作者
Hongyun Cai, Thanh Tung Nguyen, Yan Li, Vincent W Zheng, Binbin Chen, Gao Cong, Xiaoli Li
发表日期
2020/5
期刊
Cognitive Computation
卷号
12
页码范围
499-512
出版商
Springer US
简介
Event sequences with marker and timing information are available in a wide range of domains, from machine log in automatic train supervision systems to information cascades in social networks. Given the historical event sequences, predicting what event will happen next and when it will happen can benefit many useful applications, such as maintenance service schedule for mass rapid transit trains and product advertising in social networks. Temporal point process (TPP) is one effective solution to solve the next event prediction problem due to its capability of capturing the temporal dependence among events. The recent recurrent temporal point process (RTPP) methods exploited recurrent neural network (RNN) to get rid of the parametric form assumption in the density functions of TPP. However, most existing RTPP methods focus only on the temporal dependence among events. In this work, we design a novel …
引用总数
2020202120222023202413121
学术搜索中的文章
H Cai, TT Nguyen, Y Li, VW Zheng, B Chen, G Cong… - Cognitive Computation, 2020