基于模型的分类精度和一致性指标的汇总区间。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Oscar Gonzalez
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引用次数: 1

摘要

当使用分数对应答者做出决策时,估计分类准确性(CA)、做出正确决策的概率和分类一致性(CC)是很有意义的,分类一致性是在两个平行的度量管理中做出相同决策的概率。近年来,人们提出了基于模型的CA和CC估计方法,但CA和CC指标的参数不确定性尚未得到研究。本文演示了如何估计CA和CC指数的百分位自举置信区间和贝叶斯可信区间,它们具有将线性因子模型参数的抽样可变性纳入汇总区间的额外好处。一项小型模拟研究的结果表明,虽然显示出小的负偏差,但百分位数自举置信区间具有适当的置信区间覆盖。然而,具有扩散先验的贝叶斯可信区间具有较差的区间覆盖率,但一旦使用经验的、弱信息的先验,它们的覆盖率就会提高。通过估计CA和CC指数来说明这些程序,这些指数来自一种用于识别低正念个体的假设干预措施,并提供R代码以促进程序的实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Summary Intervals for Model-Based Classification Accuracy and Consistency Indices.

Summary Intervals for Model-Based Classification Accuracy and Consistency Indices.

Summary Intervals for Model-Based Classification Accuracy and Consistency Indices.

Summary Intervals for Model-Based Classification Accuracy and Consistency Indices.

When scores are used to make decisions about respondents, it is of interest to estimate classification accuracy (CA), the probability of making a correct decision, and classification consistency (CC), the probability of making the same decision across two parallel administrations of the measure. Model-based estimates of CA and CC computed from the linear factor model have been recently proposed, but parameter uncertainty of the CA and CC indices has not been investigated. This article demonstrates how to estimate percentile bootstrap confidence intervals and Bayesian credible intervals for CA and CC indices, which have the added benefit of incorporating the sampling variability of the parameters of the linear factor model to summary intervals. Results from a small simulation study suggest that percentile bootstrap confidence intervals have appropriate confidence interval coverage, although displaying a small negative bias. However, Bayesian credible intervals with diffused priors have poor interval coverage, but their coverage improves once empirical, weakly informative priors are used. The procedures are illustrated by estimating CA and CC indices from a measure used to identify individuals low on mindfulness for a hypothetical intervention, and R code is provided to facilitate the implementation of the procedures.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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