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USING SELECTIVE MEMORY TO TRACK CONCEPT DRIFT EFFECTIVELY

机译:使用选择性记忆有效地追踪概念

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In this paper we describe a supervised learning algorithm that uses selective memory to track concept drift. Unlike previous methods to track concept drift that use window heuristics to adapt to changes, we present an improved approach that discriminates between the instances observed. The advantage of this method is that it allows the system to both adapt to and track drift more accurately as well as filter the noise in the data more effectively. We present the algorithm and compare its performance with FLORA a well known concept drift tracking algorithm.
机译:在本文中,我们描述了一种监督学习算法,该算法使用选择性记忆来跟踪概念漂移。与以前使用窗口试探法来适应变化的跟踪概念漂移的方法不同,我们提出了一种区分观察到的实例的改进方法。这种方法的优点是它允许系统更准确地适应和跟踪漂移,以及更有效地过滤数据中的噪声。我们介绍了该算法,并将其性能与FLORA(一种著名的概念漂移跟踪算法)进行了比较。

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