基于贝叶斯网络和逻辑回归的性能下降检测器

Rui Zhang, Xiaojuan Zhang, Zhihua Zhang, S. Xie, Zu-Yuan Wang, Tiangang Wu
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引用次数: 0

摘要

本文利用贝叶斯网络设计了性能下降检测器,用于形成性评价。评估项目的难易度和鉴别度通过逻辑回归确定,以提高检测器的性能。以评价项目为节点,利用贝叶斯网络预测学生的评价结果。根据每条路径的节点属性计算学生失败的概率,设置阈值概率为0.9,以提高预测的准确性。预测的准确率和召回率取决于网络的层数、评估项目的难易程度和识别度。在我们的样本中,预测的精度可以高达0.94(召回率0.30)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Drop Detector Based on Bayesian Network and Logistic Regression
In this paper, performance drop detector is designed for formative assessment using Bayesian network. Assessment items' difficulty and discrimination are determined by logistic regression to improve detector's performance. Students' result on assessment are predicted by Bayesian network with assessment items as nodes. The probability that the student may fail is calculated based on the properties of nodes for each path, the threshold probability is set as 0.9 to improve the accarucy for the prediction. The precision and recall of the prediction depends on number of layers of the network, the assessment item's difficulty and discrimination. With our sample, the precision of the prediction can be as high as 0.94 (recall 0.30).
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