We propose a universal classifier for binary Neyman-Pearson classification where null distribution is known while only a training sequence is available for the alternative distribution. The proposed classifier interpolates between Hoeffding's classifier and the likelihood ratio test and attains the same error probability prefactor as the likelihood ratio test, i.e., the same prefactor as if both distributions were known. In addition, like Hoeffding's universal hypothesis test, the proposed classifier is shown to attain the optimal error exponent tradeoff attained by the likelihood ratio test whenever the ratio of training to observation samples exceeds a certain value. We propose a lower bound and an upper bound to the training to observation ratio. In addition, we propose a sequential classifier that attains the optimal error exponent tradeoff.
翻译:我们建议为二进制 Neyman-Pearson 分类建立一个通用分类系统,该分类系统为已知的无效分布,而该分类系统只有可供替代分布的培训序列。拟议分类系统在Hoffding 的分类器和概率比率测试之间进行插划,并获得与概率比率测试相同的错误概率前因因素,即与两种分布都已知的相同前因因素。此外,与Hoffding 的通用假设测试一样,该拟议分类系统显示,在培训与观察样本的比例超过一定值时,该分类系统将实现最佳误差的乘法取舍。我们提出了较低约束值和高于培训与观察比率的上限。此外,我们提议了一个序列分类系统,该分类系统将达到最佳误差前因偏差。