LGJun 13, 2025

Delayformer: spatiotemporal transformation for predicting high-dimensional dynamics

arXiv:2506.11528v12 citationsh-index: 6Adv Sci
Originality Highly original
AI Analysis

This addresses the problem of accurate high-dimensional time-series prediction for scientific and engineering applications, representing a novel method rather than an incremental improvement.

The paper tackles the challenge of predicting all variables in high-dimensional dynamical systems with limited noisy data by introducing Delayformer, a framework that uses multivariate spatiotemporal transformation and Transformers to predict system states, achieving superior performance over state-of-the-art methods on synthetic and real-world datasets.

Predicting time-series is of great importance in various scientific and engineering fields. However, in the context of limited and noisy data, accurately predicting dynamics of all variables in a high-dimensional system is a challenging task due to their nonlinearity and also complex interactions. Current methods including deep learning approaches often perform poorly for real-world systems under such circumstances. This study introduces the Delayformer framework for simultaneously predicting dynamics of all variables, by developing a novel multivariate spatiotemporal information (mvSTI) transformation that makes each observed variable into a delay-embedded state (vector) and further cross-learns those states from different variables. From dynamical systems viewpoint, Delayformer predicts system states rather than individual variables, thus theoretically and computationally overcoming such nonlinearity and cross-interaction problems. Specifically, it first utilizes a single shared Visual Transformer (ViT) encoder to cross-represent dynamical states from observed variables in a delay embedded form and then employs distinct linear decoders for predicting next states, i.e. equivalently predicting all original variables parallelly. By leveraging the theoretical foundations of delay embedding theory and the representational capabilities of Transformers, Delayformer outperforms current state-of-the-art methods in forecasting tasks on both synthetic and real-world datasets. Furthermore, the potential of Delayformer as a foundational time-series model is demonstrated through cross-domain forecasting tasks, highlighting its broad applicability across various scenarios.

Foundations

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