Modeling AI-Driven Production and Competitiveness A Multi-Agent Economic Simulation of China and the United States
- URL: http://arxiv.org/abs/2510.11085v1
- Date: Mon, 13 Oct 2025 07:28:14 GMT
- Title: Modeling AI-Driven Production and Competitiveness A Multi-Agent Economic Simulation of China and the United States
- Authors: Yuxinyue Qian, Jun Liu,
- Abstract summary: With the rapid development of artificial intelligence (AI) technology, socio-economic systems are entering a new stage of "human-AI co-creation"<n>This paper conducts simulation-based comparisons of macroeconomic output evolution in China and the United States under different mechanisms.<n>The results show that when AI functions as an independent productive entity, the overall growth rate of social output far exceeds that of traditional human-labor-based models.
- Score: 6.345776306229298
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the rapid development of artificial intelligence (AI) technology, socio-economic systems are entering a new stage of "human-AI co-creation." Building upon a previously established multi-level intelligent agent economic model, this paper conducts simulation-based comparisons of macroeconomic output evolution in China and the United States under different mechanisms-AI collaboration, network effects, and AI autonomous production. The results show that: (1) when AI functions as an independent productive entity, the overall growth rate of social output far exceeds that of traditional human-labor-based models; (2) China demonstrates clear potential for acceleration in both the expansion of intelligent agent populations and the pace of technological catch-up, offering the possibility of achieving technological convergence or even partial surpassing. This study provides a systematic, model-based analytical framework for understanding AI-driven production system transformation and shifts in international competitiveness, as well as quantitative insights for relevant policy formulation.
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