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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Performance visualization spaces for classification with rejection option
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Performance visualization spaces for classification with rejection option

机译:拒绝选项分类的性能可视化空间

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The classification with reject option consists to train a classifier that rejects the examples when the confidence in its prediction is low. The objective is to improve the accuracy of the non-rejected examples and the reliability of the prediction. The performances of the reject classifiers depend on both the error rate and rejection rate. Since these two values are in opposition, we have to make a trade-off between them. This paper is focused on the visualization spaces the performances of the classifiers with rejection option. We analyze two common spaces, the ROC space and the error-rejection (ER) space, then we propose a new space: the cost-reject (CR) space. We show that the ROC space is the less convenient space to represent the performances of the reject classifier. However, it can be recommended for classification problems where the importance of the two classes is different. For the ER space, we point out that the linear interpolation that is commonly used to draw the error-reject curve is not correct and leads to an overestimation of the classifier performances. From the definition of the condition error and rejection rate, we propose a new interpolation of the error-rejection curve that is unbiased. We introduce a new visualization space called the cost reject space. The CR space plots the normalized classification cost in function on the normalized rejection cost. The performance of a classifier is represented in this space by a line. The three visualization spaces are compared on problems of classification algorithms comparison. The advantages and drawbacks of each spaces are discussed and some recommendations are provided in the conclusion. (C) 2019 Elsevier Ltd. All rights reserved.
机译:拒绝选项的分类包括训练当其预测的置信度低时拒绝示例的分类器。目的是提高非拒绝示例的准确性和预测的可靠性。拒绝分类器的性能取决于错误率和拒绝率。由于这两个值符合反对,因此我们必须在它们之间进行权衡。本文专注于可视化空间与拒绝选项的分类器的性能。我们分析了两个常见的空间,ROC空间和纠错(ER)空间,然后我们提出了一个新的空间:成本拒绝(CR)空间。我们表明ROC空间是表示拒绝分类器的性能的便捷空间。但是,可以推荐用于分类问题的分类问题,其中两个类的重要性是不同的。对于ER空间,我们指出通常用于绘制误差曲线的线性插值是不正确的并且导致分类器性能的高估。根据条件误差和拒绝率的定义,我们提出了一个新的插值,其纠错曲线是无偏的。我们介绍了一个称为成本拒绝空间的新可视化空间。 CR空间在规范化抑制成本上绘制了正常化的分类成本。分类器的性能在此空间中由一行表示。将三个可视化空间进行比较分类算法比较问题。讨论了每个空间的优点和缺点,结论中提供了一些建议。 (c)2019年elestvier有限公司保留所有权利。

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