Mathematical Consciousness Science

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Mathematical Consciousness Science (MCS) is an interdisciplinary field in the intersection between the scientific study of consciousness and applied mathematics. Many mathematicians have taken an interest in consciousness over the centuries including René Descartes, Gottfried Wilhelm Leibniz, Alfred North Whitehead, Bertrand Russell and Alan Turing, to name a few, whilst others have developed areas of mathematics that are finding new applications in MCS including Thomas Bayes, Ludwig Boltzmann, Andrey Markov and Claude Shannon.

The term Mathematical Consciousness Science began to be used and recognized from around 2018 onward following a rapid increase in the development of new mathematical and/or computational models and formal theories of consciousness that began from around 2005. Many researchers in the MCS community anticipate that mathematical approaches are needed to tackle challenges such as the Hard problem of consciousness, which is the problem of explaining why and how we have phenomenal experience, and how consciousness relates to the physical domain, particularly regarding the brain and artificial systems and also, more fundamentally, regarding questions involving Quantum Mechanics. Such challenges are at the heart of MCS but any research concerning consciousness, some aspect of consciousness or some issue involving consciousness, where mathematically or computationally formulated models or theories play a central role, fall within the field’s scope.

History of the MCS community’s development

Mathematical and computational models and theories of consciousness

Archetypal models

Being hypotheses about consciousness and its relation to the physical domain, the archetypal model of consciousness arguably has three parts, namely, a mathematical model of salient aspects of the physical system (e.g. circuit models, network models, joint probability distributions etc), a mathematical model for aspects of conscious experience (e.g. topological spaces, metric spaces, matrices of relationships, categories, intensity scales etc) and some form of arguably innate mapping between the physical domain model and the consciousness domain model (e.g. a homomorphism, limit or optimal boundary point, functor, scalar function etc). The models make various predictions about, for example, phenomenal perception, the relational content of consciousness, the level and intensity of consciousness, attention, and the unity (and disunity) of consciousness within and between systems.

Examples include:

  • Integrated Information Theory (IIT) [1] models the physical system with Markov processes obtained from a circuit model. The consciousness domain model involves several outputs of the IIT algorithm but most notably includes a non-negative scalar function , related to the intrinsic irreducibility of a network, that, according to the theory, measures level of consciousness. The algorithm, mapping between the physical domain model and the consciousness domain model has causation at its heart. Therefore, a key modelling assumption in IIT is that a system’s consciousness is directly related to its causal properties.
  • Expected Float Entropy Minimisation (EFE) and its extension to model unity [2], models the physical system with a joint probability distribution that represents the systems bias to being in certain states over other states. The consciousness domain model involves a hierarchy of relational models in the form of matrices of real valued parameters in the range . According to the theory, the relational models provide an interpretation of system status that gives the relational content of the associated experience. The theory’s extension to model unity then deals with integration. The mapping between the physical domain model and the consciousness domain model involves the minimisation of expected float entropy so that the resulting relational model gives the minimum expected entropy interpretation of system states. Therefore, two key modelling assumptions in EFE minimisation are that consciousness is a minimum entropy interpretation of system states and that the structural content of consciousness comes from the correlations and relationships encoded in the bias of a system.

Computational models

Other models

Theories involving Quantum Mechanics

Model validation

Model validation under the closure of the physical

Model validation under the physical being open

Interplay between MCS and philosophy

Philosophical implications of models

Philosophical assumptions in models

Applications of MCS

  1. Template:Cite journal
  2. Mason, J. W. (2021), Model Unity and the Unity of Consciousness: Developments in Expected Float Entropy Minimisation. Entropy, 23, 11. doi:10.3390/e23111444