线性判别分析(LDA)的新方法

Usman Sudibyo, Supriadi Rustad, Pulung Nurtantio Andono, A. Zainul Fanani, Purwanto Purwanto, Muljono Muljono
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摘要

线性判别分析(LDA)是一种用于降维和分类的方法。通过减少数据解释的维度,它变得更容易。提出了一种新的基于lda的坐标变换(LDA-CT)方法,该方法不依赖于数据分布的统计性质,从而对异常值的影响具有更强的鲁棒性。该方法将数据从旧坐标转换为新坐标,从而获得最优梯度,使两组在投影空间中的分离距离最大化。使用合成数据来测试这种新的LDA方法的性能,并与现有的LDA性能进行比较。实验结果表明,与现有的LDA方法相比,该方法能够更好地泛化和鲁棒性地抵抗异常值的影响。对于可以线性分离的数据,LDA- ct最优方法能够分离到0.705390519的类别,优于现有的LDA方法,LDA只能分离到0.33440611。对于有离群值的数据,LDA- ct Optimal的准确率为91.67%,优于现有的LDA的75%。
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A Novel Approach on Linear Discriminant Analysis (LDA)
Linear Discriminant Analysis (LDA) is a method used for dimension reduction and classification. By reducing the dimensions of data interpretation it becomes easier. A new LDA-based coordinate transformation (LDA-CT) approach has been developed that does not depend on the statistical nature of data distribution so that it is more robust to the influence of outliers. This approach transforms data from the old coordinates to the new coordinates so that an optimal gradient is obtained which maximizes the separation distance of the two groups in the projection space. Synthetic data are used to test the performance of this new LDA approach compared to existing LDA performance. The experimental results using synthetic data without and with outliers show that compared to the existing LDA, this new approach is able to make generalizations better and more robustly against the influence of outliers. For data that can be separated linearly, the LDA-CT Optimal method is able to separate classes as far as 0.705390519 better than existing LDA which only separates as far as 0.33440611. For data with outliers, LDA-CT Optimal accuracy is better than existing LDA with 91.67% compared to 75%.
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