6533b85ffe1ef96bd12c1775
RESEARCH PRODUCT
Dynamic Integration of Classifiers for Tracking Concept Drift in Antibiotic Resistance Data
Alexey TsymbalPadraig Cunninghamsubject
Computer Sciencedescription
In the real world concepts are often not stable but change with time. A typical example of this in the medical context is antibiotic resistance, where pathogen sensitivity may change over time as new pathogen strains develop resistance to antibiotics which were previously effective. This problem, known as concept drift, complicates the task of learning a model from medical data and requires special approaches, different from commonly used techniques, which treat arriving instances as equally important contributors to the final concept. The underlying data distribution may change as well, making previously built models useless, which is known as virtual concept drift. These changes make regular updates of the model necessary. 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 according to their expertise level regarding the current concept. In this paper we propose a new ensemble integration technique that helps to better track concept drift at the instance level. Our experiments with the antibiotic resistance data show that dynamic integration of classifiers built over small time intervals can be more effective than the best single learning algorithm applied in combination with feature selection, which gives the best known accuracy for the considered problem domain. Besides, dynamic integration is significantly better than weighted voting which is currently the most commonly used integration approach for tracking concept drift with ensembles.
year | journal | country | edition | language |
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2005-02-17 |