Consciousness as a logically consistent and prognostic model of reality
- URL: http://arxiv.org/abs/2401.00005v1
- Date: Sun, 10 Dec 2023 14:07:20 GMT
- Title: Consciousness as a logically consistent and prognostic model of reality
- Authors: Evgenii Vityaev
- Abstract summary: Causal relationships may create fixed points of cyclic inter-predictable properties.
Brain might reflect the external world causal relationships in the form of a logically consistent and prognostic model of reality.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The work demonstrates that brain might reflect the external world causal
relationships in the form of a logically consistent and prognostic model of
reality, which shows up as consciousness. The paper analyses and solves the
problem of statistical ambiguity and provides a formal model of causal
relationships as probabilistic maximally specific rules. We suppose that brain
makes all possible inferences from causal relationships. We prove that the
suggested formal model has a property of an unambiguous inference: from
consistent premises we infer a consistent conclusion. It enables a set of all
inferences to form a consistent model of the perceived world. Causal
relationships may create fixed points of cyclic inter-predictable properties.
We consider the "natural" classification introduced by John St. Mill and
demonstrate that a variety of fixed points of the objects' attributes forms a
"natural" classification of the external world. Then we consider notions of
"natural" categories and causal models of categories, introduced by Eleanor
Rosch and Bob Rehder and demonstrate that fixed points of causal relationships
between objects attributes, which we perceive, formalize these notions. If the
"natural" classification describes the objects of the external world, and
"natural" concepts the perception of these objects, then the theory of
integrated information, introduced by G. Tononi, describes the information
processes of the brain for "natural" concepts formation that reflects the
"natural" classification. We argue that integrated information provides high
accuracy of the objects identification. A computer-based experiment is provided
that illustrates fixed points formation for coded digits.
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