Literature DB >> 24984923

The benefits of interleaved and blocked study: different tasks benefit from different schedules of study.

Paulo F Carvalho1, Robert L Goldstone.   

Abstract

Research on how information should be studied during inductive category learning has identified both interleaving of categories and blocking by category as beneficial for learning. Previous work suggests that this mixed evidence can be reconciled by taking into account within- and between-category similarity relations. In this article, we present a new moderating factor. Across two experiments, one group of participants studied categories actively (by studying the objects without correct category assignment and actively figuring out what the category was), either interleaved or blocked. Another group studied the same categories passively (objects and correct category assignment were simultaneously provided). Results from a subsequent generalization task show that whether interleaved or blocked study results in better learning depends on whether study is active or passive. One account of these results is that different presentation sequences and tasks promote different patterns of attention to stimulus components. Passive learning and blocking promote attending to commonalities within categories, while active learning and interleaving promote attending to differences between categories.

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Year:  2015        PMID: 24984923     DOI: 10.3758/s13423-014-0676-4

Source DB:  PubMed          Journal:  Psychon Bull Rev        ISSN: 1069-9384


  16 in total

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10.  Putting category learning in order: Category structure and temporal arrangement affect the benefit of interleaved over blocked study.

Authors:  Paulo F Carvalho; Robert L Goldstone
Journal:  Mem Cognit       Date:  2014-04
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  19 in total

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7.  Pigeons acquire multiple categories in parallel via associative learning: a parallel to human word learning?

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8.  Field tests of learning principles to support pedagogy: Overlap and variability jointly affect sound/letter acquisition in first graders.

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9.  Quantity and Diversity: Simulating Early Word Learning Environments.

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10.  A Computational Model of Context-Dependent Encodings During Category Learning.

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