首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Learning to imitate stochastic time series in a compositional way by chaos.
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Learning to imitate stochastic time series in a compositional way by chaos.

机译:学习通过混沌来模仿随机时间序列。

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摘要

This study shows that a mixture of RNN experts model can acquire the ability to generate sequences that are combination of multiple primitive patterns by means of self-organizing chaos. By training the model, each expert learns a primitive sequence pattern, and a gating network learns to imitate stochastic switching of the multiple primitives via chaotic dynamics, utilizing a sensitive dependence on initial conditions. As a demonstration, we present a numerical simulation in which the model learns Markov chain switching among some Lissajous curves by chaotic dynamics. Our analysis shows that by using a sufficient amount of training data, balanced with the network memory capacity, it is possible to satisfy the conditions for embedding the target stochastic sequences into a chaotic dynamical system. It is also shown that reconstruction of a stochastic time series by a chaotic model can be stabilized by adding a negligible amount of noise to the dynamics of the model.
机译:这项研究表明,混合的RNN专家模型可以通过自组织混沌获得生成由多个原始模式组合而成的序列的能力。通过训练模型,每个专家都可以学习原始序列模式,而门控网络可以利用对初始条件的敏感依赖性,通过混沌动力学来模仿多个原始变量的随机切换。作为演示,我们提供了一个数值模拟,其中该模型通过混沌动力学学习了一些李萨如曲线之间的马尔可夫链切换。我们的分析表明,通过使用足够数量的训练数据并与网络存储容量保持平衡,可以满足将目标随机序列嵌入到混沌动力学系统中的条件。还表明,通过向模型的动力学中添加微不足道的噪声,可以稳定通过混沌模型重建随机时间序列。

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