Adaptive multilevel clustering model for the prediction of academic risk

X. Ochoa
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引用次数: 6

Abstract

The selection of a model for academic risk prediction systems is usually based on the global performance of the model. However, this global performance is not an important factor for the end-user of the system. For the end-user, the performance of the model for his or her specific case is the most important aspect of that model. Given that the model is usually selected at design time, the end-user could end up with a sub-optimal prediction. To solve this problem, this work presents a conceptual framework to build adaptive multilevel clustering models for academic risk prediction. This frameworks allows the system to automatically select between several levels of hierarchical or semi-hierarchical features to create a clustering model to best predict the particular risk of each student. This conceptual framework is validated through its realization into an adaptive model to predict the risk of failing a course during a semester in a Computer Science program. In this study, the adaptive model consistently outperforms the prediction of the best-performing static model.
学术风险预测的自适应多层次聚类模型
学术风险预测系统的模型选择通常基于模型的全局性能。然而,这种全局性能对于系统的最终用户来说并不是一个重要的因素。对于最终用户来说,模型在他或她的特定情况下的性能是该模型最重要的方面。考虑到模型通常是在设计时选择的,最终用户可能会得到次优预测。为了解决这一问题,本文提出了一个用于学术风险预测的自适应多层次聚类模型的概念框架。该框架允许系统自动在几个层次的分层或半分层特征之间进行选择,以创建一个聚类模型,以最好地预测每个学生的特定风险。这个概念框架通过它的实现被验证为一个自适应模型,以预测计算机科学课程在一个学期中不及格的风险。在本研究中,自适应模型始终优于表现最佳的静态模型的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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