编者观点:是什么使科学成功?

IF 4.3 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Igor Rudan
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引用次数: 0

摘要

这篇社论探讨了促成科学成功的因素,追溯了科学从人类基本好奇心到由技术、数据和人工智能推动的当代进步的演变过程。从假设检验过程开始,它强调了历史上富有想象力的个人如何为自然世界提供解释,设计实验,并收集证据来证实或拒绝他们的想法和理论,从而产生新的知识和对自然的理解。早期人类将简单的神话和传说作为第一个科学假设,部分原因是为了减轻他们对未知的恐惧。当罕见的探险家-科学家冒险超越他们祖先的家园,利用他们有限的感官收集经验信息,根据观察做出选择,有时重新安置整个社区时,更科学的转向出现了。他们的努力反映了科学方法的永恒要素:从提出假设到实验证明,从新知识的广泛验证和应用。然后,本文考察了成功的科学学科的特征。它们吸引了许多产生新颖想法和假设的研究人员,形成了一种加速发现的势头。这些领域的进一步特点是迅速和公平的同行验证以及应用新知识改善人类福祉的健全机制。相比之下,不太成功的领域将难以吸引人才,导致进展缓慢,这也可能伴随着对新思想的抵制和对新知识在现实世界中的转化的障碍。这篇论文的中心主题是测量和工具对科学成功的贡献。现代仪器,从显微镜和望远镜到卫星和统计工具,扩展了我们对自然的感知,揭示了人类感官无法到达的更小或更大的领域。这篇论文还谈到了由计算机和大数据推动的“无假设科学”革命。现代研究人员不是建立一个单一的假设,而是收集大量的数据集,并使用算法同时系统地测试大量可能的假设,而不受现有知识引入的人为偏见的影响。最后,论文探讨了人工智能如何推动科学取得前所未有的成功:不仅像显微镜那样改善人类的感官,像大型强子对撞机那样提供额外的感官,或者像计算机那样扩展人类的记忆和计算能力,而且还扩展了人类的推理本身。与以前的工具不同,人工智能可以综合人类知识并产生假设、设计研究、探索模式和撰写论文,从而成为“哲学家2.0”和“科学家2.0”。因此,人工智能可能会将科学从以人为中心的努力转变为依赖混合智能的协作努力。这一前所未有的新领域需要关注其可解释性、偏见、作者、伦理和责任等问题。在未来,科学将继续保持其基本使命的成功:通过扩大知识和对世界的理解来改善人类状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Editor's view: What makes science successful?

This editorial examines the factors contributing to the success of science, tracing its evolution from fundamental human curiosity to contemporary advancements propelled by technology, data, and artificial intelligence (AI). Beginning with the hypothesis-testing process, it highlights how imaginative individuals throughout history have offered explanations for the natural world, designed experiments, and amassed evidence to confirm or reject their ideas and theories, thus generating new knowledge and understanding of nature. Early humans formulated simple myths and legends as the first scientific hypotheses, partly to lessen their fear of the unknown. A more scientific turn appeared when rare explorer-scientists ventured beyond their ancestral homes, gathered empirical information using their limited senses, made choices based on observations, and sometimes relocated entire communities. Their efforts reflected the timeless elements of the scientific method: from generating a hypothesis to its experimental proof, broad validation and application of new knowledge. The paper then examines the characteristics of successful scientific disciplines. They attract many researchers who generate novel ideas and hypotheses, building an accelerating momentum of discovery. Further hallmarks of such fields are swift and fair peer validation and robust mechanisms for applying new knowledge to improve human well-being. By contrast, less successful fields will struggle with attracting talent, leading to slower progress, which could also be coupled with resistance to new ideas and obstacles to real-world translation of new knowledge. A central theme of the paper is the contribution of measurement and tools to science's success. Modern instruments, from microscopes and telescopes to satellites and statistical tools, have extended our perception of nature, revealing realms far smaller and far larger than human senses can access. The paper also addresses the revolution of 'hypothesis-free science', driven by computers and big data. Rather than framing a single hypothesis, modern researchers gather enormous datasets and use algorithms to test large numbers of possible hypotheses simultaneously and systematically, free of human bias introduced through existing knowledge. Finally, the paper explores how AI could advance science to unprecedented successes: not just by improving human senses like a microscope does, providing additional ones like the Large Hadron Collider does, or extending human memory and computational capacity like computers do, but also by expanding human reasoning itself. Unlike previous tools, AI can synthesise human knowledge and generate hypotheses, design studies, explore patterns and write papers, thus becoming both a 'philosopher 2.0' and a 'scientist 2.0'. Therefore, AI may transform science from a human-centred endeavour into collaborative effort that relies on hybrid intelligence. This unprecedented new frontier will require attention to questions of its explainability, bias, authorship, ethics, and accountability. In the future, science will remain successful by staying aligned with its fundamental mission: to improve the human condition through the expansion of knowledge and understanding of our world.

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来源期刊
Journal of Global Health
Journal of Global Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -
CiteScore
6.10
自引率
2.80%
发文量
240
审稿时长
6 weeks
期刊介绍: Journal of Global Health is a peer-reviewed journal published by the Edinburgh University Global Health Society, a not-for-profit organization registered in the UK. We publish editorials, news, viewpoints, original research and review articles in two issues per year.
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