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Modelling Class Noise with Symmetric and Asymmetric Distributions

机译:用对称和非对称分布建模级噪声

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In classification problem, we assume that the samples around the class boundary are more likely to be incorrectly annotated than others, and propose boundary-conditional class noise (BCN). Based on the BCN assumption, we use unnormalized Gaussian and Laplace distributions to directly model how class noise is generated, in symmetric and asymmetric cases. In addition, we demonstrate that Logistic regression and Probit regression can also be reinterpreted from this class noise perspective, and compare them with the proposed models. The empirical study shows that, the proposed asymmetric models overall outperform the benchmark linear models, and the asymmetric Laplace-noise model achieves the best performance among all.
机译:在分类问题中,我们假设类边界周围的样本比其他人更有可能被错误地注释,并提出边界条件类噪声(BCN)。基于BCN假设,我们使用非正规化的高斯和拉普拉斯分布来直接模拟在对称和不对称情况下如何生成类噪声。此外,我们证明还可以从此类噪声透视中重新诠释逻辑回归和探测回归,并将它们与所提出的模型进行比较。实证研究表明,所提出的不对称模型总体优于基准线性模型,而非对称的LAPLACE噪声模型可以实现最佳性能。

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