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Data-driven Quantum Dynamical Embedding Method for Long-term Prediction on Near-term Quantum Computers

Quantum Physics 2025-11-21 v4

Abstract

The increasing focus on long-term time series prediction across various fields has been significantly strengthened by advancements in quantum computation. In this paper, we introduce a data-driven method designed for time series prediction with quantum dynamical embedding (QDE). This approach enables a trainable embedding of the data space into an extended state space, allowing for the recursive retrieval of time series information. Based on its independence of time series length, this method achieves depth-efficient quantum circuits that are crucial for near-term quantum computers. Numerical simulations demonstrate the model's capability to predict not only wave signals but also more complex signals such as NARMA. Prediction accuracy improves with model scaling, and notably, the model achieves better accuracy on wave signal tasks with fewer parameters compared to QRC. Additionally, the model shows promising potential for denoising classical noise in wave signals, and when combined with error mitigation techniques for typical quantum noise, it enables reliable long-term prediction of wave signals. We implement this model, restricted to 2 qubits, on the Origin ``Wukong" superconducting quantum processor as a simple proof-of-concept on NISQ devices. Furthermore, we provide theoretical analysis of the QDE's dynamical properties for the 2-qubit case and discuss its potential universality. Overall, this study represents our first step towards leveraging near-term quantum devices for time series forecasting, offering insights into integrating data-driven learning with quantum dynamical embeddings.

Keywords

Cite

@article{arxiv.2305.15976,
  title  = {Data-driven Quantum Dynamical Embedding Method for Long-term Prediction on Near-term Quantum Computers},
  author = {Tai-Ping Sun and Zhao-Yun Chen and Cheng Xue and Huan-Yu Liu and Xi-Ning Zhuang and Yun-Jie Wang and Shi-Xin Ma and Hai-Feng Zhang and Yu-Chun Wu and Guo-Ping Guo},
  journal= {arXiv preprint arXiv:2305.15976},
  year   = {2025}
}

Comments

29 pages, 20 figures

R2 v1 2026-06-28T10:45:53.798Z