On the Enhancement of Classification Algorithms Using Biased Samples

S. Al-Mamory
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引用次数: 0

Abstract

Classification algorithms' performance could be enhanced by selecting many representative points to be included in the training sample. In this paper, a new border and rare biased sampling (BRBS) scheme is proposed by assigning each point in the dataset an importance factor. The importance factor of border points and rare points (i.e. points belong to rare classes) is higher than other points. Then the points are selected to be in the training sample depending on these factors. Including these points in the training sample enhances classifiers experience. The results of experiments on 10 UCI machine learning repository datasets prove that the BRBS algorithm outperforms many sampling algorithms and enhanced the performance of several classification algorithms by about 8%. BRBS is proposed to be easy to configure, covering all points space, and generate a unique samples every time it is executed.
基于有偏样本的分类算法的改进
通过在训练样本中选择多个代表性点,可以提高分类算法的性能。本文提出了一种新的边界稀有偏差采样(BRBS)方案,该方案通过为数据集中的每个点分配一个重要因子来实现。边界点和稀有点(即属于稀有类的点)的重要性系数高于其他点。然后根据这些因素选择训练样本中的点。在训练样本中包含这些点可以增强分类器的经验。在10个UCI机器学习存储库数据集上的实验结果证明,BRBS算法优于许多采样算法,并将几种分类算法的性能提高了约8%。BRBS具有易于配置、覆盖所有点空间、每次执行生成唯一样本的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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