A Theoretical Computer Science Perspective on Consciousness
- URL: http://arxiv.org/abs/2011.09850v4
- Date: Mon, 23 Aug 2021 18:40:52 GMT
- Title: A Theoretical Computer Science Perspective on Consciousness
- Authors: Manuel Blum and Lenore Blum
- Abstract summary: This paper studies consciousness from the perspective of theoretical computer science.
It formalizes the Global Workspace Theory (GWT) originated by cognitive neuroscientist Bernard Baars.
We define a Conscious Turing Machine (CTM), also called a Conscious AI.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The quest to understand consciousness, once the purview of philosophers and
theologians, is now actively pursued by scientists of many stripes. This paper
studies consciousness from the perspective of theoretical computer science. It
formalizes the Global Workspace Theory (GWT) originated by cognitive
neuroscientist Bernard Baars and further developed by him, Stanislas Dehaene,
and others. Our major contribution lies in the precise formal definition of a
Conscious Turing Machine (CTM), also called a Conscious AI. We define the CTM
in the spirit of Alan Turing's simple yet powerful definition of a computer,
the Turing Machine (TM). We are not looking for a complex model of the brain
nor of cognition but for a simple model of (the admittedly complex concept of)
consciousness. After formally defining CTM, we give a formal definition of
consciousness in CTM. We then suggest why the CTM has the feeling of
consciousness. The reasonableness of the definitions and explanations can be
judged by how well they agree with commonly accepted intuitive concepts of
human consciousness, the breadth of related concepts that the model explains
easily and naturally, and the extent of its agreement with scientific evidence.
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