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Online Kernel-Based Nonlinear Neyman-Pearson Classification

机译:基于网上内核的非线性Neyman-Pearson分类

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We propose a novel Neyman-Pearson (NP) classification algorithm, which achieves the maximum detection rate and meanwhile keeps the false alarm rate around a user-specified threshold. The proposed method processes data in an online framework with nonlinear modeling capabilities by transforming the observations into a high dimensional space via the random Fourier features. After this transformation, we use a linear classifier whose parameters are sequentially learned. We emphasize that our algorithm is the first online Neyman-Pearson classifier in the literature, which is suitable for both linearly and nonlinearly separable datasets. In our experiments, we investigate the performance of our algorithm on well-known datasets and observe that the proposed online algorithm successfully learns the nonlinear class separations (by outperforming the linear models) while matching the desired false alarm rate.
机译:我们提出了一种新颖的Neyman-Pearson(NP)分类算法,该算法实现了最大检测率,同时保持围绕用户指定的阈值的误报率。该方法通过通过随机傅里叶特征将观察转换为高维空间,在线框架中的数据处理与非线性建模能力的数据。在此转换之后,我们使用依次学习的参数的线性分类器。我们强调我们的算法是文献中的第一个在线Neyman-Pearson分类器,适用于线性和非线性可分离的数据集。在我们的实验中,我们研究了我们识别众所周知的数据集的算法的性能,并观察到所提出的在线算法成功地学习非线性类别分离(通过表现出线性模型),同时匹配所需的误报率。

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