Structured Representation of Complex Stochastic Systems
Abstract
This paper considers the problem of representing complex systems that evolve stochastically over time. Dynamic Bayesian networks provide a compact representation for stochastic processes. Unfortunately, they are often unwieldy since they cannot explicitly model the complex organizational structure of many real life systems: the fact that processes are typically composed of several interacting subprocesses, each of which can, in turn, be further decomposed. We propose a hierarchically structured representation language which extends both dynamic Bayesian networks and the object-oriented Bayesian network framework of [9], and show that our language allows us to describe such systems in a natural and modular way. Our language supports a natural representation for certain system characteristics that are hard to capture using more traditional frameworks. For example, it allows us to represent systems where some processes evolve at a different rate than others, or systems where the processes interact only intermittently. We provide a simple inference mechanism for our representation via translation to Bayesian networks, and suggest ways in which the inference algorithm can exploit the additional structure encoded in our representation. 1
Cite
Text
Friedman et al. "Structured Representation of Complex Stochastic Systems." AAAI Conference on Artificial Intelligence, 1998.Markdown
[Friedman et al. "Structured Representation of Complex Stochastic Systems." AAAI Conference on Artificial Intelligence, 1998.](https://mlanthology.org/aaai/1998/friedman1998aaai-structured/)BibTeX
@inproceedings{friedman1998aaai-structured,
title = {{Structured Representation of Complex Stochastic Systems}},
author = {Friedman, Nir and Koller, Daphne and Pfeffer, Avi},
booktitle = {AAAI Conference on Artificial Intelligence},
year = {1998},
pages = {157-164},
url = {https://mlanthology.org/aaai/1998/friedman1998aaai-structured/}
}