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Detecting Examinees With Item Preknowledge in Large-Scale Testing Using Extreme Gradient Boosting (XGBoost)

机译:使用极端梯度提升(XGBoost)在大规模测试中检测使用物品预知的考生

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摘要

Researchers frequently use machine-learning methods in many fields. In the area of detecting fraud in testing, there have been relatively few studies that have used these methods to identify potential testing fraud. In this study, a technical review of a recently developed state-of-the-art algorithm, Extreme Gradient Boosting (XGBoost), is provided and the utility of XGBoost in detecting examinees with potential item preknowledge is investigated using a real data set that includes examinees who engaged in fraudulent testing behavior, such as illegally obtaining live test content before the exam. Four different XGBoost models were trained using different sets of input features based on (a) only dichotomous item responses, (b) only nominal item responses, (c) both dichotomous item responses and response times, and (d) both nominal item responses and response times. The predictive performance of each model was evaluated using the area under the receiving operating characteristic curve and several classification measures such as the false-positive rate, true-positive rate, and precision. For comparison purposes, the results from two person-fit statistics on the same data set were also provided. The results indicated that XGBoost successfully classified the honest test takers and fraudulent test takers with item preknowledge. Particularly, the classification performance of XGBoost was reasonably good when the response time information and item responses were both taken into account.
机译:研究人员经常在许多领域使用机器学习方法。在检测到测试中的欺诈领域,已经相对较少地使用这些方法来识别潜在的测试欺诈。在这项研究中,提供了最近开发的最先进的算法,极端梯度升压(XGBoost)的技术审查,并使用包括的真实数据集进行研究和潜在物品的检测检测考试的实用性从事欺诈性测试行为的考生,例如非法在考试前获得实时测试内容。使用基于(a)的不同的输入特征(a)仅基于二分项目响应,(b)仅名称项目响应,(c)二分项响应和响应时间,以及(d)标称物品响应和(d)两个标称物品响应和响应时间。使用接收操作特性曲线下的区域和诸如假阳性率,真正阳性率和精度的若干分类测量来评估每个模型的预测性能。出于比较目的,还提供了同一数据集的两个人拟合统计数据的结果。结果表明,XGBoost成功地分类了诚实的考试者和欺诈性测试者与物品预知。特别是,当考虑到响应时间信息和项目响应时,XGBoost的分类性能合理良好。

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