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The Danger of Testing by Selecting Controlled Subsets with Applications to Spoken-Word Recognition

机译:通过选择受控子集进行测试的危险及其在口语识别中的应用

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摘要

When examining the effects of a continuous variable x on an outcome y, a researcher might choose to dichotomize on x, dividing the population into two sets—low x and high x—and testing whether these two subpopulations differ with respect to y. Dichotomization has long been known to incur a cost in statistical power, but there remain circumstances in which it is appealing: an experimenter might use it to control for confounding covariates through subset selection, by carefully choosing a subpopulation of Low and a corresponding subpopulation of High that are balanced with respect to a list of control variables, and then comparing the subpopulations’ y values. This “divide, select, and test” approach is used in many papers throughout the psycholinguistics literature, and elsewhere. Here we show that, despite the apparent innocuousness, these methodological choices can lead to erroneous results, in two ways. First, if the balanced subsets of Low and High are selected in certain ways, it is possible to conclude a relationship between x and y not present in the full population. Specifically, we show that previously published conclusions drawn from this methodology—about the effect of a particular lexical property on spoken-word recognition—do not in fact appear to hold. Second, if the balanced subsets of Low and High are selected randomly, this methodology frequently fails to show a relationship between x and y that is present in the full population. Our work uncovers a new facet of an ongoing research effort: to identify and reveal the implicit freedoms of experimental design that can lead to false conclusions.
机译:在研究连续变量x对结果y的影响时,研究人员可能选择将x分为两部分,将总体分为两组(低x和高x),并测试这两个子群体是否相对于y有所不同。早就知道二分法会产生统计功效,但是在某些情况下它很有吸引力:实验者可能会通过仔细选择Low的子群和High的相应子群,使用子集选择来控制混杂变量。相对于控制变量列表而言是平衡的,然后比较子群体的y值。在整个心理语言学文献以及其他地方的许多论文中都使用了这种“划分,选择和测试”的方法。在这里,我们表明,尽管表面上看似无伤大雅,但这些方法的选择可以两种方式导致错误的结果。首先,如果以某些方式选择了“低”和“高”的平衡子集,则有可能得出x和y之间不存在于整个总体中的关系。具体而言,我们表明,以前从这种方法学得出的结论(关于特定词汇属性对口语识别的影响)似乎并不成立。其次,如果随机选择“低”和“高”的平衡子集,则此方法经常无法显示出存在于整个总体中的x和y之间的关系。我们的工作揭示了正在进行的研究工作的一个新方面:识别并揭示可能导致错误结论的实验设计的隐含自由。

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