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GMM-VRD: A Gaussian Mixture Model for Dealing With Virtual and Real Concept Drifts

机译:GMM-VRD:用于处理虚拟和真实概念漂移的高斯混合模型

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Concept drift is a change in the joint probability distribution of the problem. This term can be subdivided into two types: real drifts that affect the conditional probabilities p(y|x) or virtual drifts that affect the unconditional probability distribution p(x). Most existing work focuses on dealing with real concept drifts. However, virtual drifts can also cause degradation in predictive performance, requiring mechanisms to be tackled. Moreover, as virtual drifts frequently mean that part of the old knowledge remains useful, they require different strategies from real drifts to be effectively tackled. Motivated on this, we propose an approach called Gaussian Mixture Model for Dealing With Virtual and Real Concept Drifts (GMM-VRD), which updates and creates Gaussians to tackle virtual drifts and resets the system to deal with real drifts. The main results show that the proposed approach obtained the best results, in terms of average accuracy, in relation to the literature methods, which propose to solve that same problem. In terms of accuracy over time, the proposed approach showed lower degradation on concept drifts, which indicates that the proposed approach was efficient.
机译:概念漂移是问题的联合概率分布的变化。该术语可分为两种类型:影响条件概率p(y | x)的实际漂移或影响无条件概率分布p(x)的虚拟漂移。现有的大多数工作都集中在处理实际概念漂移上。但是,虚拟漂移也会导致预测性能下降,需要解决机制。此外,由于虚拟漂移经常意味着部分旧知识仍然有用,因此需要与实际漂移不同的策略来有效解决。为此,我们提出了一种称为高斯混合模型的虚拟和实际概念漂移处理方法(GMM-VRD),该方法可以更新并创建高斯函数来处理虚拟漂移,并重置系统以处理实际漂移。主要结果表明,相对于提出解决该问题的文献方法,该方法在平均准确度方面获得了最佳结果。就随时间的准确性而言,所提出的方法在概念漂移方面显示出较低的降级,这表明所提出的方法是有效的。

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