Rick L. Brattin, Randall S. Sexton, Rebekah E. Austin, Xiang Guo, Erica M. Scarmeas, Michelle J. Hulett
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引用次数: 0
摘要
目的本研究旨在找出目的国风险的客观指标如何区分商业出国留学项目与其他学科。设计/方法/方法作者训练了一个神经网络模型,该模型基于美国一所大型大学6年来学生发起的关于留学项目的询问。该模型使用目的地国家风险的客观度量作为主要输入,对商业与非商业留学项目进行分类。该模型对商业和非商业留学项目的分类准确率超过70%。研究发现,商业项目不太可能包括疾病控制与预防中心(Centers for Disease Control and Prevention)推荐非常规疫苗接种的目的地,也不太可能选择全球和平指数得分较高的国家。这些结果强调了在设计和管理留学项目时考虑目的国风险的必要性。了解学生对低风险目的地的偏好有助于改善这些项目的计划、执行和学生体验。社会意义在了解目的地国家风险的基础上,更好地规划和管理留学项目,可以提高学生的安全和体验。原创性/价值本研究通过关注目的国风险的客观衡量而不是风险感知,为理解出国留学项目提供了一个独特的视角。据作者所知,它也是第一个使用神经网络将出国留学项目分类为商业项目和非商业项目,并使用国家指定风险指标的客观衡量标准。
Analyzing destination country risk profiles in business study abroad programs: a neural network approach
Purpose
This study aims to identify how objective indicators of destination country risk differentiate business study abroad programs from those in other academic disciplines.
Design/methodology/approach
The authors trained a neural network model on six years of student-initiated inquiries about study abroad programs at a large US university. The model classified business versus nonbusiness study abroad programs using objective measures of destination country risk as the primary inputs.
Findings
The model correctly classifies business and nonbusiness study abroad programs with over 70% accuracy. Business programs were found to be 20% less likely to include destinations where the Centers for Disease Control and Prevention recommend nonroutine vaccinations and favor countries with higher Global Peace Index scores.
Practical implications
These results underscore the need to consider destination country risk in the design and administration of study abroad programs. An understanding of student preferences for lower risk destinations can contribute to improved planning, execution and student experiences in these programs.
Social implications
Better planning and management of study abroad programs based on understanding of destination country risk can lead to enhanced student safety and experiences.
Originality/value
This study offers a unique perspective on understanding study abroad programs by focusing on objective measures of destination country risk rather than risk perceptions. It also is, to the best of the authors’ knowledge, the first to use a neural network to classify study abroad programs as business versus nonbusiness using objective measures of country-specify risk indicators.
期刊介绍:
The journal of International Education in Business (JIEB) is a peer reviewed journal concerned with theoretical and pedagogic aspects of international education in business schools and its flow-on implications for the workplace. The journal publishes papers that are concerned with: - international education, - cross- and inter-cultural aspects of internationalisation, - internationalisation of business schools, - business school teaching and learning, - academic and social engagement of students, - recruitment and marketing of business education in international contexts, - quality processes with respect to internationalisation, and - global organisations as stakeholders of internationalisation. Theoretical and empirical papers (qualitative and quantitative) as well as case analyses are invited. Papers that explore micro- and macro-perspectives in business and international education are also included.