Semi-Parametric Learning of Structured Temporal Point Processes

Abstract

We propose a general framework of using a multi-level log-Gaussian Cox process to model repeatedly observed point processes with complex structures; such type of data has become increasingly available in various areas including medical research, social sciences, economics, and finance due to technological advances. A novel nonparametric approach is developed to efficiently and consistently estimate the covariance functions of the latent Gaussian processes at all levels. To predict the functional principal component scores, we propose a consistent estimation procedure by maximizing the conditional likelihood of super-positions of point processes. We further extend our procedure to the bivariate point process case in which potential correlations between the processes can be assessed. Asymptotic properties of the proposed estimators are investigated, and the effectiveness of our procedures is illustrated through a simulation study and an application to a stock trading dataset.

Cite

Text

Xu et al. "Semi-Parametric Learning of Structured Temporal Point Processes." Journal of Machine Learning Research, 2020.

Markdown

[Xu et al. "Semi-Parametric Learning of Structured Temporal Point Processes." Journal of Machine Learning Research, 2020.](https://mlanthology.org/jmlr/2020/xu2020jmlr-semiparametric/)

BibTeX

@article{xu2020jmlr-semiparametric,
  title     = {{Semi-Parametric Learning of Structured Temporal Point Processes}},
  author    = {Xu, Ganggang and Wang, Ming and Bian, Jiangze and Huang, Hui and Burch, Timothy R. and Andrade, Sandro C. and Zhang, Jingfei and Guan, Yongtao},
  journal   = {Journal of Machine Learning Research},
  year      = {2020},
  pages     = {1-39},
  volume    = {21},
  url       = {https://mlanthology.org/jmlr/2020/xu2020jmlr-semiparametric/}
}