基于模糊逻辑的规范分析对有辍学风险学生的干预支持计划

Cindy G. de Jesus, Mark Kristian C. Ledda
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引用次数: 0

摘要

教育被认为是建设一个国家不可避免的影响,并被认为是一个人成功的重要因素。然而,中学辍学率上升的问题在世界范围内继续存在。本研究旨在为教育部设计和开发一项干预支持计划,为有辍学风险的学生提供规范分析。影响学生下降的因素包括家庭、个人、社区和学校的相关因素。基于这些因素,通过与中学教师和辅导员的焦点小组讨论,确定适当的干预方案类型。采用基于模糊逻辑的规范分析方法开发了基于网络的干预支持方案系统。首先,系统通过识别的因素作为输入来预测学生的退学风险。其次,根据预测结果,系统的模糊推理机制确定干预的适用性和有效性,提供合适的干预处方作为系统的最终输出。结果表明,在发达的系统中,通过正确的输入,可以更早地识别出有辍学风险的学生,并且适当的干预措施因学生而异。因此,通过制定适当的干预方案,使该研究有助于解决日益增加的辍学问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intervention Support Program for Students at Risk of Dropping Out Using Fuzzy Logic-Based Prescriptive Analytics
Education is perceived to be an inevitable impact in building one's nation and presumed to be a significant factor of one's success. However, the issue with increasing school dropouts in secondary schools continue to persist worldwide. This study aimed to design and develop an intervention support program for students at risk of dropping using prescriptive analytics for the Department of Education. Factors affecting students to drop include family, individual, community and school related factors were identified. Based from these factors, appropriate types of intervention programs were determined through focus group discussions with secondary school teachers and guidance counselors. A web-based intervention support program system was developed with the use of Fuzzy Logic-Based prescriptive analytics. First, the system predicts students at risk of dropping out through the identified factors as inputs. Second, based from the results of the prediction, the system's fuzzy inference mechanism determines both the intervention applicability and effectivity to provide suitable intervention prescription as the system's final output. Results show that students who are at risk of dropping out can be identified earlier with the correct inputs in the developed system and appropriate interventions vary from one student to another. Thus, making the study useful in addressing the issue with increasing school dropouts by prescribing suitable intervention programs.
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