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首页> 外文期刊>eLife journal >Biologically plausible learning in recurrent neural networks reproduces neural dynamics observed during cognitive tasks
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Biologically plausible learning in recurrent neural networks reproduces neural dynamics observed during cognitive tasks

机译:循环神经网络中的生物学上合理的学习再现了认知任务期间观察到的神经动力学

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Neural activity during cognitive tasks exhibits complex dynamics that flexibly encode task-relevant variables. Chaotic recurrent networks, which spontaneously generate rich dynamics, have been proposed as a model of cortical computation during cognitive tasks. However, existing methods for training these networks are either biologically implausible, and/or require a continuous, real-time error signal to guide learning. Here we show that a biologically plausible learning rule can train such recurrent networks, guided solely by delayed, phasic rewards at the end of each trial. Networks endowed with this learning rule can successfully learn nontrivial tasks requiring flexible (context-dependent) associations, memory maintenance, nonlinear mixed selectivities, and coordination among multiple outputs. The resulting networks replicate complex dynamics previously observed in animal cortex, such as dynamic encoding of task features and selective integration of sensory inputs. We conclude that recurrent neural networks offer a plausible model of cortical dynamics during both learning and performance of flexible behavior.
机译:认知任务期间的神经活动表现出复杂的动力学,可以灵活地编码与任务相关的变量。自发产生丰富动态的混沌递归网络已被提出作为认知任务期间皮层计算的模型。但是,用于训练这些网络的现有方法在生物学上是不可行的,和/或需要连续的实时错误信号来指导学习。在这里,我们表明,生物学上可行的学习规则可以训练这种循环网络,仅在每次试验结束时以延迟的阶段性奖励为指导。拥有此学习规则的网络可以成功地学习需要灵活(与上下文相关)关联,内存维护,非线性混合选择性以及多个输出之间协调的非平凡任务。生成的网络复制了以前在动物皮层中观察到的复杂动态,例如任务特征的动态编码和感觉输入的选择性集成。我们得出结论,在学习和灵活行为的过程中,递归神经网络为皮层动力学提供了一个合理的模型。

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