Open AccessProceedings Article
Restricted Bayesian-network structure learning
Peter J. F. Lucas
- 01 Jan 2002
- pp 117-126
13
TL;DR: In this paper, a restricted, polynomial time structure learning algorithm is proposed to determine the right balance between classification performance and the quality of the underlying probability distribution, which is not as restrictive as both other approaches.
read more
Abstract: Learning the structure of a Bayesian network from data is a difficult problem, as its associated search space is superexponentially large. As a consequence, researchers have studied learning Bayesian networks with a fixed structure, notably naive Bayesian networks and tree-augmented Bayesian networks, which involves no search at all. There is substantial evidence in the literature that the performance of such restricted networks can be surprisingly good. In this paper, we propose a restricted, polynomial time structure learning algorithm that is not as restrictive as both other approaches, and allows researchers to determine the right balance between classification performance and quality of the underlying probability distribution. The results obtained with this algorithm allow drawing some conclusions with regard to Bayesian-network structure learning in general.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Review: learning bayesian networks: Approaches and issues
TL;DR: This work takes a broad look at the literature on learning Bayesian networks—in particular their structure—from data, and hopes that all the major fields in the area are covered.
Learning Bayesian networks: approaches and issues
S Tuart A Itken
- 01 Jan 2011
TL;DR: This work takes a broad look at the literature on learning Bayesian networks—in particular their structure—from data, and aims to locate all the relevant publications.
167
Bayesian applications of belief networks and multilayer perceptrons for ovarian tumor classification with rejection
TL;DR: A hybrid Bayesian methodology that consists in encoding prior knowledge in the form of a (Bayesian) belief network and then using this knowledge to estimate an informative prior for a black-box model (e.g. a multilayer perceptron) is proposed.
75
Multimodal information fusion and temporal integration for violence detection in movies
Cédric Penet,Claire-Hélène Demarty,Guillaume Gravier,Patrick Gros +3 more
- 25 Mar 2012
TL;DR: This paper presents a violent shots detection system that studies several methods for introducing temporal and multimodal information in the framework and investigates different kinds of Bayesian network structure learning algorithms for modelling these problems.