Consciousness, natural and artificial: an evolutionary advantage for reasoning on reactive substrates
- URL: http://arxiv.org/abs/2510.20839v1
- Date: Fri, 17 Oct 2025 10:31:25 GMT
- Title: Consciousness, natural and artificial: an evolutionary advantage for reasoning on reactive substrates
- Authors: Warisa Sritriratanarak, Paulo Garcia,
- Abstract summary: We show a model that precisely models consciousness, natural or artificial, identifying the structural and functional mechanisms that effect it.<n>Results show there is no impediment to the realization of fully artificial consciousness but, surprisingly, that it is also possible to realize artificial intelligence of arbitrary level without consciousness.
- Score: 0.8594140167290097
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Precisely defining consciousness and identifying the mechanisms that effect it is a long-standing question, particularly relevant with advances in artificial intelligence. The scientific community is divided between physicalism and natural dualism. Physicalism posits consciousness is a physical process that can be modeled computationally; natural dualism rejects this hypothesis. Finding a computational model has proven elusive, particularly because of conflation of consciousness with other cognitive capabilities exhibited by humans, such as intelligence and physiological sensations. Here we show such a computational model that precisely models consciousness, natural or artificial, identifying the structural and functional mechanisms that effect it, confirming the physicalism hypothesis. We found such a model is obtainable when including the underlying (biological or digital) substrate and accounting for reactive behavior in substrate sub-systems (e.g., autonomous physiological responses). Results show that, unlike all other computational processes, consciousness is not independent of its substrate and possessing it is an evolutionary advantage for intelligent entities. Our result shows there is no impediment to the realization of fully artificial consciousness but, surprisingly, that it is also possible to realize artificial intelligence of arbitrary level without consciousness whatsoever, and that there is no advantage in imbuing artificial systems with consciousness.
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