Artificial Intelligence without Restriction Surpassing Human Intelligence with Probability One: Theoretical Insight into Secrets of the Brain with AI Twins of the Brain
Guang-Bin Huang, M. Brandon Westover, Eng-King Tan, Haibo Wang,, Dongshun Cui, Wei-Ying Ma, Tiantong Wang, Qi He, Haikun Wei, Ning Wang,, Qiyuan Tian, Kwok-Yan Lam, Xin Yao, Tien Yin Wong

TL;DR
This paper provides a theoretical framework suggesting that unrestricted AI, modeled as brain-like twins, can surpass human intelligence with probability one, opening new avenues in neuroscience, AI development, and interdisciplinary research.
Contribution
It introduces the concept of AI twins at the cellular level capable of approximating brain functions and proves the potential for AI to surpass human intelligence in theory.
Findings
AI twins can approximate brain functions with minimal error
Unrestricted AI can surpass human intelligence with probability one
New AI techniques can enhance neuroscience and brain disorder solutions
Abstract
Artificial Intelligence (AI) has apparently become one of the most important techniques discovered by humans in history while the human brain is widely recognized as one of the most complex systems in the universe. One fundamental critical question which would affect human sustainability remains open: Will artificial intelligence (AI) evolve to surpass human intelligence in the future? This paper shows that in theory new AI twins with fresh cellular level of AI techniques for neuroscience could approximate the brain and its functioning systems (e.g. perception and cognition functions) with any expected small error and AI without restrictions could surpass human intelligence with probability one in the end. This paper indirectly proves the validity of the conjecture made by Frank Rosenblatt 70 years ago about the potential capabilities of AI, especially in the realm of artificial neural…
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