Purpose: When a learner fails to reach a milestone, educators often wonder if there had been any warning signs that could have allowed them to intervene sooner. Machine learning can predict which students are at risk of failing a high-stakes certification exam. If predictions can be made well in advance of the exam, then educators can meaningfully intervene before students take the exam to reduce the chances of a failing score. Methods: Using already-collected, first-year student assessment data from five cohorts in a Master of Physician Assistant Studies program, the authors implement an "adaptive minimum match" version of the k-nearest neighbors algorithm (AMMKNN), using changing numbers of neighbors to predict each student's future exam scores on the Physician Assistant National Certifying Examination (PANCE). Validation occurred in two ways: Leave-one-out cross-validation (LOOCV) and evaluating the predictions in a new cohort. Results: AMMKNN achieved an accuracy of 93% in LOOCV. AMMKNN generates a predicted PANCE score for each student, one year before they are scheduled to take the exam. Students can then be classified into extra support, optional extra support, or no extra support groups. The educator then has one year to provide the appropriate customized support to each category of student. Conclusions: Predictive analytics can identify at-risk students, so they can receive additional support or remediation when preparing for high-stakes certification exams. Educators can use the included methods and code to generate predicted test outcomes for students. The authors recommend that educators use this or similar predictive methods responsibly and transparently, as one of many tools used to support students.
翻译:目的 : 当学习者未能达到一个里程碑时, 教育者通常会怀疑是否有任何警告迹象可以让他们更快地干预。 机器学习可以预测哪些学生有可能在考试之前没有参加高考考试。 如果在考试之前提前进行预测, 那么教育者可以在学生参加考试之前进行有意义的干预, 以减少得分的机会。 方法 : 使用物理助理研究硕士课程中五个组群已经收集的第一年学生评估数据, 作者们会使用“ 最接近邻居算法 ” ( AMMKNN) 的“ 适应性最低匹配 ” 版本, 使用变化的邻居数来预测每个学生未来的考试分数。 校友们通过两种方式进行校友验证: 留一出交叉校考( LOCV), 评估新组的预测结果。 结果: AMKNN 获得了93% 的准确性支持 。 AMKNNN会为每个学生提供预测性PNES评分, 在他们预定的一年前, 用于预测每个学生未来考试成绩评分数。 。 学生们可以使用一个选择性测试方法 。 。, 提供适当的评分 。