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A new discriminant analysis for non-normally distributed data based on datawise formulation of scatter matrices

机译:基于散点矩阵数据表示的非正态分布数据新判别分析

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In this paper, we propose a new discrminant analysis based on datawise formulation of scatter matrices to deal with the data of non-normal distribution. Starting from original LDA, datawise formulation of scatter matrices is derived and its meaning is clarified. Based on this formulation, a new feature extraction algorithm is presented. In this formulation, assumption on distribution of data is no more necessary, so appropriate feature space can be found from the data whose distribution is non-normal, as well as multimodally normal. Limitation on the feature dimension also can be removed, and by replacing the inverse matrix of within-class scatter matrix with especially assigned weights, computational problems originating from matrix inversion of within-scatter matrix can be fundamentally avoided. As a result, good feature space for classification task can be found without the problems of LDA. Performance of this algorithm has been evaluated by using feature for real classification tasks.
机译:在本文中,我们提出了一种基于散点矩阵的数据表示形式的新判别分析,以处理非正态分布的数据。从原始的LDA开始,推导了散布矩阵的数据形式公式,并阐明了其含义。在此基础上,提出了一种新的特征提取算法。在这种表述中,不再需要假设数据的分布,因此可以从分布为非正态以及多峰正态的数据中找到适当的特征空间。还可以消除特征尺寸的限制,并且通过用特别分配的权重替换类内散布矩阵的逆矩阵,可以从根本上避免源于散布内矩阵的矩阵求逆的计算问题。结果,可以找到用于分类任务的良好特征空间而没有LDA的问题。该算法的性能已通过将功能用于实际分类任务进行了评估。

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