针对终端用户的有效判别分析(分类器)措施

E. Eiland, L. Liebrock
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引用次数: 0

摘要

许多问题领域利用判别分析,例如分类、预测和诊断,通过应用人工智能和机器学习。然而,结果很少是完美的,错误可能会造成重大损失。因此,当最终用户获得与其需求相关的性能信息时,他们将得到最好的服务。从最基本的问题开始,本研究考虑了文献中常见的8个汇总统计数据,并评估了它们的最终用户功效。结果导致最终用户有效的汇总统计所必需的建议标准。测试相同的8个汇总统计数据显示,没有一个满足所有标准。因此,引入了两个符合标准的汇总统计信息。为了显示最终用户如何受益,度量效用在两个问题上得到了演示。这项研究的一个关键发现是,研究人员可以使他们的测试结果与最终用户更相关,在他们的分析和演示中进行微小的改变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficacious Discriminant Analysis (Classifier) Measures for End Users
Many problem domains utilize discriminant analysis, for example, classification, prediction, and diagnoses, by applying artificial intelligence and machine learning. However, the results are rarely perfect and errors can cause significant losses. Hence, end users are best served when they have performance information relevant to their need. Starting with the most basic questions, this study considers eight summary statistics often seen in the literature and evaluates their end user efficacy. Results lead to proposed criteria necessary for end user efficacious summary statistics. Testing the same eight summary statistics shows that none satisfy all of the criteria. Hence, two criteria-compliant summary statistics are introduced. To show how end users can benefit, measure utility is demonstrated on two problems. A key finding of this study is that researchers can make their test outcomes more relevant to end users with minor changes in their analyses and presentation.
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