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首页> 外文期刊>Journal of Modern Applied Statistical Methods >Estimating the Accuracy of Automated Classification Systems Using Only Expert Ratings that are Less Accurate than the System
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Estimating the Accuracy of Automated Classification Systems Using Only Expert Ratings that are Less Accurate than the System

机译:仅使用比系统更少准确的专家评级估算自动分类系统的准确性

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摘要

A method is presented to estimate the accuracy of an automated classification system based only on expert ratings on test cases, where the system may be substantially more accurate than the raters. In this method an estimate of overall rater accuracy is derived from the level of inter-rater agreement, Bayesian updating based on estimated rater accuracy is applied to estimate a ground truth probability for each classification on each test case, and then overall system accuracy is estimated by comparing the relative frequency that the system agrees with the most probable classification at different probability levels. A simulation analysis provides evidence that the method yields reasonable estimates of system accuracy under diverse and predictable conditions.
机译:提出了一种方法来估计仅基于测试用例的专家评级的自动分类系统的准确性,其中系统可以比评级者更准确。在这种方法中,估计总体评估准确性的估算来自于税率协议的水平,基于估计的评估准确度的贝叶斯更新用于估算每个测试用例的每个分类的基础事实概率,然后估计整体系统准确度通过比较系统在不同概率水平上与最可能分类一致的相对频率。仿真分析提供了证据表明该方法在不同可预测的条件下产生了对系统精度的合理估计。

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