An ensemble method

Jun Liang
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引用次数: 10

Abstract

This paper gives an ensemble method called EKNN-RF. Its base classifiers use an enhanced KNN algorithm where an optimal nearest neighbor number and a distance function on a validation set are obtained to make these parameters better reflect the distribution of real data. The feature set of each base classifier is obtained through bootstrap sampling from original feature set, and make the features with higher importance have a better weight. Then the training set of each base classifier is also obtained by bootstrap sampling based original training set and the newly generated feature set. Finally, each base classifier votes to determine the classification result. Experimental results show that compared with Adaboost, Naive Bayes, RandomForest, DCT-KNN [1], LMKNN+DWKNN [2], W-KNN [3], dwh-KNN [4] and LI-KNN [5], the ensemble method EKNN-RF has certain advantages and higher classification accuracy on some datasets.
集成方法
本文给出了一种称为EKNN-RF的集成方法。它的基本分类器使用了一种增强的KNN算法,该算法获得了验证集上的最优近邻数和距离函数,使这些参数更好地反映了真实数据的分布。每个基分类器的特征集通过对原始特征集的自举采样得到,并使重要度较高的特征具有较好的权重。然后通过基于自举抽样的原始训练集和新生成的特征集得到每个基分类器的训练集。最后,每个基分类器投票决定分类结果。实验结果表明,与Adaboost、朴素贝叶斯、随机森林、DCT-KNN[1]、LMKNN+DWKNN[2]、W-KNN[3]、dwh-KNN[4]和LI-KNN[5]相比,集成方法EKNN-RF在某些数据集上具有一定的优势和更高的分类精度。
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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