利用会计教育的早期预警信号预测大学一年级的进展:一种机器学习方法

IF 2.5 Q2 BUSINESS, FINANCE
P. Everaert, E. Opdecam, H. van der Heijden
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引用次数: 0

摘要

在本文中,我们研究了会计课程的早期预警信号(如早期参与和早期形成表现)是否能预测第一年的进展结果,以及这些数据是否比个人数据(如性别和先前成就)更具预测性。使用机器学习方法,来自欧洲大陆一所大学的609名一年级学生的样本结果表明,会计课程的早期预警对一年级的进展具有很强的预测性,而且比一年级开始时的可用数据更具预测性。此外,学生在本科一年级的旅程中走得越远,会计参与度和绩效数据就越能预测课程进展结果。我们的研究有助于通过机器学习研究会计教育中的辍学预警信号,为会计教育工作者提供启示,并为该领域的进一步研究提供有用的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting first-year university progression using early warning signals from accounting education: A machine learning approach
In this paper, we examine whether early warning signals from accounting courses (such as early engagement and early formative performance) are predictive of fi rst-year progression outcomes, and whether this data is more predictive than personal data (such as gender and prior achievement). Using a machine learning approach, results from a sample of 609 fi rst-year students from a continental European university show that early warnings from accounting courses are strongly predictive of fi rst-year progression, and more so than data available at the start of the fi rst year. In addition, the further the student is along their journey of the fi rst undergraduate year, the more predictive the accounting engagement and performance data becomes for the prediction of programme progression outcomes. Our study contributes to the study of early warning signals for dropout through machine learning in accounting education, suggests implications for accounting educators, and provides useful pointers for further research in this area.
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来源期刊
Accounting Education
Accounting Education BUSINESS, FINANCE-
CiteScore
8.00
自引率
21.90%
发文量
39
期刊介绍: Now included in the Emerging Sources Citation Index (ESCI)! Accounting Education is a peer-reviewed international journal devoted to publishing research-based papers on key aspects of accounting education and training of relevance to practitioners, academics, trainers, students and professional bodies, particularly papers dealing with the effectiveness of accounting education or training. It acts as a forum for the exchange of ideas, experiences, opinions and research results relating to the preparation of students for careers in all walks of life for which accounting knowledge and understanding is relevant. In particular, for those whose present or future careers are in any of the following: business (for-profit and not-for-profit), public accounting, managerial accounting, financial management, corporate accounting, controllership, treasury management, financial analysis, internal auditing, and accounting in government and other non-commercial organizations, as well as continuing professional development on the part of accounting practitioners.
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