首页> 外文会议>Pattern Recognition, 2006. ICPR 2006 >Precision-recall operating characteristic (P-ROC) curves in imprecise environments
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Precision-recall operating characteristic (P-ROC) curves in imprecise environments

机译:不精确环境中的精确召回操作特性(P-ROC)曲线

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Traditionally, machine learning algorithms have been evaluated in applications where assumptions can be reliably made about class priors and/or misclassification costs. In this paper, we consider the case of imprecise environments, where little may be known about these factors and they may well vary significantly when the system is applied. Specifically, the use of precision-recall analysis is investigated and compared to the more well known performance measures such as error-rate and the receiver operating characteristic (ROC). We argue that while ROC analysis is invariant to variations in class priors, this invariance in fact hides an important factor of the evaluation in imprecise environments. Therefore, we develop a generalised precision-recall analysis methodology in which variation due to prior class probabilities is incorporated into a multi-way analysis of variance (ANOVA). The increased sensitivity and reliability of this approach is demonstrated in a remote sensing application
机译:传统上,机器学习算法已在可以可靠地做出关于类别先验和/或错误分类成本的假设的应用中进行了评估。在本文中,我们考虑了不精确环境的情况,其中对这些因素了解甚少,并且在应用系统时,它们可能会有很大差异。具体来说,对精确召回分析的使用进行了调查,并将其与更广为人知的性能指标(例如错误率和接收机工作特性(ROC))进行了比较。我们认为,尽管ROC分析对于班级先验的变化是不变的,但这种不变性实际上隐藏了在不精确环境中进行评估的重要因素。因此,我们开发了一种广义的精确召回分析方法,其中将由于先验类概率引起的变异纳入了方差的多方分析(ANOVA)中。在遥感应用中证明了这种方法的更高的灵敏度和可靠性。

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