We introduce a novel inferential framework for marked point processes that enjoys both scalability and interpretability. The framework is based on variational inference and it aims to speed up inference for a flexible family of marked point processes where the joint distribution of times and marks can be specified in terms of the conditional distribution of times given the process filtration, and of the conditional distribution of marks given the process filtration and the current time. We assess the predictive ability of our proposed method over four real-world datasets where results show its competitive performance against other baselines. The attractiveness of our framework for the modelling of marked point processes is illustrated through a case study of association football data where scalability and interpretability are exploited for extracting useful informative patterns.
翻译:我们为具有可缩放性和可解释性的标志点进程引入了新的推论框架,该框架以变式推论为基础,旨在加快对标志点进程的灵活组合的推论,在这种组合中,时间和标记的共同分配可以具体表现为:按特定过程过滤时间的有条件分配,以及根据过程过滤和当前时间对标记的有条件分配。我们评估了我们所提议的方法对四个真实世界数据集的预测能力,在这些数据集中,结果显示它与其他基线相比具有竞争性的性能。我们的标志点进程建模框架的吸引力通过对协会足球数据进行个案研究来说明,在这种研究中,利用可缩放性和可解释性来提取有用的信息模式。