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A Testbed for Neural-Network Models Capable of Integrating Information in Time

机译:一种测试平网模型,能够及时整合信息

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This paper presents a set of techniques that allow generating a class of testbeds that can be used to test recurrent neural networks’ capabilities of integrating information in time. In particular, the testbeds allow evaluating the capability of such models, and possibly other architectures and algorithms, of (a) categorizing different time series, (b) anticipating future signal levels on the basis of past ones, and (c) functioning robustly with respect to noise and other systematic random variations of the temporal and spatial properties of the input time series. The paper also presents a number of analysis tools that can be used to understand the functioning and organization of the dynamical internal representations that recurrent neural networks develop to acquire the aforementioned capabilities, including periodicity, repetitions, spikes, and levels and rates of change of input signals. The utility of the proposed testbeds is illustrated by testing and studying the capacity of Elman neural networks to predict and categorize different signals in two exemplary tasks.
机译:本文介绍了一组技术,允许生成一类可用于测试经常性神经网络的集成信息的功能。特别地,测试台允许评估这些模型的能力,以及可能的其他架构和算法,(a)分类不同的时间序列,(b)在过去的基础上预期未来信号电平,(c)鲁棒地运行响应输入时间序列的时间和空间特性的噪声和其他系统随机变化。本文还提供了许多分析工具,可用于了解经常性神经网络开发以获取上述功能,包括周期性,重复,尖峰和水平和输入变化率的动态内部表示的运作和组织信号。通过测试和研究埃尔曼神经网络预测和分类两个示例性任务中的不同信号的能力来说明所提出的试验台的效用。

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