AI-Empowered Human Research Integrating Brain Science and Social Sciences Insights
- URL: http://arxiv.org/abs/2411.12761v1
- Date: Sat, 16 Nov 2024 11:13:23 GMT
- Title: AI-Empowered Human Research Integrating Brain Science and Social Sciences Insights
- Authors: Feng Xiong, Xinguo Yu, Hon Wai Leong,
- Abstract summary: We argue that it is high time for researchers to transition to human-AI joint research.
We introduce three human-AI collaboration models: AI as a research tool (ART), AI as a research assistant (ARA), and AI as a research participant (ARP)
- Score: 1.7146585621340318
- License:
- Abstract: This paper explores the transformative role of artificial intelligence (AI) in enhancing scientific research, particularly in the fields of brain science and social sciences. We analyze the fundamental aspects of human research and argue that it is high time for researchers to transition to human-AI joint research. Building upon this foundation, we propose two innovative research paradigms of human-AI joint research: "AI-Brain Science Research Paradigm" and "AI-Social Sciences Research Paradigm". In these paradigms, we introduce three human-AI collaboration models: AI as a research tool (ART), AI as a research assistant (ARA), and AI as a research participant (ARP). Furthermore, we outline the methods for conducting human-AI joint research. This paper seeks to redefine the collaborative interactions between human researchers and AI system, setting the stage for future research directions and sparking innovation in this interdisciplinary field.
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