This paper proposes a simple yet powerful ensemble classifier, called Random Hyperboxes, constructed from individual hyperbox-based classifiers trained on the random subsets of sample and feature spaces of the training set. We also show a generalization error bound of the proposed classifier based on the strength of the individual hyperbox-based classifiers as well as the correlation among them. The effectiveness of the proposed classifier is analyzed using a carefully selected illustrative example and compared empirically with other popular single and ensemble classifiers via 20 datasets using statistical testing methods. The experimental results confirmed that our proposed method outperformed other fuzzy min-max neural networks, popular learning algorithms, and is competitive with other ensemble methods. Finally, we identify the existing issues related to the generalization error bounds of the real datasets and inform the potential research directions.
翻译:本文提出一个简单而有力的混合分类器,称为“随机超箱”,由每个超箱分类器根据一组培训的抽样和特异空间随机子集组成,我们还根据每个超箱分类器的强度以及它们之间的相互关系,展示了拟议的分类器的概括性误差。对拟议的分类器的有效性进行分析时,采用仔细选择的示例,并用统计测试方法,与其他流行的单一分类器和共性分类器通过20个数据集进行经验比较。实验结果证实,我们的拟议方法优于其他模糊的微轴神经网络、流行学习算法,与其他共集方法具有竞争力。最后,我们确定了与真实数据集的通用误差有关的现有问题,并告知潜在的研究方向。