's applicability and addressing theoretical issues like quale underdetermination.
Findings
Validated the formulation on a discrete example system
Addressed the issue of quale underdetermination
Proposed modifications to improve the framework
Abstract
Integrated information theory (IIT) has established itself as one of the leading theories for the study of consciousness. IIT essentially proposes that quantitative consciousness is identical to maximally integrated conceptual information, quantified by a measure called , and that phenomenological experience corresponds to the associated set of maximally irreducible cause-effect repertoires of a physical system being in a certain state. However, in order to ultimately apply the theory to experimental data, a sufficiently general formulation is needed. With the current work, we provide this general formulation, which comprehensively and parsimoniously expresses in the language of probabilistic models. Here, the stochastic process describing a system under scrutiny corresponds to a first-order time-invariant Markov process, and all necessary mathematical…
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Taxonomy
TopicsNeural dynamics and brain function · Statistical Mechanics and Entropy · Complex Systems and Time Series Analysis
