情境依赖学习的计算和神经基础》(The Computational and Neural Bases of Context-Dependent Learning)。

IF 12.1 1区 医学 Q1 NEUROSCIENCES Annual review of neuroscience Pub Date : 2023-07-10 Epub Date: 2023-03-27 DOI:10.1146/annurev-neuro-092322-100402
James B Heald, Daniel M Wolpert, Máté Lengyel
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引用次数: 0

摘要

灵活的行为要求记忆的创建、更新和表达取决于情境。虽然对上述每个过程的神经基础都进行了深入研究,但最近在计算建模方面取得的进展揭示了上下文相关学习中的一个关键挑战,而这一挑战在很大程度上以前被忽视了:在自然条件下,语境通常是不确定的,这就需要进行语境推断。我们回顾了在语境不确定的情况下形式化语境依赖学习的理论方法及其所需的核心计算。我们展示了这一方法如何开始将大量不同的实验观察结果,包括来自多个大脑组织层次(包括回路、系统和行为)和多个大脑区域(最突出的是前额叶皮层、海马体和运动皮层)的观察结果组织到一个连贯的框架中。我们认为,语境推理也可能是理解大脑持续学习的关键。这种理论驱动的观点将情境推断视为学习的核心组成部分。
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The Computational and Neural Bases of Context-Dependent Learning.

Flexible behavior requires the creation, updating, and expression of memories to depend on context. While the neural underpinnings of each of these processes have been intensively studied, recent advances in computational modeling revealed a key challenge in context-dependent learning that had been largely ignored previously: Under naturalistic conditions, context is typically uncertain, necessitating contextual inference. We review a theoretical approach to formalizing context-dependent learning in the face of contextual uncertainty and the core computations it requires. We show how this approach begins to organize a large body of disparate experimental observations, from multiple levels of brain organization (including circuits, systems, and behavior) and multiple brain regions (most prominently the prefrontal cortex, the hippocampus, and motor cortices), into a coherent framework. We argue that contextual inference may also be key to understanding continual learning in the brain. This theory-driven perspective places contextual inference as a core component of learning.

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来源期刊
Annual review of neuroscience
Annual review of neuroscience 医学-神经科学
CiteScore
25.30
自引率
0.70%
发文量
29
期刊介绍: The Annual Review of Neuroscience is a well-established and comprehensive journal in the field of neuroscience, with a rich history and a commitment to open access and scholarly communication. The journal has been in publication since 1978, providing a long-standing source of authoritative reviews in neuroscience. The Annual Review of Neuroscience encompasses a wide range of topics within neuroscience, including but not limited to: Molecular and cellular neuroscience, Neurogenetics, Developmental neuroscience, Neural plasticity and repair, Systems neuroscience, Cognitive neuroscience, Behavioral neuroscience, Neurobiology of disease. Occasionally, the journal also features reviews on the history of neuroscience and ethical considerations within the field.
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