帮助审稿人评估统计分析:一个来自分析方法的案例研究

IF 3 Q2 CHEMISTRY, ANALYTICAL Analytical science advances Pub Date : 2022-06-16 DOI:10.1002/ansa.202000159
Ron S. Kenett, Bernard G. Francq
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引用次数: 1

摘要

分析方法的发展,像许多其他学科一样,依赖于实验和数据分析。确定一篇包含数据分析的研究的论文或报告的贡献通常留给审稿人的经验和判断力,而不依赖于结构化的指导方针。机器学习驱动分析的作用越来越大,其结果基于计算机密集型算法应用。使用交叉验证来拟合其参数的预测模型的评估增加了对回归模型评估的挑战,其中估计可以很容易地复制。缺乏支持评审的结构增加了评审的不确定性和可变性。本文考虑了统计评估的各个方面。我们为应用统计工作的审稿人提供检查清单,重点是分析方法的开发。清单涵盖了与统计分析回顾相关的六个方面,即:(1)研究设计,(2)频率分析中的算法和推理方法,(3)贝叶斯分析中的贝叶斯方法(如果相关),(4)选择性推理方面,(5)严格的测试特性和(6)结果的呈现。我们提供了这些元素的简要概述,为更详细的处理提供参考。分析方法的稳健性分析用于说明如何针对清单中的问题实现改进。本文的目标读者是工程师和经验丰富的研究人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Helping reviewers assess statistical analysis: A case study from analytic methods

Analytic methods development, like many other disciplines, relies on experimentation and data analysis. Determining the contribution of a paper or report on a study incorporating data analysis is typically left to the reviewer's experience and good sense, without reliance on structured guidelines. This is amplified by the growing role of machine learning driven analysis, where results are based on computer intensive algorithm applications. The evaluation of a predictive model where cross validation was used to fit its parameters adds challenges to the evaluation of regression models, where the estimates can be easily reproduced. This lack of structure to support reviews increases uncertainty and variability in reviews. In this paper, aspects of statistical assessment are considered. We provide checklists for reviewers of applied statistics work with a focus on analytic method development. The checklist covers six aspects relevant to a review of statistical analysis, namely: (1) study design, (2) algorithmic and inferential methods in frequentism analysis, (3) Bayesian methods in Bayesian analysis (if relevant), (4) selective inference aspects, (5) severe testing properties and (6) presentation of findings. We provide a brief overview of these elements providing references for a more elaborate treatment. The robustness analysis of an analytical method is used to illustrate how an improvement can be achieved in response to questions in the checklist. The paper is aimed at both engineers and seasoned researchers.

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CiteScore
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