学生选择退出对教育预测模型的影响

Warren Li, Christopher A. Brooks, F. Schaub
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引用次数: 6

摘要

隐私问题可能会导致人们选择加入或退出他们的教育数据被收集。这些决定可能会影响教育预测模型的性能。为了理解这一点,我们进行了一项调查,以确定学生为了训练预测模型而拒绝或允许访问他们的数据的倾向。我们通过在一定范围内随机抽取数据样本来模拟选择退出对教育预测模型准确性的影响,然后使用调查结果将我们的发现置于背景中。我们发现,年级预测模型相当稳健,kappa分数不会下降,除非有显著的选择退出,但当有,恶化的表现不成比例地影响某些亚群。
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The Impact of Student Opt-Out on Educational Predictive Models
Privacy concerns may lead people to opt-in or opt-out of having their educational data collected. These decisions may impact the performance of educational predictive models. To understand this, we conducted a survey to determine the propensity of students to withhold or grant access to their data for the purposes of training predictive models. We simulated the effects of opt-out on the accuracy of educational predictive models by dropping a random sample of data over a range of increments, and then contextualize our findings using the survey results. We find that grade predictive models are fairly robust and that kappa scores do not decrease unless there is signiicant opt-out, but when there is, the deteriorating performance disproportionately affects certain subpopulations.
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