Synthesizing network dynamics for short-term memory of impulsive inputs.

BethAnna Jones, ShiNung Ching
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Abstract

Illuminating the mechanisms that the brain uses to manage and coordinate its resources is a core question in neuroscience. In particular, circuits and networks in the brain are able to encode, store and recall large amounts of information, in the service of a wide range of functionality. How do the various dynamical mechanisms within these networks allow for such coordination? We consider the specific problem of how the dynamics of networks can enact a representation of input stimuli that is retained over time, i.e., a form of short-term memory. We utilize modeling and control-theoretic methods to approach these questions, treating the state trajectory of a dynamical system as an abstract memory trace of prior inputs. The inputs impinge on the network via a variable gain, which is to be synthesized by optimization. In order to perpetuate these memory traces of stimuli, we propose that this gain is adapted to optimize: i) the error between a ground truth representation of stimuli and the encoding of them; as well as ii) overwriting of prior information. Optimizing over these central tenets of memory, we obtain a 'policy' for adapting the input gain that is dependent on the state of the network. This derived policy yields a recurrent neural network between the policy and the neural circuits, affirming existing theories that the prefrontal cortex may hold subnetworks dedicated to working memory while actively engaging with other neural subnetworks.

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脉冲输入短时记忆的网络动力学综合。
阐明大脑用来管理和协调其资源的机制是神经科学的核心问题。特别是,大脑中的电路和网络能够编码、存储和回忆大量的信息,服务于广泛的功能。这些网络中的各种动态机制是如何实现这种协调的?我们考虑的具体问题是,网络的动态如何制定输入刺激的表示,并随着时间的推移而保留,即短期记忆的一种形式。我们利用建模和控制理论方法来解决这些问题,将动态系统的状态轨迹视为先验输入的抽象记忆轨迹。输入通过一个可变增益冲击网络,该增益由优化合成。为了使这些刺激的记忆痕迹永久化,我们建议这种增益适应于优化:i)刺激的基本真值表示与它们的编码之间的误差;以及ii)覆盖先前的信息。通过对这些内存的中心原则进行优化,我们获得了一个“策略”,用于适应依赖于网络状态的输入增益。这一衍生策略在策略和神经回路之间产生了一个循环神经网络,证实了现有的理论,即前额叶皮层可能在积极参与其他神经网络的同时拥有专用于工作记忆的子网络。
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