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Reproducibility and Replication of Experimental Particle Physics Results

Harvard Data Science Review(2021)

Cited 9|Views9
Abstract
Recently, much attention has been focused on the replicability of scientific results, causing scientists, statisticians, and journal editors to examine closely their methodologies and publishing criteria. Experimental particle physicists have been aware of the precursors of non-replicable research for many decades and have many safeguards to ensure that the published results are as reliable as possible. The experiments require large investments of time and effort to design, construct, and operate. Large collaborations produce and check the results, and many papers are signed by more than three thousand authors. This paper gives an introduction to what experimental particle physics is and to some of the tools that are used to analyze the data. It describes the procedures used to ensure that results can be computationally reproduced, both by collaborators and by non-collaborators. It describes the status of publicly available data sets and analysis tools that aid in reproduction and recasting of experimental results. It also describes methods particle physicists use to maximize the reliability of the results, which increases the probability that they can be replicated by other collaborations or even the same collaborations with more data and new personnel. Examples of results that were later found to be false are given, both with failed replication attempts and one with alarmingly successful replications. While some of the characteristics of particle physics experiments are unique, many of the procedures and techniques can be and are used in other fields.
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要点】:本文探讨了实验粒子物理结果的可复制性和可再现性,并介绍了确保结果计算可复制性的内部和外部程序,以及粒子物理学家使用的方法来提高结果的可靠性,同时给出了结果被证实为错误的案例。

方法】:文章通过介绍实验粒子物理学及其分析数据的工具,阐述了确保结果可计算复制和提高可靠性的程序和方法。

实验】:文章描述了粒子物理实验的特点,例如实验设计、建造和运行需要多年时间,设备如大型强子对撞机及其相关粒子探测器非常庞大和复杂,成本高昂,由大型合作团队产生和验证结果,并且多篇论文由超过三千名作者签署。尽管粒子物理实验的一些特征是独特的,但许多程序和技术可以在其他领域得到应用并已经被采用。文中也提供了后来被证实为错误的实验结果案例,包括复制尝试失败和一些惊人地成功复制的例子。