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Noisy recurrent neural networks: the continuous-time case

机译:嘈杂的递归神经网络:连续时间情况

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The classical stochastic analog of the deterministic linear system in engineering is the linear system driven by white noise. As the promise of artificial neural networks in modeling nonlinear systems continues to grow, the need for a stochastic analog with quantitative foundations for analysis and synthesis will increase. This paper presents recent work in this direction, examining recurrent neural nets (RNN driven by white noise. We examine the effect of noise on the typical continuous-time RNN model. First, we perform qualitative analysis establishing uniform boundedness of moments of the neuron states over time. To enable practical application, however, it is necessary to relate these properties to useful measures that can be estimated. We thus subsequently derive bias and variance measures for the noisy RNN with respect to the corresponding deterministic RNN. This has significant practical implications, since net design is nonminimal in the sense that several nets can solve the same problem. The results allow the user to evaluate given RNN for noise performance. The designer can use these results to constrain the design space so that the design satisfies performance specifications whenever possible. An example is provided using the measures derived in this paper to predetermine the best among several RNN designs for a given problem.
机译:工程中确定性线性系统的经典随机模拟是由白噪声驱动的线性系统。随着在非线性系统建模中使用人工神经网络的希望不断增长,对具有用于分析和合成的定量基础的随机模拟的需求将会增加。本文介绍了该方向上的最新工作,研究了递归神经网络(由白噪声驱动的RNN。我们研究了噪声对典型连续时间RNN模型的影响。首先,我们进行了定性分析,以建立神经元状态矩的均匀有界性但是,为了能够实际应用,有必要将这些属性与可以估计的有用度量联系起来,因此,我们随后针对相应的确定性RNN得出了噪声RNN的偏差和方差度量,这具有重要的实际意义。 ,因为网设计在几个网可以解决同一问题的意义上是非最小的,所以结果允许用户评估给定的RNN的噪声性能,设计人员可以使用这些结果来约束设计空间,以便设计在任何时候都能满足性能指标提供了一个使用本文中得出的方法来确定几个最佳案例的示例。 l针对给定问题的RNN设计。

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