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Distributed representations of action sequences in anterior cingulate cortex: A recurrent neural network approach

机译:前刺铰接皮质中动作序列的分布式表示:经常性神经网络方法

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摘要

Anterior cingulate cortex (ACC) has been the subject of intense debate over the past 2 decades, but its specific computational function remains controversial. Here we present a simple computational model of ACC that incorporates distributed representations across a network of interconnected processing units. Based on the proposal that ACC is concerned with the execution of extended, goal-directed action sequences, we trained a recurrent neural network to predict each successive step of several sequences associated with multiple tasks. In keeping with neurophysiological observations from nonhuman animals, the network yields distributed patterns of activity across ACC neurons that track the progression of each sequence, and in keeping with human neuroimaging data, the network produces discrepancy signals when any step of the sequence deviates from the predicted step. These simulations illustrate a novel approach for investigating ACC function.
机译:前连杆(ACC)一直是过去2年中强烈辩论的主题,但其特定的计算功能仍然存在争议。 在这里,我们介绍了一个简单的计算模型,它包含跨越互连处理单元的网络的分布式表示。 基于ACC涉及扩展,目标导向的动作序列的提议,我们培训了经常性神经网络,以预测与多个任务相关的几个序列的每个连续步骤。 在与非人类动物的神经生理观测保持中,网络产生跨越追踪每个序列的进展的ACC神经元的分布式活动模式,并且在与人的神经影像数据保持中,当序列的任何步骤偏离预测时,网络产生差异信号 步。 这些模拟说明了一种研究ACC功能的新方法。

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