Tractable Learning and Inference for Large-Scale Probabilistic Boolean Networks
Machine Learning
2018-01-24 v1
Abstract
Probabilistic Boolean Networks (PBNs) have been previously proposed so as to gain insights into complex dy- namical systems. However, identification of large networks and of the underlying discrete Markov Chain which describes their temporal evolution, still remains a challenge. In this paper, we introduce an equivalent representation for the PBN, the Stochastic Conjunctive Normal Form (SCNF), which paves the way to a scalable learning algorithm and helps predict long- run dynamic behavior of large-scale systems. Moreover, SCNF allows its efficient sampling so as to statistically infer multi- step transition probabilities which can provide knowledge on the activity levels of individual nodes in the long run.
Cite
@article{arxiv.1801.07693,
title = {Tractable Learning and Inference for Large-Scale Probabilistic Boolean Networks},
author = {Ifigeneia Apostolopoulou and Diana Marculescu},
journal= {arXiv preprint arXiv:1801.07693},
year = {2018}
}
Comments
16 pages