High-variability training does not enhance generalization in the prototype-distortion paradigm.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-01 Epub Date: 2024-01-16 DOI:10.3758/s13421-023-01516-1
Mingjia Hu, Robert M Nosofsky
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Abstract

Classic studies of human categorization learning provided evidence that high-variability training in the prototype-distortion paradigm enhances subsequent generalization to novel test patterns from the learned categories. More recent work suggests, however, that when the number of training trials is equated across low-variability and high-variability training conditions, it is low-variability training that yields better generalization performance. Whereas the recent studies used cartoon-animal stimuli varying along binary-valued dimensions, in the present work we return to the use of prototype-distorted dot-pattern stimuli that had been used in the original classic studies. In accord with the recent findings, we observe that high-variability training does not enhance generalization in the dot-pattern prototype-distortion paradigm when the total number of training trials is equated across the conditions, even when training with very large numbers of distinct instances. A baseline version of an exemplar model captures the major qualitative pattern of results in the experiment, as do prototype models that make allowance for changes in parameter settings across the different training conditions. Based on the modeling results, we hypothesize that although high-variability training does not enhance generalization in the prototype-distortion paradigm, it may do so when participants learn more complex category structures.

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在原型失真范例中,高变异性训练并不能增强泛化能力。
人类分类学习的经典研究证明,在原型失真范式中进行高变异性训练,可以增强对所学类别中的新测试模式的后续泛化能力。然而,最近的研究表明,当低变异性和高变异性训练条件下的训练试验次数相同时,低变异性训练能产生更好的泛化效果。最近的研究使用的是二值维度变化的卡通动物刺激,而在本研究中,我们又回到了最初的经典研究中使用的原型扭曲的点图案刺激。与最近的研究结果一致,我们观察到,当不同条件下的训练试验总数相同时,即使使用大量不同的实例进行训练,高变异性训练也不会增强点图案原型扭曲范式的泛化能力。示例模型的基线版本捕捉到了实验结果的主要定性模式,而原型模型也捕捉到了不同训练条件下参数设置的变化。基于建模结果,我们假设,尽管在原型失真范式中,高变异性训练并不能增强泛化能力,但当被试者学习到更复杂的类别结构时,高变异性训练可能会增强泛化能力。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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