Enhancing Time Series Predictability via Structure-Aware Reservoir Computing

IF 6.8 Q1 AUTOMATION & CONTROL SYSTEMS
Suzhen Guo, Chun Guan, Siyang Leng
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引用次数: 0

Abstract

Accurate prediction of the future evolution of observational time series is a paramount challenge in current data-driven research. While existing techniques struggle to learn useful representations from the temporal correlations, the high dimensionality in spatial domain is always considered as obstacle, leading to the curse of dimensionality and excessive resource consumption. This work designs a novel structure-aware reservoir computing aiming at enhancing the predictability of coupled time series, by incorporating their historical dynamics as well as structural information. Paralleled reservoir computers with redesigned mixing inputs based on spatial relationships are implemented to cope with the multiple time series, whose core idea originates from the principle of the celebrated Granger causality. Representative numerical simulations and comparisons demonstrate the superior performance of the approach over the traditional ones. This work provides valuable insights into deeply mining both temporal and spatial information to enhance the representation learning of data in various machine learning techniques.

Abstract Image

通过结构感知储层计算提高时间序列可预测性
准确预测观测时间序列的未来演变是当前数据驱动研究的首要挑战。现有技术难以从时间相关性中学习有用的表征,而空间领域的高维度始终被视为障碍,导致维度诅咒和过多的资源消耗。这项工作设计了一种新型结构感知水库计算,旨在通过纳入耦合时间序列的历史动态和结构信息,提高其可预测性。并行水库计算机根据空间关系重新设计了混合输入,以处理多个时间序列,其核心思想源于著名的格兰杰因果关系原理。具有代表性的数值模拟和比较表明,该方法的性能优于传统方法。这项工作为深入挖掘时间和空间信息以增强各种机器学习技术中的数据表示学习提供了宝贵的见解。
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来源期刊
CiteScore
1.30
自引率
0.00%
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审稿时长
4 weeks
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