Author
Listed:
- Ziwei Wu
(College of Intelligence Science and Technology, National University of Defense Technology, No. 109 Deya Street, Changsha 410073, China)
- Guangyin Jin
(National Innovative Institute of Defense Technology, Academy of Military Sciences, No. 53, Dongdajie Street, Beijing 100071, China)
- Xueqiang Gu
(College of Intelligence Science and Technology, National University of Defense Technology, No. 109 Deya Street, Changsha 410073, China)
- Chao Wang
(College of Intelligence Science and Technology, National University of Defense Technology, No. 109 Deya Street, Changsha 410073, China)
Abstract
Accurate modeling of event sequences is valuable in domains like electronic health records, financial risk management, and social networks. Random time intervals in these sequences contain key dynamic information, and temporal point processes (TPPs) are widely used to analyze event triggering mechanisms and probability evolution patterns in asynchronous sequences. Neural TPPs (NTPPs) enhanced by deep learning improve modeling capabilities, but most suffer from limited interpretability due to predefined functional structures. This study proposes KANJDP (Kolmogorov–Arnold Neural Jump-Diffusion Process), a novel event sequence modeling method: it decomposes the intensity function via stochastic differential equations (SDEs), with each component parameterized by learnable spline functions. By analyzing each component’s contribution to event occurrence, KANJDP quantitatively reveals core event generation mechanisms. Experiments on real-world and synthetic datasets show that KANJDP achieves higher prediction accuracy with fewer trainable parameters.
Suggested Citation
Ziwei Wu & Guangyin Jin & Xueqiang Gu & Chao Wang, 2025.
"KANJDP: Interpretable Temporal Point Process Modeling with Kolmogorov–Arnold Representation,"
Mathematics, MDPI, vol. 13(17), pages 1-17, August.
Handle:
RePEc:gam:jmathe:v:13:y:2025:i:17:p:2754-:d:1733649
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