MLLGAPMar 20

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

arXiv:2603.1989987.6h-index: 14Has Code
AI Analysis

It offers a systematic overview for researchers in time-series forecasting, but is incremental as it synthesizes existing literature.

This paper provides a comprehensive review of deep time-series forecasting by focusing on autocorrelation modeling, proposing a novel taxonomy and analysis to address gaps in existing surveys.

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 at https://github.com/Master-PLC/Awesome-TSF-Papers.

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