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Multiple regression analyses in artificial-grammar learning: The importance of control groups

机译:人工语法学习中的多元回归分析:对照组的重要性

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摘要

In artificial-grammar learning, it is crucial to ensure that above-chance performance in the test stage is due to learning in the training stage but not due to judgemental biases. Here we argue that multiple regression analysis can be successfully combined with the use of control groups to assess whether participants were able to transfer knowledge acquired during training when making judgements about test stimuli. We compared the regression weights of judgements in a transfer condition (training and test strings were constructed by the same grammar but with different letters) with those in a control condition. Predictors were identical in both conditions—judgements of control participants were treated as if they were based on knowledge gained in a standard training stage. The results of this experiment as well as reanalyses of a former study support the usefulness of our approach.
机译:在人工语法学习中,至关重要的是要确保测试阶段的胜算表现是由于训练阶段的学习而不是由于判断偏差。在这里,我们认为,多元回归分析可以与对照组的使用成功地结合起来,以评估参与者在做出关于测试刺激的判断时是否能够转移训练中获得的知识。我们将转移条件下的判断的回归权重(训练和测试字符串由相同的语法构造,但字母不同)与对照条件下的判断权重进行了比较。两种情况下的预测指标都相同-对照参与者的判断被视为基于标准培训阶段获得的知识。该实验的结果以及对先前研究的重新分析都支持了我们方法的有效性。

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