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Designing Out-of-distribution Data Detection using Anomaly Detectors: Single Model vs. Ensemble

机译:使用异常检测器设计失配数据检测:单个模型与集合

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Image classification neural networks tend to give high probabilities to images they in fact do not recognize. This paper compares three approaches to detect such out-of-distribution data: One-Class Support Vector Machine, Isolation Forest and Local Outlier Factor. The experiments show that Isolation Forest outperforms the other two approaches. However, when combining the three algorithms using a majority voter, the results show that this ensemble is better at detecting out-of-distribution data than using the Isolation Forest algorithm solely.
机译:图像分类神经网络倾向于赋予它们实际上无法识别的图像高概率。本文比较了三种检测此类失配数据的方法:一类支持向量机,孤立森林和局部离群值因子。实验表明,隔离林的性能优于其他两种方法。但是,当使用多数投票者组合这三种算法时,结果表明,与仅使用隔离林算法相比,这种集成方法在检测分布失调数据方面更好。

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