Artificial intelligence

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AGI-agent cognitive architecture agica - axiomatic approach

Коrneev S.1
1 «BaltRobotics» sp.z.o.o

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UDC: 004.93
Publication Language: English
Stuc. intelekt. 2023; 28(3):70-84

Abstract: For the last half of the century there were proposed and modeled several dozen cognitive architectures as the models of mind. As one of the results of this Standard Model of the Mind was proposed and discussed in 2017 (now known also as “Common Model of Cognition”). It accumulated lessons learned in one structure. In the articles published in 2016- 2018, the author formulated main definitions of the concepts of Artificial General Intelligence (AGI): AGI-Individual Type, AGI-Collective Type, AGI-Consciousness, AGI-Thought, AGI-Knowledge, AGI-Emotions. The author’s approach belongs to the direction Embodied Cognition in Cognitive Science and is following named “axiomatic approach” in Artificial Intelligence. The definitions proposed by the author are of constructive type from mathematical point of view and can be modeled by the existing software & hardware tools and methods. In this article the author is proposing AGI-Agent cognitive architecture AGICA as detailed modification of Standard Model of the Mind. It can be used in the development of universal operating system for AGI-robots.

Keywords: artificial intelligence, artificial general intelligence, cognitive architecture, operating system

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