Investigation of diversity and accuracy in ensemble of classifiers using Bayesian decision rules

M. Wong, Wai Yeung Yan
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引用次数: 7

Abstract

Multiple Classifier System (MCS) has attracted increasing interest in the field of pattern recognition and machine learning where this technique has also been introduced in remote sensing. The importance of classifier diversity in MCS has been raised recently; nevertheless, only a few of the researches have been studied in land cover classification problem. In this paper, a SPOT IV satellite image covering the Hong Kong Island and Kowloon Peninsula with six land cover classes were classified with four base classifiers: Minimum Distance Classifier, Maximum Likelihood Classifier, Mahalanobis Classifier and K-Nearest Neighbor Classifier. Same training and testing data sets were applied throughout the experiments and five Bayesian decision rules, including product rule, sum rule, max rule, min rule, and median rule, were utilized to construct different ensemble of classifiers. Performance of MCS was measured using the overall accuracy and kappa statistics, and three statistical tests including McNemarpsilas test, Cochranpsilas Q test and F-test were introduced to examine the dependence of the classification results. The experimental comparison reveals that (i) increasing the number of base classifiers may not improve the overall accuracy in MCS, (ii) significant diversity in base classifiers cannot enhance the overall performance and vice versa. These findings are noted with the condition in using the same data set and the same training set.
基于贝叶斯决策规则的分类器集成的多样性和准确性研究
多分类器系统(MCS)在模式识别和机器学习领域引起了越来越多的兴趣,该技术也被引入到遥感领域。分类器多样性在MCS中的重要性近年来逐渐被提出;然而,对土地覆盖分类问题的研究较少。本文以覆盖香港岛和九龙半岛的SPOT IV卫星图像为研究对象,采用最小距离分类器、最大似然分类器、Mahalanobis分类器和k -近邻分类器4种基本分类器对其进行分类。在整个实验中使用相同的训练和测试数据集,并使用5种贝叶斯决策规则,包括乘积规则、和规则、最大规则、最小规则和中位数规则来构建不同的分类器集合。采用总体准确率和kappa统计量来衡量MCS的性能,并采用McNemarpsilas检验、Cochranpsilas Q检验和f检验3种统计检验来检验分类结果的相关性。实验对比表明:(1)增加基分类器的数量并不能提高MCS的整体准确率;(2)基分类器的显著多样性并不能提高整体性能,反之亦然。这些发现是在使用相同数据集和相同训练集的条件下注意到的。
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