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An Improved Linear Discriminant Analysis with L1-Norm for Robust Feature Extraction

机译:改进的带有L1-范数的线性判别分析,用于鲁棒特征提取

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Feature extraction plays an important role in analyzing data with multivariate features. Linear discriminant analysis based on L1-norm (LDA-L1) is a recently developed technique for enhancing the robustness of the classic LDA against outliers. However, LDA-L1 employs a greedy strategy to find all the discriminant vectors, which may lead to suboptimal solution. To address this issue, we develop a novel algorithm termed as ILDA-L1 in this paper, which can optimize all the discriminant vectors simultaneously in a unified framework. Specifically, we introduce an orthonormal constraint on the discriminant vectors and convert the objective function of LDA-L1 into a difference formula. To solve the resulting nonconvex and nonsmooth problem, we first construct a successive concave approximation to the objective function at current solution and then use projected sub gradient method, thus leading to a convergent iterative algorithm. The experimental results on several benchmark datasets confirm the effectiveness of ILDA-L1 in extracting robust features.
机译:特征提取在分析具有多元特征的数据中起着重要作用。基于L1范数(LDA-L1)的线性判别分析是一种最新开发的技术,用于增强经典LDA对异常值的鲁棒性。但是,LDA-L1采用贪婪策略来找到所有判别向量,这可能导致次优解。为了解决这个问题,我们在本文中开发了一种称为ILDA-L1的新颖算法,该算法可以在统一框架中同时优化所有判别向量。具体来说,我们对判别向量引入正交约束,并将LDA-L1的目标函数转换为差分公式。为了解决由此产生的非凸和非光滑问题,我们首先在当前解中构造了对目标函数的连续凹逼近,然后使用投影子梯度法,从而得出了收敛的迭代算法。在几个基准数据集上的实验结果证实了ILDA-L1在提取鲁棒特征方面的有效性。

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