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Using Signal Processing Diagnostics to Improve Public Sector Evaluations

机译:使用信号处理诊断来改进公共部门评估

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Abstract False positive test results that overstate intervention impacts can distort and constrain the capability to learn and adapt in governance, and are therefore best avoided. This article considers the benefits of using the Bayesian techniques used in signal processing and machine learning to identify cases of these false positive test results in public sector evaluations. These approaches are increasingly used in medical diagnosis?¢????a context in which (like public policy) avoiding false positive and false negative test results in the evidence base is very important. The findings from a UK National Audit Office review of evaluation quality are used to illustrate how a Bayesian diagnostic framework for use in public sector evaluations could be developed.
机译:摘要高估干预影响的虚假阳性测试结果可能会扭曲和限制学习和适应治理的能力,因此最好避免。本文考虑了在信号处理和机器学习中使用贝叶斯技术在公共部门评估中识别这些假阳性测试结果的案例的好处。这些方法越来越多地用于医学诊断中-在这样的背景下(如公共政策),在证据基础中避免假阳性和假阴性的检测结果非常重要。英国国家审计署对评估质量的审查得出的结果用于说明如何开发用于公共部门评估的贝叶斯诊断框架。

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