Hawkes processes have recently risen to the forefront of tools when it comes to modeling and generating sequential events data. Multidimensional Hawkes processes model both the self and cross-excitation between different types of events and have been applied successfully in various domain such as finance, epidemiology and personalized recommendations, among others. In this work we present an adaptation of the Frank-Wolfe algorithm for learning multidimensional Hawkes processes. Experimental results show that our approach has better or on par accuracy in terms of parameter estimation than other first order methods, while enjoying a significantly faster runtime.
翻译:在模拟和生成连续事件数据方面,霍克斯进程最近已升至工具的前列。多层面霍克斯进程模拟了不同类型事件之间的自我和交叉引用,并成功地应用于金融、流行病学和个性化建议等各个领域。在这项工作中,我们介绍了对弗兰克-沃夫算法的调整,以学习多层面霍克斯进程。实验结果显示,我们的方法在参数估计方面比其他第一顺序方法更准确或相当准确,同时享受的运行时间要快得多。