多阶段递归神经网络更好地描述了背侧运动前皮层的决策相关活动

Michael Kleinman, Chandramouli Chandrasekaran, J. Kao
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引用次数: 1

摘要

我们研究了一个由循环连接的人工单元组成的网络如何解决一个视觉感知决策任务。这个任务的目标是辨别一个中央静态棋盘的主色,并用手臂的运动来报告这个决定。这项任务已被用于研究背侧运动前皮层的神经活动。当单个递归神经网络(RNN)被训练来执行任务时,RNN中人工单元的活动不同于PMd中的神经记录,这表明PMd的输入不同于RNN的输入。我们扩展了我们的架构,并研究了多阶段RNN如何执行任务。在多阶段RNN中,最后阶段与PMd相似,表示方向信息而不表示颜色信息。然后,我们研究了颜色和方向信息的表示是如何在RNN阶段进化的。总之,我们的结果证明了将架构约束纳入RNN模型的重要性。这些约束可以提高rnn在关联区模拟神经活动的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-stage recurrent neural network better describes decision-related activity in dorsal premotor cortex
We studied how a network of recurrently connected artificial units solve a visual perceptual decision-making task. The goal of this task is to discriminate the dominant color of a central static checkerboard and report the decision with an arm movement. This task has been used to study neural activity in the dorsal premotor (PMd) cortex. When a single recurrent neural network (RNN) was trained to perform the task, the activity of artificial units in the RNN differed from neural recordings in PMd, suggesting that inputs to PMd differed from inputs to the RNN. We expanded our architecture and examined how a multi-stage RNN performed the task. In the multi-stage RNN, the last stage exhibited similarities with PMd by representing direction information but not color information. We then investigated how the representation of color and direction information evolve across RNN stages. Together, our results are a demonstration of the importance of incorporating architectural constraints into RNN models. These constraints can improve the ability of RNNs to model neural activity in association areas.
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