Brain-inspired and Self-based Artificial Intelligence
- URL: http://arxiv.org/abs/2402.18784v1
- Date: Thu, 29 Feb 2024 01:15:17 GMT
- Title: Brain-inspired and Self-based Artificial Intelligence
- Authors: Yi Zeng, Feifei Zhao, Yuxuan Zhao, Dongcheng Zhao, Enmeng Lu, Qian
Zhang, Yuwei Wang, Hui Feng, Zhuoya Zhao, Jihang Wang, Qingqun Kong, Yinqian
Sun, Yang Li, Guobin Shen, Bing Han, Yiting Dong, Wenxuan Pan, Xiang He,
Aorigele Bao, Jin Wang
- Abstract summary: "Can machines think?" and the Turing Test to assess whether machines could achieve human-level intelligence is one of the roots of AI.
This paper challenge the idea of a "thinking machine" supported by current AIs since there is no sense of self in them.
Current artificial intelligence is only seemingly intelligent information processing and does not truly understand or be subjectively aware of oneself.
- Score: 23.068338822392544
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The question "Can machines think?" and the Turing Test to assess whether
machines could achieve human-level intelligence is one of the roots of AI. With
the philosophical argument "I think, therefore I am", this paper challenge the
idea of a "thinking machine" supported by current AIs since there is no sense
of self in them. Current artificial intelligence is only seemingly intelligent
information processing and does not truly understand or be subjectively aware
of oneself and perceive the world with the self as human intelligence does. In
this paper, we introduce a Brain-inspired and Self-based Artificial
Intelligence (BriSe AI) paradigm. This BriSe AI paradigm is dedicated to
coordinating various cognitive functions and learning strategies in a
self-organized manner to build human-level AI models and robotic applications.
Specifically, BriSe AI emphasizes the crucial role of the Self in shaping the
future AI, rooted with a practical hierarchical Self framework, including
Perception and Learning, Bodily Self, Autonomous Self, Social Self, and
Conceptual Self. The hierarchical framework of the Self highlights self-based
environment perception, self-bodily modeling, autonomous interaction with the
environment, social interaction and collaboration with others, and even more
abstract understanding of the Self. Furthermore, the positive mutual promotion
and support among multiple levels of Self, as well as between Self and
learning, enhance the BriSe AI's conscious understanding of information and
flexible adaptation to complex environments, serving as a driving force
propelling BriSe AI towards real Artificial General Intelligence.
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