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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >An associative memory readout for ESNs with applications to dynamical pattern recognition.
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An associative memory readout for ESNs with applications to dynamical pattern recognition.

机译:ESN的关联内存读数,并应用于动态模式识别。

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摘要

The use of echo state networks (ESN) to find patterns in time (dynamical pattern recognition) has been limited. This paper argues that ESNs are particularly well suited for dynamical pattern recognition and proposes a linear associative memory (LAM) as a novel readout for ESNs. From the class of LAMs, the minimum average correlation energy (MACE) filter is adopted because of its high rejection characteristics that allow its use as a detector in the automatic pattern recognition literature. In the ESN application, the MACE interprets the states of the ESN as a two-dimensional "image", one dimension being time and the other the processing element index (space). An optimal template image for each class, which associates ESN states with the class label, can be analytically computed using training data. During testing, ESN states are correlated with each template image and the class label of the template with the highest correlation is assigned to the input pattern. The ESN-MACE combination leads to a nonlinear template matcher with robust noise performance as needed in non-Gaussian, nonlinear digital communication channels. A real-world data experiment for chemical sensing with an electronic nose is included to demonstrate the validity of this approach. Moreover, the proposed readout can also be used with liquid state machines eliminating the need to convert spike trains into continuous signals by binning or low-pass filtering.
机译:使用回波状态网络(ESN)来及时找到模式(动态模式识别)受到了限制。本文认为ESN特别适合于动态模式识别,并提出了一种线性联想记忆(LAM)作为ESN的新颖读数。在LAM的类别中,采用了最小平均相关能量(MACE)滤波器,因为它具有很高的抑制特性,可以在自动模式识别文献中用作检测器。在ESN应用程序中,MACE将ESN的状态解释为二维“图像”,一维是时间,另一维是处理元素索引(空间)。可以使用训练数据来分析计算每个类的最佳模板图像,该图像将ESN状态与类标签相关联。在测试期间,ESN状态与每个模板图像相关,并且具有最高相关性的模板的类别标签被分配给输入模式。 ESN-MACE组合可导致非线性模板匹配器,具有非高斯非线性数字通信通道所需的强大噪声性能。包含用于电子鼻化学感应的真实数据实验,以证明该方法的有效性。此外,建议的读数还可以与液体状态机一起使用,无需通过合并或低通滤波将尖峰序列转换为连续信号。

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