Position: Why a Dynamical Systems Perspective is Needed to Advance Time Series Modeling
Daniel Durstewitz, Christoph J\"urgen Hemmer, Florian Hess, Charlotte Ricarda Doll, Lukas Eisenmann

TL;DR
This paper advocates for adopting a dynamical systems perspective in time series modeling, emphasizing the benefits of underlying system equations for improved forecasting, understanding, and control, beyond current ML approaches.
Contribution
It highlights the importance of dynamical systems theory and reconstruction methods as a foundation for advancing time series modeling and forecasting techniques.
Findings
Dynamical systems provide theoretical bounds for TS prediction.
DSR enables long-term statistical predictions.
Insights from DS can improve model efficiency and interpretability.
Abstract
Time series (TS) modeling has come a long way from early statistical, mainly linear, approaches to the current trend in TS foundation models. With a lot of hype and industrial demand in this field, it is not always clear how much progress there really is. To advance TS forecasting and analysis to the next level, here we argue that the field needs a dynamical systems (DS) perspective. TS of observations from natural or engineered systems almost always originate from some underlying DS, and arguably access to its governing equations would yield theoretically optimal forecasts. This is the promise of DS reconstruction (DSR), a class of ML/AI approaches that aim to infer surrogate models of the underlying DS from data. But models based on DS principles offer other profound advantages: Beyond short-term forecasts, they enable to predict the long-term statistics of an observed system, which…
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Taxonomy
TopicsEcosystem dynamics and resilience · Forecasting Techniques and Applications · Time Series Analysis and Forecasting
