Constraing-Based Learning for Continous-Time Bayesian Networks
Abstract
Dynamic Bayesian networks have been well explored in the literature as discrete-time models; however, their continuous-time extensions have seen comparatively little attention. In this paper, we propose the first constraint-based algorithm for learning the structure of continuous-time Bayesian networks. We discuss the different statistical tests and the underlying hypotheses used by our proposal to establish conditional independence. Finally, we validate its performance using synthetic data, and discuss its strengths and limitations. We find that score-based is more accurate in learning networks with binary variables, while our constraint-based approach is more accurate with variables assuming more than two values. However, more experiments are needed for confirmation.
Cite
Text
Bregoli et al. "Constraing-Based Learning for Continous-Time Bayesian Networks." Proceedings of pgm 2020, 2020.Markdown
[Bregoli et al. "Constraing-Based Learning for Continous-Time Bayesian Networks." Proceedings of pgm 2020, 2020.](https://mlanthology.org/pgm/2020/bregoli2020pgm-constraingbased/)BibTeX
@inproceedings{bregoli2020pgm-constraingbased,
title = {{Constraing-Based Learning for Continous-Time Bayesian Networks}},
author = {Bregoli, Alessandro and Scutari, Marco and Stella, Fabio},
booktitle = {Proceedings of pgm 2020},
year = {2020},
pages = {41-52},
volume = {138},
url = {https://mlanthology.org/pgm/2020/bregoli2020pgm-constraingbased/}
}