Methodology to combine theoretical knowledge with a data-driven probabilistic graphical model

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Kazim Topuz, Brett D. Jones, Sumeyra Sahbaz, Murad A. Moqbel
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引用次数: 2

Abstract

ABSTRACT This study presents an analytic inference methodology using probabilistic modeling that provides faster decision-making and a better understanding of complex relations. Two educational psychology models (i.e., the MUSIC Model of Motivation and the domain identification model) were coupled with a data-driven Probabilistic Graphical Model to provide a top-down and bottom-up combination for reasoning. Using survey data from middle school students, Bayesian Network models captured the probabilistic interactions between students’ perceptions of their science class, their identification with science, and their science career goals. Complex/non-linear relationships among these variables revealed that students’ perceptions of their science class (i.e., eMpowerment, Usefulness, Success, Interest, and Caring) were significant predictors of their science-related career goals. These findings provide validity evidence for using the MUSIC and domain identification models and provide educators and school administrators with a web-based simulator to estimate the effect of students’ science class perceptions on their science identification and career goals.
将理论知识与数据驱动的概率图形模型相结合的方法
本研究提出了一种使用概率建模的分析推理方法,该方法可以提供更快的决策和更好的理解复杂关系。两个教育心理学模型(即动机的MUSIC模型和领域识别模型)与数据驱动的概率图形模型相结合,提供自上而下和自下而上的推理组合。利用中学生的调查数据,贝叶斯网络模型捕获了学生对科学课程的感知、对科学的认同和科学职业目标之间的概率相互作用。这些变量之间的复杂/非线性关系表明,学生对科学课程的感知(即授权、有用、成功、兴趣和关怀)是其科学相关职业目标的重要预测因子。这些发现为使用MUSIC和领域识别模型提供了效度证据,并为教育工作者和学校管理者提供了一个基于网络的模拟器来评估学生的科学课堂感知对他们的科学识别和职业目标的影响。
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来源期刊
Journal of Business Analytics
Journal of Business Analytics Business, Management and Accounting-Management Information Systems
CiteScore
2.50
自引率
0.00%
发文量
13
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