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An ensemble of the distance-based and Naive Bayes classifiers for the online classification with data reduction

机译:用于在线分类的距离为基础的距离和朴素贝叶斯分类器的集合,数据减少

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摘要

The paper proposes two variants of the ensemble distance-based and Naive-Bayes online classifiers with data reduction. In the first variant the reduced dataset is obtained through applying bias-correction fuzzy clustering. In the second we used the kernel-based fuzzy clustering as the data reduction tool. It is assumed that vectors of data with unknown class label arrive one by one, and that there is available an initial chunk of data with known class labels serving as the initial training set. Classification is carried-out in rounds. Each round involves a number of the classification decisions equal to the chunk size. For each round a set of base classifiers is constructed using different distance metrics. Set of base classifiers is extended with the Naive-Bayes classifier. The unknown label of each incoming vector is determined through weighted majority voting. After each round has been completed the training set is replaced by the fresh one and the classification process is continued. The approach is validated through computational experiment involving a number of datasets often used for testing data streams mining algorithms.
机译:本文提出了合并距离和幼稚贝叶斯在线分类器的两种变体,具有数据减少。在第一变体中,通过应用偏置校正模糊聚类来获得缩小的数据集。在第二个我们使用基于内核的模糊聚类作为数据减少工具。假设具有未知类标签的数据向量逐个到达,并且可以使用具有作为初始训练集的已知类标签,可用的初始数据块。分类是在圆形中进行的。每轮涉及许多等于块大小的分类决策。对于每个轮,通过不同的距离度量构建一组基本分类器。一组基本分类器与Naive-Bayes分类器扩展。通过加权大多数投票确定每个进入载体的未知标签。在完成每轮之后,培训集被新鲜的培训集更换,并继续进行分类过程。通过涉及许多用于测试数据流挖掘算法的数据集的计算实验验证该方法。

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