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Influence of Domain and Model Properties on the Reliability Estimates' Performance

机译:域和模型属性对可靠性估计性能的影响

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摘要

In machine learning, the reliability estimates for individual predictions provide more information about individual prediction error than the average accuracy of predictive model (e.g. relative mean squared error). Such reliability estimates may represent decisive information in the risk-sensitive applications of machine learning (e.g. medicine, engineering, and business), where they enable the users to distinguish between more and less reliable predictions. In the authors'previous work they proposed eight reliability estimates for indi-vidual examples in regression and evaluated their performance. The results showed that the performance of each estimate strongly varies depending on the domain and regression model properties. In this paper they empirically analyze the dependence of reliability estimates 'performance on the data set and model properties. They present the results which show that the reliability estimates perform better when used with more accurate regression models, in domains with greater number of examples and in domains with less noisy data.
机译:在机器学习中,与预测模型的平均准确度(例如相对均方误差)相比,单个预测的可靠性估计提供了有关单个预测误差的更多信息。在机器学习(例如医学,工程和商业)的风险敏感型应用程序中,此类可靠性估计值可能代表着决定性信息,使用户能够区分可靠性更高或更低的预测。在作者先前的工作中,他们为回归中的各个示例提出了八种可靠性估计,并评估了它们的性能。结果表明,每个估计的性能都取决于域和回归模型的属性而有很大差异。在本文中,他们根据经验分析了可靠性估计的性能对数据集和模型属性的依赖性。他们提出的结果表明,在更准确的回归模型中,示例数量较多的区域和噪声数据较少的区域中,可靠性估计的性能更好。

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