有效地处理流数据上的概念漂移和概念演变

Ahsanul Haque, L. Khan, M. Baron, B. Thuraisingham, C. Aggarwal
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引用次数: 82

摘要

为了确定是否需要对数据流分类器进行更新,现有的基于滑动窗口的技术可以监控最近实例上的分类器性能。如果分类器性能有显著变化,这些方法确定块边界,并更新分类器。然而,由于标记数据的稀缺性,监控分类器性能的成本很高。在我们之前的工作中,我们提出了一个半监督框架SAND,它使用对分类器置信度的变化检测来检测概念漂移。与大多数方法不同,它只需要有限数量的标记数据来检测块边界并更新分类器。然而,由于彻底调用变更检测模块,SAND在执行时间方面代价高昂。在本文中,我们提出了一个有效的框架,它基于与SAND相同的原理,但利用动态规划并有选择地执行变更检测模块。此外,我们为置信度计算提供了理论依据,并展示了概念漂移对后续置信度得分的影响。实验结果表明,该框架在精度和执行时间上都是有效的。
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Efficient handling of concept drift and concept evolution over Stream Data
To decide if an update to a data stream classifier is necessary, existing sliding window based techniques monitor classifier performance on recent instances. If there is a significant change in classifier performance, these approaches determine a chunk boundary, and update the classifier. However, monitoring classifier performance is costly due to scarcity of labeled data. In our previous work, we presented a semi-supervised framework SAND, which uses change detection on classifier confidence to detect a concept drift. Unlike most approaches, it requires only a limited amount of labeled data to detect chunk boundaries and to update the classifier. However, SAND is expensive in terms of execution time due to exhaustive invocation of the change detection module. In this paper, we present an efficient framework, which is based on the same principle as SAND, but exploits dynamic programming and executes the change detection module selectively. Moreover, we provide theoretical justification of the confidence calculation, and show effect of a concept drift on subsequent confidence scores. Experiment results show efficiency of the proposed framework in terms of both accuracy and execution time.
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