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Resurrecting the individual in behavioral analysis: Using mixed effects models to address nonsystematic discounting data

机译:在行为分析中复活个体:使用混合效应模型处理非系统性贴现数据

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摘要

Delay and probability discounting functions typically take a monotonic form, but some individuals produce functions that are nonsystematic. developed an algorithm for classifying nonsystematic functions on the basis of two different criteria. Type 1 functions were identified as nonsystematic due to random choices and Type 2 functions were identified as nonsystematic due to relatively shallow slopes, suggesting poor sensitivity to choice parameters. Since their original publication, the algorithm has become widely used in the human discounting literature for removal of participants, with studies often removing approximately 20% of the original sample (). Because subject removal may not always be feasible due to loss of power or other factors, the present report applied a mixed effects regression modeling technique (; ) to account for individual differences in DD and PD functions. Assessment of the model estimates for Type 1 and 2 nonsystematic functions indicated that both types of functions deviated systematically from the rest of the sample in that nonsystematic participants were more likely to show shallower slopes and increased biases for larger amounts. The results indicate that removing these participants would fundamentally alter the properties of the final sample in undesirable ways. Because mixed effects models account for between-participant variation with random effects, we advocate for the use of these models for future analyses of a wide range of functions within the behavioral analysis field, with the benefit of avoiding the negative consequences associated with subject removal.
机译:延迟和概率折现函数通常采用单调形式,但是某些人产生的函数不是系统性的。开发了一种基于两个不同标准对非系统函数进行分类的算法。由于随机选择,类型1的功能被确定为非系统性的;由于斜率相对较浅,类型2的功能被确定为非系统性的,表明对选择参数的敏感性较差。自最初发表以来,该算法已在人为打折文献中广泛用于去除参与者,而研究通常会去除大约20%的原始样本。由于由于失去动力或其他因素,去除受试者可能并不总是可行的,因此本报告采用了混合效应回归建模技术(;)来解决DD和PD功能的个体差异。对类型1和类型2的非系统函数的模型估计值的评估表明,这两种类型的函数都与样本的其余部分系统地偏离,因为非系统参与者更可能显示出更浅的斜率和更大数量的偏差。结果表明,除去这些参与者将以不希望的方式从根本上改变最终样品的性能。因为混合效应模型考虑了参与者之间的差异以及随机效应,所以我们提倡将这些模型用于行为分析领域中各种功能的未来分析,以避免避免与移除主题相关的负面后果。

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