Neural representation dynamics reveal computational principles of cognitive task learning.

Ravi D Mill, Michael W Cole
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引用次数: 0

Abstract

During cognitive task learning, neural representations must be rapidly constructed for novel task performance, then optimized for robust practiced task performance. How the geometry of neural representations changes to enable this transition from novel to practiced performance remains unknown. We hypothesized that practice involves a shift from compositional representations (task-general activity patterns that can be flexibly reused across tasks) to conjunctive representations (task-specific activity patterns specialized for the current task). Functional MRI during learning of multiple complex tasks substantiated this dynamic shift from compositional to conjunctive representations, which was associated with reduced cross-task interference (via pattern separation) and behavioral improvement. Further, we found that conjunctions originated in subcortex (hippocampus and cerebellum) and slowly spread to cortex, extending multiple memory systems theories to encompass cognitive task learning. The strengthening of conjunctive representations hence serves as a computational signature of learning, reflecting cortical-subcortical dynamics that optimize task representations in the human brain.

Highlights: Learning shifts multi-task representations from compositional to conjunctive formatsCortical conjunctions uniquely associate with improved behavior and pattern separationThese conjunctions strengthen over separated learning events and index switch costsSubcortical regions are critical for cross-region binding of task rule information.

神经表征动力学揭示了认知任务学习的计算原理。
在认知任务学习过程中,神经表征必须快速构建新的任务表现,然后针对稳健的练习任务表现进行优化。神经表征的几何结构是如何改变的,从而使这种从新奇的表现转变为实践的表现,这一点尚不清楚。我们假设实践涉及从组合表示(可以跨任务灵活重用的任务一般活动模式)到联合表示(专门针对当前任务的任务特定活动模式)的转变。在学习多个复杂任务时,功能性MRI证实了这种从组合表征到连接表征的动态转变,这与减少跨任务干扰(通过模式分离)和行为改善有关。此外,我们发现连接起源于皮层下(海马体和小脑),并慢慢扩散到皮层,将多重记忆系统理论扩展到任务表征学习。因此,连接表征的形成作为学习的计算特征,反映了优化人脑任务表征的皮层-皮层下动态。
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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