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Multiple Classifiers System for Reducing Influences of Atypical Observations

机译:减少非典型观测值影响的多重分类器系统

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Atypical observations, which are called outliers, are one of difficulties to apply standard Gaussian density based pattern classification methods. Large number of outliers makes distribution densities of input features multi-modal. The problem becomes especially challenging in high-dimensional feature space. To tackle atypical observations, we propose multiple classifiers systems (MCSs) whose base classifiers have different representations of the original feature by transformations. This enables to deal with outliers in different ways. As the base classifier, we employ the integrated approach of statistical and neural networks. This consists of data whitening and training of single layer perceptron (SLP). Data whitening makes marginal distributions close to unimodal, and SLP is robust to outliers. Various kinds of combination strategies of the base classifiers achieved reduction of generalization error in comparison with the benchmark method, the regularized discriminant analysis (RDA).
机译:非典型观测值称为离群值,是应用基于标准高斯密度的模式分类方法的困难之一。大量异常值使输入要素的分布密度成为多峰的。在高维特征空间中,该问题尤其具有挑战性。为了解决非典型观察,我们提出了多个分类器系统(MCS),其分类器通过变换对原始特征具有不同的表示。这使得可以用不同的方式处理异常值。作为基础分类器,我们采用了统计和神经网络的集成方法。这包括数据白化和单层感知器(SLP)的训练。数据变白使边缘分布接近单峰分布,并且SLP对异常值具有鲁棒性。与基准方法,正则判别分析(RDA)相比,基本分类器的各种组合策略均减少了泛化误差。

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