传输带有内容信息的Hawkes流程

Tianbo Li, Pengfei Wei, Yiping Ke
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引用次数: 6

摘要

霍克斯过程被广泛用于事件级联的建模。然而,同样有助于建模的内容和跨领域信息通常被忽略。在本文中,我们提出了一种新的模型,称为Hawkes的传递混合最小二乘法(trHLSH),该模型将Hawkes过程与内容和跨域信息相结合。同时给出了该模型的有效学习算法。综合数据集和真实数据集的评估表明,该模型能够从时间、内容和跨域信息中共同学习知识,在网络恢复和预测方面具有较好的性能。
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Transfer Hawkes Processes with Content Information
Hawkes processes are widely used for modeling event cascades. However, content and cross-domain information which is also instrumental in modeling is usually neglected. In this paper, we propose a novel model called transfer Hybrid Least Square for Hawkes (trHLSH) that incorporates Hawkes processes with content and cross-domain information. We also present the effective learning algorithm for the model. Evaluation on both synthetic and real-world datasets demonstrates that the proposed model can jointly learn knowledge from temporal, content and cross-domain information, and has better performance in terms of network recovery and prediction.
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