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Information Bottleneck in Control Tasks with Recurrent Spiking Neural Networks

机译:递归尖峰神经网络的控制任务中的信息瓶颈

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The nervous system encodes continuous information from the environment in the form of discrete spikes, and then decodes these to produce smooth motor actions. Understanding how spikes integrate, represent, and process information to produce behavior is one of the greatest challenges in neuroscience. Information theory has the potential to help us address this challenge. Informational analyses of deep and feed-forward artificial neural networks solving static input-output tasks, have led to the proposal of the Information Bottleneck principle, which states that deeper layers encode more relevant yet minimal information about the inputs. Such an analyses on networks that are recurrent, spiking, and perform control tasks is relatively unexplored. Here, we present results from a Mutual Information analysis of a recurrent spiking neural network that was evolved to perform the classic pole-balancing task. Our results show that these networks deviate from the Information Bottleneck principle prescribed for feed-forward networks.
机译:神经系统以离散的尖峰形式对来自环境的连续信息进行编码,然后对这些信息进行解码以产生平稳的运动动作。了解尖峰如何整合,表示和处理信息以产生行为是神经科学的最大挑战之一。信息理论有潜力帮助我们应对这一挑战。对解决静态输入输出任务的深层和前馈人工神经网络的信息分析,导致了信息瓶颈原理的提出,该理论指出,更深的层编码有关输入的更相关但最小的信息。对循环,尖峰和执行控制任务的网络进行这样的分析是相对未开发的。在这里,我们介绍了对周期性尖峰神经网络进行互信息分析后得出的结果,该网络经过进化可以执行经典的极点平衡任务。我们的结果表明,这些网络偏离了前馈网络规定的信息瓶颈原则。

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