Excess Capacity Learning.

IF 13.7 1区 心理学 Q1 BEHAVIORAL SCIENCES
Marina Dubova, Sabina J Sloman
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引用次数: 0

Abstract

We introduce a new framework for understanding how cognitive systems (e.g., humans) learn from experience, based on the concept of representational capacity-the relative amount of representational resources devoted to encoding past experiences. Most paradigms in cognitive science have operated under the assumption that these resources are constrained, forcing cognitive systems to compress rich and noisy experiences to effectively generalize to new situations. We leverage recent advances in computer science to outline the implications of learning with excess capacity, or applying even more representational resources than needed to perfectly memorize all the details of one's past experiences. In particular, we review evidence suggesting that excess capacity systems can exhibit many of the characteristics of human learning, such as the simultaneous ability to memorize individual experiences and generalize knowledge to new situations. We define and differentiate between constrained (not enough), sufficient (just enough), and excess (more than enough to perfectly capture all the details of one's past experiences) capacity. We derive empirical properties of learning in each of these capacity regimes, and compare these predictions to effects documented for human learning. We highlight the broad implications of this framework for advancing theoretical and empirical work across cognitive, clinical, and developmental psychology.

超额容量学习。
我们介绍了一个新的框架来理解认知系统(如人类)如何从经验中学习,基于表征能力的概念-用于编码过去经验的表征资源的相对数量。认知科学中的大多数范式都是在这些资源受限的假设下运作的,这迫使认知系统压缩丰富而嘈杂的经验,以有效地推广到新的情况。我们利用计算机科学的最新进展来概述过剩能力学习的含义,或者应用比完美记忆过去经验的所有细节所需的更多代表性资源。特别地,我们回顾了证据表明,过剩容量系统可以表现出许多人类学习的特征,例如同时记忆个人经验和将知识推广到新情况的能力。我们定义并区分约束能力(不够)、足够能力(刚刚足够)和过剩能力(足以完美地捕捉一个人过去经历的所有细节)。我们在这些能力体系中推导出学习的经验属性,并将这些预测与人类学习的文献效果进行比较。我们强调这一框架对推进认知、临床和发展心理学的理论和实证工作的广泛影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Behavioral and Brain Sciences
Behavioral and Brain Sciences 医学-行为科学
CiteScore
1.40
自引率
1.70%
发文量
353
期刊介绍: Behavioral and Brain Sciences (BBS) is a highly respected journal that employs an innovative approach called Open Peer Commentary. This format allows for the publication of noteworthy and contentious research from various fields including psychology, neuroscience, behavioral biology, and cognitive science. Each article is accompanied by 20-40 commentaries from experts across these disciplines, as well as a response from the author themselves. This unique setup creates a captivating forum for the exchange of ideas, critical analysis, and the integration of research within the behavioral and brain sciences, spanning topics from molecular neurobiology and artificial intelligence to the philosophy of the mind.
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