LGNECOMP-PHMay 23, 2025

A tensor network approach for chaotic time series prediction

arXiv:2505.17740v12 citationsh-index: 4Has Code
Originality Incremental advance
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This work addresses a specific bottleneck in chaotic time series prediction for researchers in machine learning and dynamical systems, representing an incremental advance.

The paper tackles the challenge of predicting chaotic time series by applying a tensor network model to address the exponential parameter growth in next-generation reservoir computing, demonstrating improved accuracy and computational efficiency compared to conventional echo state networks.

Making accurate predictions of chaotic time series is a complex challenge. Reservoir computing, a neuromorphic-inspired approach, has emerged as a powerful tool for this task. It exploits the memory and nonlinearity of dynamical systems without requiring extensive parameter tuning. However, selecting and optimizing reservoir architectures remains an open problem. Next-generation reservoir computing simplifies this problem by employing nonlinear vector autoregression based on truncated Volterra series, thereby reducing hyperparameter complexity. Nevertheless, the latter suffers from exponential parameter growth in terms of the maximum monomial degree. Tensor networks offer a promising solution to this issue by decomposing multidimensional arrays into low-dimensional structures, thus mitigating the curse of dimensionality. This paper explores the application of a previously proposed tensor network model for predicting chaotic time series, demonstrating its advantages in terms of accuracy and computational efficiency compared to conventional echo state networks. Using a state-of-the-art tensor network approach enables us to bridge the gap between the tensor network and reservoir computing communities, fostering advances in both fields.

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