Statistics in times of increasing uncertainty

IF 1.5 3区 数学 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of the Royal Statistical Society Series A-Statistics in Society Pub Date : 2022-12-26 DOI:10.1111/rssa.12957
Sylvia Richardson
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引用次数: 2

Abstract

The statistical community mobilised vigorously from the start of the 2020 SARS-CoV-2 pandemic, following the RSS's long tradition of offering our expertise to help society tackle important issues that require evidence-based decisions. This address aims to capture the highlights of our collective engagement in the pandemic, and the difficulties faced in delivering statistical design and analysis at pace and in communicating to the wider public the many complex issues that arose. I argue that these challenges gave impetus to fruitful new directions in the merging of statistical principles with constraints of agility, responsiveness and societal responsibilities. The lessons learned from this will strengthen the long-term impact of the discipline and of the Society. The need to evaluate policies even in emergency, and to strive for statistical interoperability in future disease surveillance systems is highlighted. In my final remarks, I look towards the future landscape for statistics in the fast-moving world of data science and outline a strategy of visible and growing engagement of the RSS with the data science ecosystem, building on the central position of statistics.

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不确定性增加时的统计
从2020年SARS-CoV-2大流行开始,统计界就积极动员起来,遵循RSS提供专业知识帮助社会解决需要循证决策的重要问题的悠久传统。这次讲话的目的是强调我们集体参与这一流行病的重点,以及在及时提供统计设计和分析以及向更广泛的公众宣传所出现的许多复杂问题方面所面临的困难。我认为,这些挑战推动了将统计原则与敏捷性、响应性和社会责任约束相结合的富有成效的新方向。从中吸取的教训将加强该学科和该协会的长期影响。报告强调,即使在紧急情况下也需要评估政策,并努力在未来的疾病监测系统中实现统计互操作性。在我最后的发言中,我展望了在快速发展的数据科学世界中统计的未来前景,并概述了RSS在数据科学生态系统中日益明显的参与战略,以统计的中心地位为基础。
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来源期刊
CiteScore
2.90
自引率
5.00%
发文量
136
审稿时长
>12 weeks
期刊介绍: Series A (Statistics in Society) publishes high quality papers that demonstrate how statistical thinking, design and analyses play a vital role in all walks of life and benefit society in general. There is no restriction on subject-matter: any interesting, topical and revelatory applications of statistics are welcome. For example, important applications of statistical and related data science methodology in medicine, business and commerce, industry, economics and finance, education and teaching, physical and biomedical sciences, the environment, the law, government and politics, demography, psychology, sociology and sport all fall within the journal''s remit. The journal is therefore aimed at a wide statistical audience and at professional statisticians in particular. Its emphasis is on well-written and clearly reasoned quantitative approaches to problems in the real world rather than the exposition of technical detail. Thus, although the methodological basis of papers must be sound and adequately explained, methodology per se should not be the main focus of a Series A paper. Of particular interest are papers on topical or contentious statistical issues, papers which give reviews or exposés of current statistical concerns and papers which demonstrate how appropriate statistical thinking has contributed to our understanding of important substantive questions. Historical, professional and biographical contributions are also welcome, as are discussions of methods of data collection and of ethical issues, provided that all such papers have substantial statistical relevance.
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