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Possibilities and Implications of the Multi-AI Competition

2022-09-01 14:54:15
Jialin Wu

Abstract

The possibility of super-AIs taking over the world has been intensively studied by numerous scholars. This paper focuses on the multi-AI competition scenario under the premise of super-AIs in power. Firstly, the article points out the defects of existing arguments supporting single-AI domination and presents arguments in favour of multi-AI competition. Then the article concludes that the multi-AI competition situation is a non-negligible possibility. Attention then turns to whether multi-AI competition is better for the overall good of humanity than a situation where a single AI is in power. After analysing the best, worst, and intermediate scenarios, the article concludes that multi-AI competition is better for humanity. Finally, considering the factors related to the formation of the best-case scenario of multiple AIs, the article gives some suggestions for current initiatives in AI development.

Abstract (translated)

URL

https://arxiv.org/abs/2209.00509

PDF

https://arxiv.org/pdf/2209.00509.pdf


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