两种类型的基序增强了人对长序列的记忆和泛化。

Shuchen Wu, Mirko Thalmann, Eric Schulz
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引用次数: 0

摘要

无论是听一段音乐,学习一门新语言,还是解一个数学方程,人们经常从母题和变量的意义上获得抽象概念——表现在音乐主题、语法类别或数学符号上。我们如何创建序列的抽象表示?这些抽象表征对回忆有用吗?除了学习转移概率、分块和跟踪顺序位置之外,我们建议人类也使用抽象来达到序列的有效表示。我们提出并研究了两个抽象类别:投影基元和可变基元。投影主题在不同的序列实例下找到一个共同的主题。可变主题包含表示可以更改的序列实体的符号。在两个序列回忆实验中,我们分别训练被试记忆投影基序和可变基序的序列,并研究基序训练是否有利于记忆具有相同基序的新序列。我们的研究结果表明,相对于对照组,训练投射和变量主题提高了转移回忆的准确性。我们表明,与在表面水平上学习块或关联的模型相比,在抽象基序空间中块序列的模型可以更有效地学习和迁移。我们的研究表明,人类根据我们提出的两种抽象类型构建有效的顺序记忆表征,并且创建这些抽象有利于学习和分布外泛化。我们的研究为更深入地理解人类抽象学习和泛化铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two types of motifs enhance human recall and generalization of long sequences.

Whether it is listening to a piece of music, learning a new language, or solving a mathematical equation, people often acquire abstract notions in the sense of motifs and variables-manifested in musical themes, grammatical categories, or mathematical symbols. How do we create abstract representations of sequences? Are these abstract representations useful for memory recall? In addition to learning transition probabilities, chunking, and tracking ordinal positions, we propose that humans also use abstractions to arrive at efficient representations of sequences. We propose and study two abstraction categories: projectional motifs and variable motifs. Projectional motifs find a common theme underlying distinct sequence instances. Variable motifs contain symbols representing sequence entities that can change. In two sequence recall experiments, we train participants to remember sequences with projectional and variable motifs, respectively, and examine whether motif training benefits the recall of novel sequences sharing the same motif. Our result suggests that training projectional and variables motifs improve transfer recall accuracy, relative to control groups. We show that a model that chunks sequences in an abstract motif space may learn and transfer more efficiently, compared to models that learn chunks or associations on a superficial level. Our study suggests that humans construct efficient sequential memory representations according to the two types of abstraction we propose, and creating these abstractions benefits learning and out-of-distribution generalization. Our study paves the way for a deeper understanding of human abstraction learning and generalization.

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