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Linear discriminant analysis with worst between-class separation and average within-class compactness

机译:线性判别分析具有最差的类间分离度和平均类内紧实度

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Linear discriminant analysis (LDA) is one of the most popular supervised dimensionality reduction (DR) techniques and obtains discriminant projections by maximizing the ratio of average-case between-class scatter to average-case within-class scatter. Two recent discriminant analysis algorithms (DAS), minimal distance maximization (MDM) and worst-case LDA (WLDA), get projections by optimizing worst-case scatters. In this paper, we develop a new LDA framework called LDA with worst between-class separation and average within-class compactness (WSAC) by maximizing the ratio of worst-case between-class scatter to average-case within-class scatter. This can be achieved by relaxing the trace ratio optimization to a distance metric learning problem. Comparative experiments demonstrate its effectiveness. In addition, DA counterparts using the local geometry of data and the kernel trick can likewise be embedded into our framework and be solved in the same way.
机译:线性判别分析(LDA)是最流行的监督降维(DR)技术之一,它通过最大化类间平均散布与类内平均散布之比来获得判别投影。最近的两种判别分析算法(DAS),最小距离最大化(MDM)和最坏情况的LDA(WLDA)通过优化最坏情况的散点图获得了预测。在本文中,我们通过最大化最坏情况下类间散布与平均情况下类内散布的比率​​,开发了一种新的LDA框架,即LDA,它具有最差的类间分离和平均类内紧凑度(WSAC)。这可以通过将跟踪比率优化放宽到距离度量学习问题来实现。对比实验证明了它的有效性。此外,使用本地数据几何和内核技巧的DA对应对象也可以嵌入到我们的框架中,并以相同的方式解决。

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