Multiplicative Forests for Continuous-Time Processes
Abstract
Learning temporal dependencies between variables over continuous time is an important and challenging task. Continuous-time Bayesian networks effectively model such processes but are limited by the number of conditional intensity matrices, which grows exponentially in the number of parents per variable. We develop a partition-based representation using regression trees and forests whose parameter spaces grow linearly in the number of node splits. Using a multiplicative assumption we show how to update the forest likelihood in closed form, producing efficient model updates. Our results show multiplicative forests can be learned from few temporal trajectories with large gains in performance and scalability.
Cite
Text
Weiss et al. "Multiplicative Forests for Continuous-Time Processes." Neural Information Processing Systems, 2012.Markdown
[Weiss et al. "Multiplicative Forests for Continuous-Time Processes." Neural Information Processing Systems, 2012.](https://mlanthology.org/neurips/2012/weiss2012neurips-multiplicative/)BibTeX
@inproceedings{weiss2012neurips-multiplicative,
title = {{Multiplicative Forests for Continuous-Time Processes}},
author = {Weiss, Jeremy and Natarajan, Sriraam and Page, David},
booktitle = {Neural Information Processing Systems},
year = {2012},
pages = {458-466},
url = {https://mlanthology.org/neurips/2012/weiss2012neurips-multiplicative/}
}