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