基于多样性的改进Bagging算法

J. Alzubi
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引用次数: 25

摘要

套袋是设计分类器集成的一种众所周知的方法。它建立了一个分类器的集合,在训练数据集的不同自举复制上训练。本文提出并深入研究了对bagging算法的改进,即DivBagging算法。实验结果表明,DivBagging是一种很有前途的集成剪枝方法。我们相信它比Bagging和Learn等类似的方法有很多优点,因为它们的机制完全基于选择最准确的基分类器。
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Diversity Based Improved Bagging Algorithm
Bagging is a well known method for designing classifier ensembles. It builds an ensemble of classifier trained on different bootstrap replicates of the training data set. In this paper an improvement to bagging algorithm called DivBagging is presented and studied in depth. The experimental results show that DivBagging is a promising method for ensemble pruning. We believe that it has many advantages over similar methods such as Bagging and Learn because their mechanism is solely based on selecting the most accurate base classifiers.
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