克服复杂系统预测中的特征稀缺性:一种替代延迟嵌入。

IF 3.2 2区 数学 Q1 MATHEMATICS, APPLIED
Chaos Pub Date : 2025-08-01 DOI:10.1063/5.0279303
Tao Wu, Ying Tang, Kazuyuki Aihara
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引用次数: 0

摘要

预测复杂系统的未来动态在科学研究中仍然具有挑战性。传统方法通常通过近似预测因子(特征)和目标变量之间的相关性来处理这个问题,通常使用来自目标相关变量池(系统组件)的预测因子。然而,当缺乏可靠的目标相关特征时,这些方法就会受到固有的约束。在这里,我们引入了一个框架,替代延迟嵌入(ADE),以有效地将延迟嵌入技术与基于高斯过程回归的机器学习算法相结合。ADE不是依赖于目标相关变量的识别,而是利用目标的序列信息来生成作为鲁棒预测器的重建。ADE框架的可靠性在多个基准模型系统中得到验证,例如逻辑图、麦基-格拉斯方程和洛伦兹系统,以及跨越不同领域的真实数据集,例如海面温度、生理信号、脑电图信号和金融汇率。与几种经典方法相比,在短输入数据上的演示突出了ADE的鲁棒性增强。ADE框架是对现有预测方法的有益补充,特别是在可靠的目标相关特征稀缺或难以捉摸的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overcoming feature scarcity in complex system prediction: An alternative delay embedding.

Predicting the future dynamics of complex systems remains challenging in scientific research. Traditional methods generally approach this issue by approximating the correlations between predictors (features) and target variables, often employing predictors from a pool of target-related variables (system components). However, these approaches are inherently constrained when reliable target-related features are scarce. Here, we introduce a framework, alternative delay embedding (ADE), to effectively integrate the delay embedding technique with a machine learning algorithm based on Gaussian process regression. Rather than relying on the identification of target-related variables, ADE exploits the target's sequential information to generate reconstructions that function as robust predictors. The reliability of the ADE framework is validated across multiple benchmark model systems, e.g., the logistic map, the Mackey-Glass equation, and the Lorenz system, as well as real-world datasets spanning diverse domains, e.g., sea surface temperature, physiological signals, electroencephalography signals, and financial exchange rates. Demonstrations on short input data highlight enhanced robustness of ADE compared to several classic methods. The ADE framework serves as a useful complement to existing predictive approaches, particularly in cases where reliable target-related features are either scarce or elusive.

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来源期刊
Chaos
Chaos 物理-物理:数学物理
CiteScore
5.20
自引率
13.80%
发文量
448
审稿时长
2.3 months
期刊介绍: Chaos: An Interdisciplinary Journal of Nonlinear Science is a peer-reviewed journal devoted to increasing the understanding of nonlinear phenomena and describing the manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.
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