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Gaussian Process Latent Variable Modeling for Few-shot Time Series Forecasting

Gaussian Process Latent Variable Modeling for Few-shot Time Series Forecasting

来源:Arxiv_logoArxiv
英文摘要

Accurate time series forecasting is crucial for optimizing resource allocation, industrial production, and urban management, particularly with the growth of cyber-physical and IoT systems. However, limited training sample availability in fields like physics and biology poses significant challenges. Existing models struggle to capture long-term dependencies and to model diverse meta-knowledge explicitly in few-shot scenarios. To address these issues, we propose MetaGP, a meta-learning-based Gaussian process latent variable model that uses a Gaussian process kernel function to capture long-term dependencies and to maintain strong correlations in time series. We also introduce Kernel Association Search (KAS) as a novel meta-learning component to explicitly model meta-knowledge, thereby enhancing both interpretability and prediction accuracy. We study MetaGP on simulated and real-world few-shot datasets, showing that it is capable of state-of-the-art prediction accuracy. We also find that MetaGP can capture long-term dependencies and can model meta-knowledge, thereby providing valuable insights into complex time series patterns.

Yunyao Cheng、Chenjuan Guo、Kai Zheng、Feiteng Huang、Kaixuan Chen、Kai Zhao、Bin Yang、Jiandong Xie、Christian S. Jensen

10.1109/TKDE.2025.3573673

数学计算技术、计算机技术

Yunyao Cheng,Chenjuan Guo,Kai Zheng,Feiteng Huang,Kaixuan Chen,Kai Zhao,Bin Yang,Jiandong Xie,Christian S. Jensen.Gaussian Process Latent Variable Modeling for Few-shot Time Series Forecasting[EB/OL].(2025-06-21)[2025-07-09].https://arxiv.org/abs/2212.10306.点此复制

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