autoRasch:一个R包来做半自动的Rasch分析。

IF 1 4区 心理学 Q4 PSYCHOLOGY, MATHEMATICAL Applied Psychological Measurement Pub Date : 2023-01-01 Epub Date: 2022-10-10 DOI:10.1177/01466216221125178
Feri Wijayanto, Ioan Gabriel Bucur, Perry Groot, Tom Heskes
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引用次数: 1

摘要

R包autoRasch已经被开发出来以一种(半)自动化的方式执行Rasch分析。分析的自动化部分是通过优化所谓的问卷内加外对数似然(IPOQ-LL)或包含差异项目功能(DIF)的IPOQ-LL-DIF来实现的。这些标准根据最终工具中包含的项目来衡量预先收集的调查的匹配质量。为了计算这些准则,autoRasch使用惩罚联合最大似然估计(PJMLE)拟合广义部分信用模型(GPCM)或带微分项目函数的广义部分信用模型(GPCM- dif)。该软件包进一步允许用户重新评估自动化方法的输出,并将其用作执行手动Rasch分析的基础,并提供Rasch分析的标准统计数据(例如,装备,infit,人员分离可靠性和残差相关性),以支持模型重新评估。
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autoRasch: An R Package to Do Semi-Automated Rasch Analysis.

The R package autoRasch has been developed to perform a Rasch analysis in a (semi-)automated way. The automated part of the analysis is achieved by optimizing the so-called in-plus-out-of-questionnaire log-likelihood (IPOQ-LL) or IPOQ-LL-DIF when differential item functioning (DIF) is included. These criteria measure the quality of fit on a pre-collected survey, depending on which items are included in the final instrument. To compute these criteria, autoRasch fits the generalized partial credit model (GPCM) or the generalized partial credit model with differential item functioning (GPCM-DIF) using penalized joint maximum likelihood estimation (PJMLE). The package further allows the user to reevaluate the output of the automated method and use it as a basis for performing a manual Rasch analysis and provides standard statistics of Rasch analyses (e.g., outfit, infit, person separation reliability, and residual correlation) to support the model reevaluation.

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来源期刊
CiteScore
2.30
自引率
8.30%
发文量
50
期刊介绍: Applied Psychological Measurement publishes empirical research on the application of techniques of psychological measurement to substantive problems in all areas of psychology and related disciplines.
期刊最新文献
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