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IEEE WIECON-ECE 2018 Novel Class Detection in Concept Drifting Data Streams Using Decision Tree Leaves

机译:IEEE WieCon-ECE 2018新型类检测在概念漂移数据流中使用决策树叶子

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Concept drifting data streams often occurs in weather forecasting, intrusion detection and other applications. One of the difficulties with handling concept drifting data streams is the existence of novel classes in the data stream that arrives after the training of the model on the existing class instances. In this paper, we present a novel class detection algorithm in concept based on the instance distribution in the decision tree leaves. Our proposed algorithm is easy to implement and use compared to complex ensemble based methods. We have tested the performance of our algorithm on several datasets and it shows significantly improved results compared to previous state-of-the-art algorithm using standard evaluation methods and metrics.
机译:概念漂移数据流通常发生在天气预报,入侵检测和其他应用中。处理概念漂移数据流的困难之一是在数据流中存在的新颖类,该数据流在现有类实例上的模型训练之后到达。本文基于决策树叶中的实例分布,我们在概念中提出了一种新型类检测算法。与基于复合合奏的方法相比,我们所提出的算法易于实现和使用。我们在多个数据集中测试了我们算法的性能,并且与使用标准评估方法和指标的先前最先进的算法相比,结果显着改善了结果。

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