A Signal Detection Model for Multiple-Choice Exams.

IF 1 4区 心理学 Q4 PSYCHOLOGY, MATHEMATICAL Applied Psychological Measurement Pub Date : 2021-09-01 Epub Date: 2021-05-25 DOI:10.1177/01466216211014599
Lawrence T DeCarlo
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引用次数: 6

Abstract

A model for multiple-choice exams is developed from a signal-detection perspective. A correct alternative in a multiple-choice exam can be viewed as being a signal embedded in noise (incorrect alternatives). Examinees are assumed to have perceptions of the plausibility of each alternative, and the decision process is to choose the most plausible alternative. It is also assumed that each examinee either knows or does not know each item. These assumptions together lead to a signal detection choice model for multiple-choice exams. The model can be viewed, statistically, as a mixture extension, with random mixing, of the traditional choice model, or similarly, as a grade-of-membership extension. A version of the model with extreme value distributions is developed, in which case the model simplifies to a mixture multinomial logit model with random mixing. The approach is shown to offer measures of item discrimination and difficulty, along with information about the relative plausibility of each of the alternatives. The model, parameters, and measures derived from the parameters are compared to those obtained with several commonly used item response theory models. An application of the model to an educational data set is presented.

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多项选择题考试的信号检测模型。
从信号检测的角度开发了一个多选题考试模型。多项选择题中的正确选项可以看作是嵌入在噪声(错误选项)中的信号。考生被假定对每个选项的可行性都有感知,而决策过程就是选择最合理的选项。还假定每个考生知道或不知道每个题目。这些假设一起导致了多项选择考试的信号检测选择模型。从统计学上讲,该模型可以看作是传统选择模型的混合扩展,具有随机混合,或者类似地,作为隶属度扩展。建立了具有极值分布的模型,将模型简化为具有随机混合的混合多项式模型。该方法提供了项目区分和难度的测量方法,以及关于每个选择的相对合理性的信息。将模型、参数和由参数推导出的测量值与几种常用的项目反应理论模型进行了比较。给出了该模型在一个教育数据集上的应用。
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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
An Information Manifold Perspective for Analyzing Test Data. A Generalized Multi-Detector Combination Approach for Differential Item Functioning Detection. Effect of Differential Item Functioning on Computer Adaptive Testing Under Different Conditions. Evaluating the Construct Validity of Instructional Manipulation Checks as Measures of Careless Responding to Surveys. A Mark-Recapture Approach to Estimating Item Pool Compromise.
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