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PNAS Plus: Randomly distributed embedding making short-term high-dimensional data predictable

机译:PNAS Plus:随机分布的嵌入使短期高维数据可预测

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摘要

Future state prediction for nonlinear dynamical systems is a challenging task, particularly when only a few time series samples for high-dimensional variables are available from real-world systems. In this work, we propose a model-free framework, named randomly distributed embedding (RDE), to achieve accurate future state prediction based on short-term high-dimensional data. Specifically, from the observed data of high-dimensional variables, the RDE framework randomly generates a sufficient number of low-dimensional “nondelay embeddings” and maps each of them to a “delay embedding,” which is constructed from the data of a to be predicted target variable. Any of these mappings can perform as a low-dimensional weak predictor for future state prediction, and all of such mappings generate a distribution of predicted future states. This distribution actually patches all pieces of association information from various embeddings unbiasedly or biasedly into the whole dynamics of the target variable, which after operated by appropriate estimation strategies, creates a stronger predictor for achieving prediction in a more reliable and robust form. Through applying the RDE framework to data from both representative models and real-world systems, we reveal that a high-dimension feature is no longer an obstacle but a source of information crucial to accurate prediction for short-term data, even under noise deterioration.
机译:非线性动力学系统的未来状态预测是一项艰巨的任务,特别是当现实世界系统中只有少数几个高维变量的时间序列样本可用时。在这项工作中,我们提出了一种无模型框架,称为随机分布嵌入(RDE),以基于短期高维数据实现准确的未来状态预测。具体而言,RDE框架从观测到的高维变量数据中随机生成足够数量的低维“非延迟嵌入”,并将它们中的每一个映射到“延迟嵌入”,该“延迟嵌入”由要预测目标变量。这些映射中的任何一个都可以充当低维弱预测器,用于将来的状态预测,并且所有此类映射都会生成预测的将来状态的分布。这种分布实际上将来自各种嵌入的所有关联信息无偏或有偏地修补到目标变量的整个动态过程中,在通过适当的估计策略进行操作之后,它创建了一个更强大的预测器,可以更可靠,更可靠的形式实现预测。通过将RDE框架应用于来自代表性模型和实际系统的数据,我们发现,即使在噪声恶化的情况下,高维特征也不再是障碍,而是对准确预测短期数据至关重要的信息源。

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