From AlphaGo to ChatGPT,the field of AI has launched a series of remarkable achievements in recent years.Analyzing,comparing,and summarizing these achievements at the paradigm level is important for future AI innovati...From AlphaGo to ChatGPT,the field of AI has launched a series of remarkable achievements in recent years.Analyzing,comparing,and summarizing these achievements at the paradigm level is important for future AI innovation,but has not received sufficient attention.In this paper,we give an overview and perspective on machine learning paradigms.First,we propose a paradigm taxonomy with three levels and seven dimensions from a knowledge perspective.Accordingly,we give an overview on three basic and twelve extended learning paradigms,such as Ensemble Learning,Transfer Learning,etc.,with figures in unified style.We further analyze three advanced paradigms,i.e.,AlphaGo,AlphaFold and ChatGPT.Second,to enable more efficient and effective scientific discovery,we propose to build a new ecosystem that drives AI paradigm shifts through the decentralized science(DeSci)movement based on decentralized autonomous organization(DAO).To this end,we design the Hanoi framework,which integrates human factors,parallel intelligence based on a combination of artificial systems and the natural world,and the DAO to inspire AI innovations.展开更多
人工智能驱动的科学(artificial intelligence for science, AI4S)的兴起,使得如何确保科学系统的公开性、公平性、公正性和多样可持续性变得尤为重要和迫切。这关系到各国在全球创新和产业革新中的话语权和领导地位,同时也影响人类命...人工智能驱动的科学(artificial intelligence for science, AI4S)的兴起,使得如何确保科学系统的公开性、公平性、公正性和多样可持续性变得尤为重要和迫切。这关系到各国在全球创新和产业革新中的话语权和领导地位,同时也影响人类命运共同体的安全、稳定与可持续发展。为了应对这些挑战,AI4S需要引入新的科学组织和运营方式。基于Web3和分布式自主组织与运营(DAOs)等智能技术之上的分布式自主科学(decentralized science,DeSci)与AI4S相辅相成,为AI4S提供强有力的支撑。DeSci可以有效解决现有科研体系中的信息孤岛、偏见、不公平分配和垄断等问题,进而促进多学科、跨学科和交叉学科合作。文章首先从理论层面对DeSci的基本概念、特征和框架进行界定,其次分析DeSci的研究现状与应用现状,最后探讨和总结DeSci对于科学系统进一步发展的启示与意义。展开更多
基金This work was supported by the National Key Research and Development Program of China(2020YFB2104001)the National Natural Science Foundation of China(62271485,61903363,U1811463)Open Project of the State Key Laboratory for Management and Control of Complex Systems(20220117).
文摘From AlphaGo to ChatGPT,the field of AI has launched a series of remarkable achievements in recent years.Analyzing,comparing,and summarizing these achievements at the paradigm level is important for future AI innovation,but has not received sufficient attention.In this paper,we give an overview and perspective on machine learning paradigms.First,we propose a paradigm taxonomy with three levels and seven dimensions from a knowledge perspective.Accordingly,we give an overview on three basic and twelve extended learning paradigms,such as Ensemble Learning,Transfer Learning,etc.,with figures in unified style.We further analyze three advanced paradigms,i.e.,AlphaGo,AlphaFold and ChatGPT.Second,to enable more efficient and effective scientific discovery,we propose to build a new ecosystem that drives AI paradigm shifts through the decentralized science(DeSci)movement based on decentralized autonomous organization(DAO).To this end,we design the Hanoi framework,which integrates human factors,parallel intelligence based on a combination of artificial systems and the natural world,and the DAO to inspire AI innovations.