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Properties and Benefits of Calibrated Classifiers

机译:校准分类器的特性和优点

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摘要

A calibrated classifier provides reliable estimates of the true probability that each test sample is a member of the class of interest. This is crucial in decision making tasks. Procedures for calibration have already been studied in weather forecasting, game theory, and more recently in machine learning, with the latter showing empirically that calibration of classifiers helps not only in decision making, but also improves classification accuracy. In this paper we extend the theoretical foundation of these empirical observations. We prove that (1) a well calibrated classifier provides bounds on the Bayes error (2) calibrating a classifier is guaranteed not to decrease classification accuracy, and (3) the procedure of calibration provides the threshold or thresholds on the decision rule that minimize the classification error. We also draw the parallels and differences between methods that use receiver operating characteristic (ROC) curves and calibration based procedures that are aimed at finding a threshold of minimum error. In particular, calibration leads to improved performance when multiple thresholds exist.
机译:校准的分类器可以可靠地估计每个测试样本是目标类别成员的真实概率。这对于决策任务至关重要。校准程序已经在天气预报,博弈论以及机器学习中得到了研究,后者在经验上表明分类器的校准不仅有助于决策,而且还可以提高分类准确性。在本文中,我们扩展了这些经验观察的理论基础。我们证明(1)校准良好的分类器可提供贝叶斯误差的界限(2)校准分类器可确保不会降低分类准确性,并且(3)校准过程会在决策规则中提供一个或多个阈值,以最小化分类错误。我们还绘制了使用接收器工作特性(ROC)曲线的方法与旨在发现最小误差阈值的基于校准的程序之间的相似之处和不同之处。特别是,当存在多个阈值时,校准可提高性能。

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