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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Diverse Instance-Weighting Ensemble Based on Region Drift Disagreement for Concept Drift Adaptation
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Diverse Instance-Weighting Ensemble Based on Region Drift Disagreement for Concept Drift Adaptation

机译:基于地区漂移分歧的多样化实例加权集合概念漂移自适应

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摘要

Concept drift refers to changes in the distribution of underlying data and is an inherent property of evolving data streams. Ensemble learning, with dynamic classifiers, has proved to be an efficient method of handling concept drift. However, the best way to create and maintain ensemble diversity with evolving streams is still a challenging problem. In contrast to estimating diversity via inputs, outputs, or classifier parameters, we propose a diversity measurement based on whether the ensemble members agree on the probability of a regional distribution change. In our method, estimations over regional distribution changes are used as instance weights. Constructing different region sets through different schemes will lead to different drift estimation results, thereby creating diversity. The classifiers that disagree the most are selected to maximize diversity. Accordingly, an instance-based ensemble learning algorithm, called the diverse instance-weighting ensemble (DiwE), is developed to address concept drift for data stream classification problems. Evaluations of various synthetic and real-world data stream benchmarks show the effectiveness and advantages of the proposed algorithm.
机译:概念漂移是指基础数据分布的变化,并且是不断变化的数据流的固有属性。有效地学习的集合学习已经证明是一种有效的处理概念漂移的方法。然而,以不断发展的流创建和维护集合多样性的最佳方法仍然是一个具有挑战性的问题。与通过输入,输出或分类器参数估计多样性相反,我们提出了一种分集测量,基于集合成员是否同意区域分布变化的可能性。在我们的方法中,通过区域分布更改的估计用作实例权重。通过不同的方案构建不同的区域集将导致不同的漂移估计结果,从而产生分集。不同意最多的分类器被选中以最大限度地提高多样性。因此,开发了一种被称为不同实例加权集合(DIWE)的基于实例的集合学习算法,以解决数据流分类问题的概念漂移。各种合成和实世界数据流基准的评估显示了所提出的算法的有效性和优点。

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