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Measurement protocols, random-variable-valued measurements, and response process error: Estimation and inference when sample data are not deterministic

机译:测量协议,随机变量值测量和响应过程错误:估计和推断样本数据不是确定性的

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Random-variable-valued measurements (RVVMs) are proposed as a new framework for treating measurement processes that generate non-deterministic sample data. They operate by assigning a probability measure to each observed sample instantiation of a global measurement process for some particular random quantity of interest, thus allowing for the explicit quantification of response process error . Common methodologies to date treat only measurement processes that generate fixed values for each sample unit, thus generating full (though possibly inaccurate) information on the random quantity of interest. However, many applied research situations in the non-experimental sciences naturally contain response process error, e.g. when psychologists assess patient agreement with various diagnostic survey items or when conservation biologists perform formal assessments to classify species-at-risk. Ignoring the sample-unit-level uncertainty of response process error in such measurement processes can greatly compromise the quality of resulting inferences. In this paper, a general theory of RVVMs is proposed to handle response process error, and several applications are considered.
机译:提出随机变量值测量(RVVM)作为处理生成非确定性样本数据的测量过程的新框架。它们通过将概率测量分配给全局测量过程的每个观察到的全局测量过程的概率测量来操作,从而允许显式量化响应过程错误。迄今为止的常见方法仅处理为每个样本单元生成固定值的测量过程,从而生成关于随机兴趣量的完整(虽然可能不准确)的信息。然而,非实验科学的许多应用研究情况自然包含响应过程误差,例如,当心理学家评估与各种诊断调查项目的患者协议或保护生物学家进行正式评估以分类物种风险。在这种测量过程中忽略响应过程误差的样本单元级不确定性可以大大损害所产生的推论的质量。在本文中,提出了一种rvvm的一般理论来处理响应过程错误,并且考虑了几个应用程序。

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