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F-Measure Curves for Visualizing Classifier Performance with Imbalanced Data

机译:F量度曲线,用于通过不平衡数据可视化分类器性能

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Training classifiers using imbalanced data is a challenging problem in many real-world recognition applications due in part to the bias in performance that occur for: (1) classifiers that are often optimized and compared using unsuitable performance measurements for imbalance problems; (2) classifiers that are trained and tested on a fixed imbalance level of data, which may differ from operational scenarios; (3) cases where the preference of correct classification of classes is application dependent. Specialized performance evaluation metrics and tools are needed for problems that involve class imbalance, including scalar metrics that assume a given operating condition (skew level and relative preference of classes), and global evaluation curves or metrics that consider a range of operating conditions. We propose a global evaluation space for the scalar F-measure metric that is analogous to the cost curves for expected cost. In this space, a classifier is represented as a curve that shows its performance over all of its decision thresholds and a range of imbalance levels for the desired preference of true positive rate to precision. Experiments with synthetic data show the benefits of evaluating and comparing classifiers under different operating conditions in the proposed F-measure space over ROC, precision-recall, and cost spaces.
机译:在许多现实世界的识别应用中,使用不平衡数据训练分类器是一个具有挑战性的问题,部分原因是:(1)分类器经常被优化,并使用不合适的性能度量来比较不平衡问题; (2)在固定的不平衡数据水平上进行训练和测试的分类器,该水平可能与操作场景不同; (3)正确分类的偏好取决于应用程序的情况。对于涉及类不平衡的问题,需要专门的性能评估指标和工具,包括假定给定操作条件(标度水平和类的相对偏好)的标量指标,以及考虑一系列操作条件的全局评估曲线或指标。我们为标量F度量指标建议一个全局评估空间,该空间类似于预期成本的成本曲线。在这个空间中,分类器被表示为一条曲线,该曲线显示了其在所有决策阈值上的性能以及不平衡水平范围,以实现对准确率的期望。使用合成数据进行的实验表明,在建议的F度量空间,ROC,精确召回率和成本空间中,在不同操作条件下评估和比较分类器的好处。

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