Title
An effective pattern-based Bayesian classifier for evolving data stream.
Abstract
One of the hot topics in graph-based machine learning is to build Bayesian classifier from large-scale dataset. An advanced approach to Bayesian classification is based on exploited patterns. However, traditional pattern-based Bayesian classifiers cannot adapt to the evolving data stream environment. For that, an effective Pattern-based Bayesian classifier for Data Stream (PBDS) is proposed. First, a data-driven lazy learning strategy is employed to discover local frequent patterns for each test record. Furthermore, we propose a summary data structure for compact representation of data, and to find patterns more efficiently for each class. Greedy search and minimum description length combined with Bayesian network are applied to evaluating extracted patterns. Experimental studies on real-world and synthetic data streams show that PBDS outperforms most state-of-the-art data stream classifiers.
Year
DOI
Venue
2018
10.1016/j.neucom.2018.01.016
Neurocomputing
Keywords
Field
DocType
Data stream,Frequent pattern,Bayesian,Lazy learning
Data structure,Pattern recognition,Naive Bayes classifier,Data stream,Minimum description length,Lazy learning,Synthetic data,Bayesian network,Artificial intelligence,Machine learning,Mathematics,Bayesian probability
Journal
Volume
ISSN
Citations 
295
0925-2312
1
PageRank 
References 
Authors
0.36
24
5
Name
Order
Citations
PageRank
Jidong Yuan1186.45
Zhihai Wang242528.26
Yange Sun393.89
Wei Zhang428735.43
Jingjing Jiang510.36