2024
DOI: 10.1609/aaai.v38i15.29661
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Adaptive Meta-Learning Probabilistic Inference Framework for Long Sequence Prediction

Jianping Zhu,
Xin Guo,
Yang Chen
et al.

Abstract: Long sequence prediction has broad and significant application value in fields such as finance, wind power, and weather. However, the complex long-term dependencies of long sequence data and the potential domain shift problems limit the effectiveness of traditional models in practical scenarios. To this end, we propose an Adaptive Meta-Learning Probabilistic Inference Framework (AMPIF) based on sequence decomposition, which can effectively enhance the long sequence prediction ability of various basic models. S… Show more

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