Comparisons in Adaptive Perceptual Category Learning.

Victoria L Jacoby, Christine M Massey, Everett Mettler, Philip J Kellman
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Abstract

Recent work suggests that learning perceptual classifications can be enhanced by combining single item classifications with adaptive comparisons triggered by each learner's confusions. Here, we asked whether learning might work equally well using all comparison trials. In a face identification paradigm, we tested single item classifications, paired comparisons, and dual instance classifications that resembled comparisons but required two identification responses. In initial results, the comparisons condition showed evidence of greater efficiency (learning gain divided by trials or time invested). We suspected that this effect may have been driven by easier attainment of mastery criteria in the comparisons condition, and a negatively accelerated learning curve. To test this idea, we fit learning curves and found data consistent with the same underlying learning rate in all conditions. These results suggest that paired comparison trials may be as effective in driving learning of multiple perceptual classifications as more demanding single item classifications.

Abstract Image

自适应知觉类别学习的比较。
最近的研究表明,通过将单个项目分类与由每个学习者的困惑触发的适应性比较相结合,可以增强学习感知分类。在这里,我们问学习是否可能在所有比较试验中同样有效。在人脸识别范式中,我们测试了单项目分类、配对比较和双实例分类,这些分类与比较相似,但需要两次识别反应。在最初的结果中,比较条件显示出更高的效率(学习收益除以试验或投入的时间)。我们怀疑这种效应可能是由比较条件下更容易达到掌握标准和负加速学习曲线所驱动的。为了验证这个想法,我们拟合了学习曲线,并发现在所有条件下都具有相同的基本学习率的数据。这些结果表明,配对比较试验在推动多知觉分类学习方面可能与要求更高的单项分类学习同样有效。
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