Back to Search
Start Over
L1 regularized ordering for learning Bayesian network classifiers
- Source :
- ICNC
- Publication Year :
- 2011
- Publisher :
- USA : IEEE - The Institute of Electrical and Electronic Engi..., 2011.
-
Abstract
- Learning a Bayesian network classifier from data is an active research topic in data mining. The key problem for constructing a Bayesian network classifier is to learn an accurate Bayesian network structure which is a difficult task. The K2 algorithm, as one of the most efficient Bayesian network learning methods can deal with this difficult task. However, K2 requires a variable ordering in advance. Existing methods for establishing this ordering neglect information of the variables selected. To address this problem, in this paper, we propose an L1 regularized Bayesian network classifier (L1-BNC). L1-BNC defines a variable ordering by the LARS (Least Angle Regression) method, and then with this ordering it uses K2 to construct a Bayesian network classifier. In comparison with seven Bayesian network classifiers, L1-BNC outperforms those classifiers on most datasets Refereed/Peer-reviewed
- Subjects :
- Wake-sleep algorithm
Computer science
business.industry
Bayesian probability
Bayesian network classifier
Bayesian network
Regression analysis
LARS
computer.software_genre
Machine learning
Variable-order Bayesian network
Statistics::Computation
Bayesian statistics
Statistical classification
ComputingMethodologies_PATTERNRECOGNITION
K2 algorithm
Data mining
Artificial intelligence
business
computer
Dynamic Bayesian network
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- ICNC
- Accession number :
- edsair.doi.dedup.....9d6058ce9fe6c9e54f8144c880a94d15