使用漂移数据流中有限数量的标记数据项进行决策树演化

W. Fan, Yi-an Huang, Philip S. Yu
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引用次数: 32

摘要

大多数以前提出的数据流挖掘方法都有一个不切实际的假设,即“标记”的数据流是现成的,可以随时挖掘。然而,在大多数现实问题中,标记数据流很少是立即可用的。由于这个原因,只有当标记数据定期可用时才重建模型。这种被动流挖掘模型有几个缺点。我们提出了需求驱动型主动数据挖掘的概念。在主动挖掘中,模型的损失要么是在不使用任何真实类标签的情况下连续猜测,要么是在必要时从少数实例中估计,这些实例的实际类标签是通过支付可承受的成本来验证的。当估计的损失超过可容忍的阈值时,模型通过使用少量具有经过验证的真实类标签的实例来发展。以往的主动挖掘工作主要集中在误差猜测和估计上。本文讨论了决策树进化的几种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision tree evolution using limited number of labeled data items from drifting data streams
Most previously proposed mining methods on data streams make an unrealistic assumption that "labelled" data stream is readily available and can be mined at anytime. However, in most real-world problems, labelled data streams are rarely immediately available. Due to this reason, models are reconstructed only when labelled data become available periodically. This passive stream mining model has several drawbacks. We propose a concept of demand-driven active data mining. In active mining, the loss of the model is either continuously guessed without using any true class labels or estimated, whenever necessary, from a small number of instances whose actual class labels are verified by paying an affordable cost. When the estimated loss is more than a tolerable threshold, the model evolves by using a small number of instances with verified true class labels. Previous work on active mining concentrates on error guess and estimation. In this paper, we discuss several approaches on decision tree evolution.
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