Recurrent Marked Temporal Point Processes
Citations Over TimeTop 1% of 2016 papers
Abstract
Large volumes of event data are becoming increasingly available in a wide variety of applications, such as healthcare analytics, smart cities and social network analysis. The precise time interval or the exact distance between two events carries a great deal of information about the dynamics of the underlying systems. These characteristics make such data fundamentally different from independently and identically distributed data and time-series data where time and space are treated as indexes rather than random variables. Marked temporal point processes are the mathematical framework for modeling event data with covariates. However, typical point process models often make strong assumptions about the generative processes of the event data, which may or may not reflect the reality, and the specifically fixed parametric assumptions also have restricted the expressive power of the respective processes. Can we obtain a more expressive model of marked temporal point processes? How can we learn such a model from massive data?
Related Papers
- → An introduction to the full random effects model(2022)21 cited
- → Compensation and Amplification of Attenuation Bias in Causal Effect Estimates(2019)10 cited
- → Sparse classification with paired covariates(2019)7 cited
- Survival analysis with coarsely observed covariates(2003)
- → Adjustment when Covariates are Fallible(2016)6 cited