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Interactive reservoir computing for chunking information streams

机译:用于信息流分块的交互式油藏计算

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摘要

Chunking is the process by which frequently repeated segments of temporal inputs are concatenated into single units that are easy to process. Such a process is fundamental to time-series analysis in biological and artificial information processing systems. The brain efficiently acquires chunks from various information streams in an unsupervised manner; however, the underlying mechanisms of this process remain elusive. A widely-adopted statistical method for chunking consists of predicting frequently repeated contiguous elements in an input sequence based on unequal transition probabilities over sequence elements. However, recent experimental findings suggest that the brain is unlikely to adopt this method, as human subjects can chunk sequences with uniform transition probabilities. In this study, we propose a novel conceptual framework to overcome this limitation. In this process, neural networks learn to predict dynamical response patterns to sequence input rather than to directly learn transition patterns. Using a mutually supervising pair of reservoir computing modules, we demonstrate how this mechanism works in chunking sequences of letters or visual images with variable regularity and complexity. In addition, we demonstrate that background noise plays a crucial role in correctly learning chunks in this model. In particular, the model can successfully chunk sequences that conventional statistical approaches fail to chunk due to uniform transition probabilities. In addition, the neural responses of the model exhibit an interesting similarity to those of the basal ganglia observed after motor habit formation.
机译:分块处理是将频繁重复输入的时间段连接成易于处理的单个单元的过程。这样的过程对于生物和人工信息处理系统中的时间序列分析至关重要。大脑以无监督的方式有效地从各种信息流中获取数据块。但是,此过程的基本机制仍然难以捉摸。用于分块的广泛采用的统计方法包括:基于序列元素上的不相等转移概率,预测输入序列中频繁重复的连续元素。但是,最近的实验发现表明,大脑不太可能采用这种方法,因为人类对象可以对具有统一过渡概率的序列进行分块。在这项研究中,我们提出了一个新颖的概念框架来克服这一局限性。在此过程中,神经网络学会预测动态响应模式以进行序列输入,而不是直接学习过渡模式。使用一对相互监督的储层计算模块,我们演示了该机制如何在具有可变规则性和复杂性的字母或可视图像的分块序列中工作。此外,我们证明了背景噪声在正确学习此模型中的块中起着至关重要的作用。特别是,该模型可以成功地对常规统计方法由于统一的转移概率而无法分块的序列进行分块。此外,模型的神经反应与运动习惯形成后观察到的基底神经节的神经相似。

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