Feb. 5, 2024, 6:44 a.m. | Zheng Dong Matthew Repasky Xiuyuan Cheng Yao Xie

cs.LG updates on arXiv.org arxiv.org

Point process models are widely used for continuous asynchronous event data, where each data point includes time and additional information called "marks", which can be locations, nodes, or event types. This paper presents a novel point process model for discrete event data over graphs, where the event interaction occurs within a latent graph structure. Our model builds upon Hawkes's classic influence kernel-based formulation in the original self-exciting point processes work to capture the influence of historical events on future events' …

asynchronous continuous cs.lg data event graph graphs information kernel locations marks novel paper process processes stat.ml types

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