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Comparison of Machine Learning Methods for Multi-label Classification of Nursing Education and Licensure Exam Questions

机译:多标签调查和许可考试中多标签分类的机器学习方法的比较

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In this paper, we evaluate several machine learning methods for multi-label classification of text questions. Every nursing student in the United States must pass the National Council Licensure Examination (NCLEX) to begin professional practice. NCLEX defines a number of competencies on which students are evaluated. By labeling test questions with NCLEX competencies, we can score students according to their performance in each competency. This information helps instructors measure how prepared students are for the NCLEX, as well as which competencies they may need help with. A key challenge is that questions may be related to more than one competency. Labeling questions with NCLEX competencies, therefore, equates to a multi-label, text classification problem where each competency is a label. Here we present an evaluation of several methods to support this use case along with a proposed approach. While our work is grounded in the nursing education domain, the methods described here can be used for any multi-label, text classification use case.
机译:在本文中,我们评估了多个机器学习方法,了解文本问题的多标签分类。美国的每个护理学生必须通过全国委员会执照考试(NCLEX)开始专业的实践。 Nclex定义了评估学生的许多能力。通过用NCLEX能力标记测试问题,我们可以根据每个能力的表现评分学生。这些信息有助于教师衡量准备的学生是如何为NCLEX的方式,以及他们可能需要帮助的竞争力。关键挑战是,问题可能与一个以上的能力有关。因此,使用NCLEX能力标记问题,因此,相当于多标签,文本分类问题,其中每个能力是标签。在这里,我们展示了几种方法来支持这种用例以及提出的方法。虽然我们的工作在护理教育领域接地,但这里描述的方法可用于任何多标签,文本分类用例。

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