DocumentCode
2155160
Title
Handling Local Concept Drift with Dynamic Integration of Classifiers: Domain of Antibiotic Resistance in Nosocomial Infections
Author
Tsymbal, Alexey ; Pechenizkiy, Mykola ; Cunningham, Pádraig ; Puuronen, Seppo
Author_Institution
Dept. of Comput. Sci., Trinity Coll., Dublin
fYear
0
fDate
0-0 0
Firstpage
679
Lastpage
684
Abstract
In the real world concepts and data distributions are often not stable but change with time. This problem, known as concept drift, complicates the task of learning a model from data and requires special approaches, different from commonly used techniques, which treat arriving instances as equally important contributors to the target concept. Among the most popular and effective approaches to handle concept drift is ensemble learning, where a set of models built over different time periods is maintained and the best model is selected or the predictions of models are combined. In this paper we consider the use of an ensemble integration technique that helps to better handle concept drift at the instance level. Our experiments with real-world antibiotic resistance data demonstrate that dynamic integration of classifiers built over small time intervals can be more effective than globally weighted voting which is currently the most commonly used integration approach for handling concept drift with ensembles
Keywords
data mining; drugs; learning (artificial intelligence); medical computing; antibiotic resistance; classifiers; dynamic integration; ensemble integration technique; ensemble learning; local concept drift; nosocomial infections; Antibiotics; Computer science; Data mining; Databases; Educational institutions; Immune system; Machine learning; Pathogens; Predictive models; Voting;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer-Based Medical Systems, 2006. CBMS 2006. 19th IEEE International Symposium on
Conference_Location
Salt Lake City, UT
ISSN
1063-7125
Print_ISBN
0-7695-2517-1
Type
conf
DOI
10.1109/CBMS.2006.94
Filename
1647649
Link To Document