噪声驱动输入时的回声状态特性

IF 1.7 4区 工程技术 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Complexity Pub Date : 2024-02-16 DOI:10.1155/2024/5593925
Junhyuk Woo, Hyeongmo Kim, Soon Ho Kim, Kyungreem Han
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引用次数: 0

摘要

回波状态特性(ESP)是理解最广泛使用的储层计算模型--回波状态网络(ESN)--工作原理的一个关键概念。在一般条件下,ESP 在大部分运行时间内都能实现,但当驱动输入信号和储层内在动态相结合导致遗忘初始瞬态的不利条件时,ESP 特性就会丧失。一种广泛使用的处理方法是将权重矩阵的频谱半径设置为低于统一值,但这种方法并不充分,因为它可能无法正确考虑驱动输入信号的性质。在此,我们将描述噪声驱动输入如何影响 ESN 的动态特性以及 ESP 的经验评估。我们使用不同加性白高斯噪声水平下的 MNIST 手写数字数据集,对具有双曲正切激活函数的标准 ESN 进行了测试。神经元之间的相关性、输入映射和存储库的记忆容量随着噪声水平的增加而非线性降低。这些趋势与 MNIST 分类准确率在噪声下的下降趋势一致。此外,还开发了噪声驱动输入的 ESP 指数,作为在实际应用中帮助轻松评估 ESP 的工具。分岔分析说明了噪声是如何破坏 ESN 的渐近收敛性的,并证实了所提出的指数能成功捕捉到针对噪声的 ESP。这些结果为开发抗噪声的水库计算系统铺平了道路,从而提高了水库计算在现实世界机器学习应用中的有效性和实用性。
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Echo State Property upon Noisy Driving Input

The echo state property (ESP) is a key concept for understanding the working principle of the most widely used reservoir computing model, the echo state network (ESN). The ESP is achieved most of the operation time under general conditions, yet the property is lost when a combination of driving input signals and intrinsic reservoir dynamics causes unfavorable conditions for forgetting the initial transient state. A widely used treatment, setting the spectral radius of the weight matrix below the unity, is not sufficient as it may not properly account for the nature of driving inputs. Here, we characterize how noisy driving inputs affect the dynamical properties of an ESN and the empirical evaluation of the ESP. The standard ESN with a hyperbolic tangent activation function is tested using the MNIST handwritten digit datasets at different additive white Gaussian noise levels. The correlations among the neurons, input mapping, and memory capacity of the reservoir nonlinearly decrease with the noise level. These trends agree with the deterioration of the MNIST classification accuracy against noise. In addition, the ESP index for noisy driving input is developed as a tool to help easily assess ESPs in practical applications. Bifurcation analysis explicates how the noise destroys an asymptotical convergence in an ESN and confirms that the proposed index successfully captures the ESP against noise. These results pave the way for developing noise-robust reservoir computing systems, which may promote the validity and utility of reservoir computing for real-world machine learning applications.

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来源期刊
Complexity
Complexity 综合性期刊-数学跨学科应用
CiteScore
5.80
自引率
4.30%
发文量
595
审稿时长
>12 weeks
期刊介绍: Complexity is a cross-disciplinary journal focusing on the rapidly expanding science of complex adaptive systems. The purpose of the journal is to advance the science of complexity. Articles may deal with such methodological themes as chaos, genetic algorithms, cellular automata, neural networks, and evolutionary game theory. Papers treating applications in any area of natural science or human endeavor are welcome, and especially encouraged are papers integrating conceptual themes and applications that cross traditional disciplinary boundaries. Complexity is not meant to serve as a forum for speculation and vague analogies between words like “chaos,” “self-organization,” and “emergence” that are often used in completely different ways in science and in daily life.
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