JOURNAL ARTICLE

Auto-Regressive Moving Diffusion Models for Time Series Forecasting

Jiaxin GaoQinglong CaoYuntian Chen

Year: 2025 Journal:   Proceedings of the AAAI Conference on Artificial Intelligence Vol: 39 (16)Pages: 16727-16735   Publisher: Association for the Advancement of Artificial Intelligence

Abstract

Time series forecasting (TSF) is essential in various domains, and recent advancements in diffusion-based TSF models have shown considerable promise. However, these models typically adopt traditional diffusion patterns, treating TSF as a noise-based conditional generation task. This approach neglects the inherent continuous sequential nature of time series, leading to a fundamental misalignment between diffusion mechanisms and the TSF objective, thereby severely impairing performance. To bridge this misalignment, and inspired by the classic Auto-Regressive Moving Average (ARMA) theory, which views time series as continuous sequential progressions evolving from previous data points, we propose a novel Auto-Regressive Moving Diffusion (ARMD) model to first achieve the continuous sequential diffusion-based TSF. Unlike previous methods that start from white Gaussian noise, our model employs chain-based diffusion with priors, accurately modeling the evolution of time series and leveraging intermediate state information to improve forecasting accuracy and stability. Specifically, our approach reinterprets the diffusion process by considering future series as the initial state and historical series as the final state, with intermediate series generated using a sliding-based technique during the forward process. This design aligns the diffusion model's sampling procedure with the forecasting objective, resulting in an unconditional, continuous sequential diffusion TSF model. Extensive experiments conducted on seven widely used datasets demonstrate that our model achieves state-of-the-art performance, significantly outperforming existing diffusion-based TSF models.

Keywords:
Series (stratigraphy) Time series Diffusion Autoregressive model Moving average Econometrics Autoregressive integrated moving average Computer science Autoregressive–moving-average model Mathematics Machine learning Geology Computer vision Physics

Metrics

6
Cited By
19.29
FWCI (Field Weighted Citation Impact)
0
Refs
0.98
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Neural Networks and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Energy Load and Power Forecasting
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
Stock Market Forecasting Methods
Social Sciences →  Decision Sciences →  Management Science and Operations Research

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