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Asymptotic Behavior Of Margin-Based Classification Methods

机译:基于边距的分类方法的渐近行为

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We investigate the asymptotic behavior of the margin-based classification methods in the limit of large dimension $ pightarrow infty $ and large sample size $n ightarrow infty $ at fixed rate $lpha = n/p$. Under spiked population model, we first derive a general framework for describing the performance of a class of classification methods. Then we apply this framework to two commonly used classification methods: Support Vector Machine (SVM) and Distance Weighted Discrimination (DWD). Our analytical results show that DWD is less sensitive to the tuning parameter and achieves better performance than SVM in situations where $nlt p$. This finding provides a theoretical confirmation to the empirical results that have been observed in many previous simulation and real data studies.
机译:我们研究了基于边距的分类方法在固定维数$ \ alpha = n / p $的大维$ p \ rightarrow \ infty $和大样本量$ n \ rightarrow \ infty $的极限下的渐近行为。在尖峰人口模型下,我们首先导出描述一类分类方法性能的通用框架。然后,我们将此框架应用于两种常用的分类方法:支持向量机(SVM)和距离加权判别(DWD)。我们的分析结果表明,在$ n \ lt p $的情况下,DWD对调整参数的敏感性较低,并且比SVM可获得更好的性能。这一发现为许多先前的模拟和真实数据研究中观察到的经验结果提供了理论上的证实。

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