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首页> 外文期刊>Intelligence: A Multidisciplinary Journal >Identifying Effortful Individuals With Mixture Modeling Response Accuracy and Response Time Simultaneously to Improve Item Parameter Estimation
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Identifying Effortful Individuals With Mixture Modeling Response Accuracy and Response Time Simultaneously to Improve Item Parameter Estimation

机译:以混合建模的响应精度和响应时间同时识别精力的个人以改善项目参数估计

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摘要

The responses of non-effortful test-takers may have serious consequences as non-effortful responses can impair model calibration and latent trait inferences. This article introduces a mixture model, using both response accuracy and response time information, to help differentiating non-effortful and effortful individuals, and to improve item parameter estimation based on the effortful group. Two mixture approaches are compared with the traditional response time mixture model (TMM) method and the normative threshold 10 (NT10) method with response behavior effort criteria in four simulation scenarios with regard to item parameter recovery and classification accuracy. The results demonstrate that the mixture methods and the TMM method can reduce the bias of item parameter estimates caused by non-effortful individuals, with the mixture methods showing more advantages when the non-effort severity is high or the response times are not lognormally distributed. An illustrative example is also provided.
机译:非努力测试者的答复可能具有严重后果,因为非努力的反应可能损害模型校准和潜在特征的推论。本文介绍了一种混合模型,使用响应准确性和响应时间信息,帮助区分非努力和精力的人员,并根据需要的群体改进项目参数估计。将两种混合方法与传统的响应时间混合模型(TMM)方法和规范阈值10(NT10)方法进行比较,具有在四种仿真方案中的响应行为努力标准,关于项目参数恢复和分类准确性。结果表明,混合物方法和TMM方法可以减少由非努力的个体引起的项目参数估计的偏差,当非努力严重程度高或响应时间没有逻辑分布时,混合方法显示更多优点。还提供了说明性示例。

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