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E-CVFDT: An improving CVFDT method for concept drift data stream

机译:E-CVFDT:一种用于概念漂移数据流的改进的CVFDT方法

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Distribution of data stream is always changed in the real world. This problem is usually defined as concept drift [1]. The state-of-the-art decision tree classification method CVFDT[2] can solve the concept drift problem well, but the efficiency is debased because of its general method of handling instances in CVFDT without considering the types of concept drift. In this paper, an algorithm called Efficient CVFDT (E-CVFDT) is proposed to improve the efficiency of CVFDT. E-CVFDT introduces cache mechanism and treats the instances in three kinds of concept drift respectively, i.e. accidental concept drift, gradual concept drift, instantaneously concept drift. Besides, in E-CVFDT, the cached instances which have similar attributes will be sent in batches to calculate the information gain calculation rather than in sequence adopted by CVFDT. The experiments are carried out on the MOA platform. The results show that E-CVFDT algorithm achieves not only better efficiency but also higher accuracy than CVFDT algorithm.
机译:数据流的分布始终在现实世界中更改。此问题通常被定义为概念virt [1] 。最先进的决策树分类方法CVFDT [2] 可以良好地解决概念漂移问题,但效率是被剥离的,因为它在不考虑类型的情况下处理CVFDT中的实例的一般方法概念漂移。本文提出了一种称为高效CVFDT(E-CVFDT)的算法,提高CVFDT的效率。 E-CVFDT分别介绍缓存机制并分别在三种概念漂移中处理实例,即意外概念漂移,逐渐概念漂移,瞬间概念漂移。此外,在E-CVFDT中,将批量发送具有类似属性的缓存实例,以计算信息增益计算而不是CVFDT采用的顺序。实验是在MOA平台上进行的。结果表明,E-CVFDT算法不仅可以更好的效率而且比CVFDT算法更高的准确性。

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