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Abstract
Probabilistic forecasting of multivariate time series is essential for various downstream tasks. Most existing approaches rely on the sequences being uniformly spaced and aligned across all variables. However, real-world multivariate time series often suffer from temporal irregularities, including nonuniform intervals and misaligned variables, which pose significant challenges for accurate forecasting. To address these challenges, we propose an end-to-end framework that models temporal irregularities while capturing the joint distribution of variables at arbitrary continuous-time points. Specifically, we introduce a dynamic conditional continuous normalizing flow to model data distributions in a non-parametric manner, accommodating the complex, non-Gaussian characteristics commonly found in real-world datasets. Then, by leveraging a carefully factorized log-likelihood objective, our approach captures both temporal and cross-sectional dependencies efficiently. Extensive experiments on a range of real-world datasets demonstrate the superiority and adaptability of our method compared to existing approaches. The data and code supporting this work are available at https://github.com/lyjsilence/RFN. © 2025 IEEE.
Original language | English |
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Pages (from-to) | 2874-2887 |
Journal | IEEE Transactions on Knowledge and Data Engineering |
Volume | 37 |
Issue number | 5 |
Online published | 20 Feb 2025 |
DOIs | |
Publication status | Published - May 2025 |
Funding
Qi WU acknowledges the support from The CityU-JD Digits Joint Laboratory in Financial Technology and Engineering, The Hong Kong Research Grants Council [General Research Fund 11219420/9043008 ], and The CityU APRC Grant 9610643. The work described in this paper was partially supported by the InnoHK initiative, the Government of the HKSAR, and the Laboratory for AI-Powered Financial Technologies.
Research Keywords
- probabilistic forecasting
- multivariate time series
- Irregular sampling
- recurrent neural networks
- normalizing flow models
- neural ODEs
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Dive into the research topics of 'Probabilistic Learning of Multivariate Time Series with Temporal Irregularity'. Together they form a unique fingerprint.Projects
- 1 Active
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GRF: Generative Models of Multivariate Dependence for Asset Returns
WU, Q. (Principal Investigator / Project Coordinator)
1/01/21 → …
Project: Research
Student theses
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Three Essays on Deep Learning Application in Financial Technology
LI, Y. (Author), WU, Q. (Supervisor), 3 Aug 2024Student thesis: Doctoral Thesis