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CHIME: Conditional Hallucination and Integrated Multi-scale Enhancement for Time Series Diffusion Model

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Abstract

The denoising diffusion probabilistic model has become a mainstream generative model, achieving significant success in various computer vision tasks. Recently, there has been initial exploration of applying diffusion models to time series tasks. However, existing studies still face challenges in multi-scale feature alignment and generative capabilities across different entities and long-time scales. In this paper, we propose CHIME, a conditional hallucination and integrated multi-scale enhancement framework for time series diffusion models. By employing multi-scale decomposition and adaptive integration, CHIME captures the decomposed features of time series, achieving in-domain distribution alignment between generated and original samples. In addition, we introduce a feature hallucination module in the conditional denoising process, enabling the transfer of temporal features through the training of category-independent transformation layers. Experimental results on publicly available real-world datasets demonstrate that CHIME achieves state-of-the-art performance and exhibits excellent generative generalization capabilities in few-shot scenarios.

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@article{chen2025_2506.03502,
  title={ CHIME: Conditional Hallucination and Integrated Multi-scale Enhancement for Time Series Diffusion Model },
  author={ Yuxuan Chen and Haipeng Xie },
  journal={arXiv preprint arXiv:2506.03502},
  year={ 2025 }
}
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