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A Class of Single-Class Minimax Probability Machines for Novelty Detection

机译:一类用于新颖性检测的单类Minimax概率机器

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摘要

Single-class minimax probability machines (MPMs) offer robust novelty detection with distribution-free worst case bounds on the probability that a pattern will fall inside the normal region. However, in practice, they are too cautious in labeling patterns as outlying and so have a high false negative rate (FNR). In this paper, we propose a more aggressive version of the single-class MPM that bounds the best case probability that a pattern will fall inside the normal region. These two MPMs can then be used together to delimit the solution space. By using the hyperplane lying in the middle of this pair of MPMs, a better compromise between false positives (FPs) and false negatives (FNs), and between recall and precision can be obtained. Experiments on the real-world data sets show encouraging results
机译:单类minimax概率机器(MPM)提供了健壮的新颖性检测功能,并且在模式落入正常区域内的概率上不受分配的最坏情况限制。但是,在实践中,它们在标记模式上过于谨慎,以至于偏误,因此假阴性率(FNR)高。在本文中,我们提出了一种更具侵略性的单类MPM,它将模式落入正常区域内的最佳情况概率限制了。然后可以将这两个MPM一起使用来界定解决方案空间。通过使用位于这对MPM中间的超平面,可以在误报(FP)和误报(FN)之间以及召回率和精度之间取得更好的折衷。真实数据集上的实验显示出令人鼓舞的结果

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