用分类器的动态集成处理局部概念漂移:医院感染中抗生素耐药的领域

A. Tsymbal, Mykola Pechenizkiy, P. Cunningham, S. Puuronen
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引用次数: 59

摘要

在现实世界中,概念和数据分布通常不是稳定的,而是随时间变化的。这个问题被称为概念漂移,它使从数据中学习模型的任务变得复杂,并且需要特殊的方法,这与通常使用的技术不同,后者将到达的实例视为目标概念的同等重要贡献者。处理概念漂移的最流行和最有效的方法是集成学习,其中维护在不同时间段建立的一组模型,并选择最佳模型或组合模型的预测。在本文中,我们考虑使用一种集成技术来帮助更好地处理实例级的概念漂移。我们对真实世界抗生素耐药性数据的实验表明,在小时间间隔内构建的分类器的动态集成比全局加权投票更有效,全局加权投票是目前最常用的集成方法,用于处理具有集成的概念漂移
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Handling Local Concept Drift with Dynamic Integration of Classifiers: Domain of Antibiotic Resistance in Nosocomial Infections
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
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