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Deep Autocorrelation Modeling for Time-Series Forecasting: Progress and Prospects

Hao Wang
Licheng Pan
Qingsong Wen
Jialin Yu
Zhichao Chen
Chunyuan Zheng
Xiaoxi Li
Zhixuan Chu
Chao Xu
Mingming Gong
Haoxuan Li
Yuan Lu
Zhouchen Lin
Philip Torr
Yan Liu
Main:14 Pages
10 Figures
Bibliography:5 Pages
3 Tables
Appendix:1 Pages
Abstract

Autocorrelation is a defining characteristic of time-series data, where each observation is statistically dependent on its predecessors. In the context of deep time-series forecasting, autocorrelation arises in both the input history and the label sequences, presenting two central research challenges: (1) designing neural architectures that model autocorrelation in history sequences, and (2) devising learning objectives that model autocorrelation in label sequences. Recent studies have made strides in tackling these challenges, but a systematic survey examining both aspects remains lacking. To bridge this gap, this paper provides a comprehensive review of deep time-series forecasting from the perspective of autocorrelation modeling. In contrast to existing surveys, this work makes two distinctive contributions. First, it proposes a novel taxonomy that encompasses recent literature on both model architectures and learning objectives -- whereas prior surveys neglect or inadequately discuss the latter aspect. Second, it offers a thorough analysis of the motivations, insights, and progression of the surveyed literature from a unified, autocorrelation-centric perspective, providing a holistic overview of the evolution of deep time-series forecasting. The full list of papers and resources is available atthis https URL.

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