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A Monte Carlo–Based Bayesian Approach for Measuring Agreement in aQualitative Scale

机译:基于蒙特卡洛方法的贝叶斯方法来测量定性量表

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摘要

Agreement analysis has been an active research area whose techniques have been widely applied in psychology and other fields. However, statistical agreement among raters has been mainly considered from a classical statistics point of view. Bayesian methodology is a viable alternative that allows the inclusion of subjective initial information coming from expert opinions, personal judgments, or historical data. A Bayesian approach is proposed by providing a unified Monte Carlo–based framework to estimate all types of measures of agreement in a qualitative scale of response. The approach is conceptually simple and it has a low computational cost. Both informative and non-informative scenarios are considered. In case no initial information is available, the results are in line with the classical methodology, but providing more information on the measures of agreement. For the informative case, some guidelines are presented to elicitate the prior distribution. The approach has been applied to two applications related to schizophrenia diagnosis and sensory analysis.
机译:协议分析一直是活跃的研究领域,其技术已广泛应用于心理学和其他领域。但是,主要是从经典统计的角度来考虑评估者之间的统计一致性。贝叶斯方法是一种可行的替代方法,它允许包含来自专家意见,个人判断或历史数据的主观初始信息。通过提供一个基于蒙特卡洛的统一框架来提出贝叶斯方法,以在响应的定性范围内估算所有类型的协议度量。该方法在概念上很简单,并且计算成本较低。信息性和非信息性方案均被考虑。如果没有初始信息可用,则结果与经典方法一致,但会提供更多有关协议措施的信息。对于资料丰富的情况,提出了一些指导方针以引起事前分配。该方法已应用于与精神分裂症诊断和感觉分析有关的两个应用程序。

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