Anticipated variability increases generalization of predictive learning.

IF 3.6 1区 心理学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Hadar Ram, Guy Grinfeld, Nira Liberman
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Abstract

We show that learners generalized more broadly around the learned stimulus when they expected more variability between the learning set and the generalization set, as well as within the generalization set. Experiments 1 and 3 used a predictive learning task and demonstrated border perceptual generalization both when expected variability was manipulated explicitly via instructions (Experiment 1), and implicitly by increasing temporal distance to the anticipated application of learning (Experiment 3). Experiment 2 showed that expecting to apply learning in the more distant future increases expected variability in the generalization set. We explain the relation between expected variability and generalization as an accuracy-applicability trade-off: when learners anticipate more variable generalization targets, they "cast a wider net" during learning, by attributing the outcome to a broader range of stimuli. The use of more abstract, broader categories when anticipating a more distant future application aligns with Construal Level Theory of psychological distance.

Abstract Image

预期的可变性提高了预测学习的普遍性。
我们的研究表明,当学习者预期学习集和泛化集之间以及泛化集内部存在更多变异时,他们会围绕所学刺激进行更广泛的泛化。实验 1 和实验 3 使用了预测性学习任务,并通过指令明确操纵预期变异性(实验 1),以及通过增加与预期学习应用的时间距离(实验 3)隐含地操纵预期变异性,展示了边界知觉泛化。实验 2 表明,预期在更遥远的未来应用所学知识会增加泛化集中的预期变异性。我们将预期变异性与泛化之间的关系解释为准确性与适用性之间的权衡:当学习者预期泛化目标的变异性更大时,他们会在学习过程中 "撒下更大的网",将结果归因于更广泛的刺激。当预期未来的应用更遥远时,学习者会使用更抽象、更广泛的类别,这与心理距离的构象水平理论是一致的。
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来源期刊
CiteScore
5.40
自引率
7.10%
发文量
29
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