CERN for AGI: A Theoretical Framework for Autonomous Simulation-Based
Artificial Intelligence Testing and Alignment
- URL: http://arxiv.org/abs/2312.09402v1
- Date: Thu, 14 Dec 2023 23:48:51 GMT
- Title: CERN for AGI: A Theoretical Framework for Autonomous Simulation-Based
Artificial Intelligence Testing and Alignment
- Authors: Ljubisa Bojic, Matteo Cinelli, Dubravko Culibrk, Boris Delibasic
- Abstract summary: This study investigates an innovative simulation-based multi-agent system within a virtual reality framework that replicates the real-world environment.
The framework is populated by automated 'digital citizens,' simulating complex social structures and interactions to examine and optimize AGI.
- Score: 1.9212368803706583
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: This paper explores the potential of a multidisciplinary approach to testing
and aligning artificial general intelligence (AGI) and LLMs. Due to the rapid
development and wide application of LLMs, challenges such as ethical alignment,
controllability, and predictability of these models have become important
research topics. This study investigates an innovative simulation-based
multi-agent system within a virtual reality framework that replicates the
real-world environment. The framework is populated by automated 'digital
citizens,' simulating complex social structures and interactions to examine and
optimize AGI. Application of various theories from the fields of sociology,
social psychology, computer science, physics, biology, and economics
demonstrates the possibility of a more human-aligned and socially responsible
AGI. The purpose of such a digital environment is to provide a dynamic platform
where advanced AI agents can interact and make independent decisions, thereby
mimicking realistic scenarios. The actors in this digital city, operated by the
LLMs, serve as the primary agents, exhibiting high degrees of autonomy. While
this approach shows immense potential, there are notable challenges and
limitations, most significantly the unpredictable nature of real-world social
dynamics. This research endeavors to contribute to the development and
refinement of AGI, emphasizing the integration of social, ethical, and
theoretical dimensions for future research.
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