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Heteroscedastic Gaussian based correction term for fisher discriminant analysis and its kernel extension

机译:基于异方差高斯的Fisher判别分析校正项及其核扩展。

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Fisher discriminant analysis (FDA) is a very famous analysis method for classification. However, FDA does give an optimal projection only for Gaussian distributions with equal covariance matrices. In other words, FDA is not optimal in the case of heteroscedastic Gaussian distributions. In this paper, we propose a novel criterion for FDA including a correction term based on the Bhattacharyya distance which is closely related to classification rate. Furthermore, the Chernoff distance based criterion and its kernelized version are proposed as its extension. These proposed criteria have three strong points. The first one is that the correction term based on the Bhattacharyya distance can deal with heteroscedastic Gaussian distributions. The second one is that the correction term based on the Chernoff distance can handle easily the difference in the number of class samples. The third point is that their kernel extensions are easily implemented to be applied to non-Gaussian distributions. As a result, the proposed method is applicable in a wide variety of classification problems. Experimental results using toy simulations and nine kinds of UCI real-world datasets show marked advantages of the proposed method over the conventional FDA.
机译:Fisher判别分析(FDA)是一种非常着名的分类方法。但是,FDA确实只提供了具有相同协方差矩阵的高斯分布的最佳投影。换句话说,FDA在异源高斯分布的情况下不适。在本文中,我们提出了一种新的FDA标准,包括基于Bhattacharyya距离的校正项,与分类率密切相关。此外,建议基于Chernoff距离的标准及其内核版本作为其扩展。这些提出的标准有三个强点。第一个是基于Bhattacharyya距离的校正项可以处理异镜型高斯分布。第二个是基于Chernoff距离的校正项可以容易地处理类样本数量的差异。第三点是它们的内核扩展易于实现以应用于非高斯分布。结果,该方法适用于各种分类问题。使用玩具仿真和九种UCI现实世界数据集的实验结果显示了在传统FDA上所提出的方法的显着优势。

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