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A randomized trial in a massive online open course shows people don’t know what a statistically significant relationship looks like but they can learn

机译:大型在线公开课程中的一项随机试验显示人们不知道统计学上的显着关系是什么样子但他们可以学习

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摘要

Scatterplots are the most common way for statisticians, scientists, and the public to visually detect relationships between measured variables. At the same time, and despite widely publicized controversy, P-values remain the most commonly used measure to statistically justify relationships identified between variables. Here we measure the ability to detect statistically significant relationships from scatterplots in a randomized trial of 2,039 students in a statistics massive open online course (MOOC). Each subject was shown a random set of scatterplots and asked to visually determine if the underlying relationships were statistically significant at the P < 0.05 level. Subjects correctly classified only 47.4% (95% CI [45.1%–49.7%]) of statistically significant relationships, and 74.6% (95% CI [72.5%–76.6%]) of non-significant relationships. Adding visual aids such as a best fit line or scatterplot smooth increased the probability a relationship was called significant, regardless of whether the relationship was actually significant. Classification of statistically significant relationships improved on repeat attempts of the survey, although classification of non-significant relationships did not. Our results suggest: (1) that evidence-based data analysis can be used to identify weaknesses in theoretical procedures in the hands of average users, (2) data analysts can be trained to improve detection of statistically significant results with practice, but (3) data analysts have incorrect intuition about what statistically significant relationships look like, particularly for small effects. We have built a web tool for people to compare scatterplots with their corresponding p-values which is available here: .
机译:散点图是统计学家,科学家和公众最直观地观察测量变量之间关系的最常用方法。同时,尽管存在广泛争议的争议,P值仍然是最常用的量度,以统计证明变量之间的关系是合理的。在这里,我们测量了统计大规模开放在线课程(MOOC)中2,039名学生的随机试验中,从散点图检测统计显着关系的能力。向每个受试者显示一组随机散点图,并要求他们目视确定基本关系在P <0.05水平上是否具有统计学意义。受试者正确地将只有47.4%(95%CI [45.1%–49.7%])的统计学上显着的关系正确分类,将74.6%(95%CI [72.5%–76.6%])的非显着关系正确分类。添加视觉辅助工具(例如最佳拟合线或散点图平滑)会增加关系被称为重要的可能性,无论该关系是否实际上是重要的。重复进行调查后,统计上显着关系的分类得到了改善,尽管非重要关系的分类却没有。我们的结果表明:(1)基于证据的数据分析可用于识别普通用户手中的理论程序中的弱点;(2)可以培训数据分析员以提高实际操作对统计显着性结果的检测,但是(3 )数据分析师对统计上显着的关系看起来是错误的直觉,尤其是对于小影响。我们建立了一个网络工具,供人们比较散点图及其对应的p值,该工具可在此处找到:。

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