利用改进的集成机器学习模型预测学生在线创业教育的适应能力

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS
Array Pub Date : 2023-09-01 DOI:10.1016/j.array.2023.100303
Amit Malik , Edeh Michael Onyema , Surjeet Dalal , Umesh Kumar Lilhore , Darpan Anand , Ashish Sharma , Sarita Simaiya
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引用次数: 1

摘要

近年来,创业教育变得至关重要。这种教育体系可能与全球对价值创造、就业技能和就业机会的渴望息息相关。参与创业培训为学生提供了必要的技能,以提高他们为新出现的问题创造市场和有利可图的解决方案的能力。为了做到这一点,许多新兴企业家依靠技术来从事创业教育。本研究提出一种机器学习技术来预测学生在线创业教育的适应水平。利用Kaggle教育数据集对随机森林、C5.0、CART和人工神经网络等算法的适用性进行了检验。这些算法记录了很高的准确率,并肯定了机器学习技术预测学生对在线创业培训的适应能力。本研究结果为在线创业教育领域提供了一种可靠而有效的预测学生适应能力的方法。提出的改进的集成机器学习模型可以帮助教育工作者和管理人员识别可能需要额外支持的学生,定制教学策略,并设计有针对性的干预措施,以增强他们在在线创业教育中的适应性和整体学习体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting students' adaptability in online entrepreneurship education using modified ensemble machine learning model

Entrepreneurship education has become essential in recent years. This education system may not be unconnected with the global agitation for value creation, employability skills and job creation. Engaging in entrepreneurial training provides students with the skills needed to enhance their ability to create marketable and profitable solutions to emerging problems. To do this, many emerging entrepreneurs rely on technology to engage in entrepreneurship education. This study presents a machine learning technique to predict the adaptability level of students in online entrepreneurship education. The suitability of different algorithms like Random Forest, C5.0, CART and Artificial Neural Network was examined using the Kaggle Educational dataset. The algorithms recorded a high accuracy rate and affirmed machine learning techniques' ability to forecast students' adaptation to online entrepreneurship training. The findings of this research contribute to the field of online entrepreneurship education by providing a reliable and efficient approach for predicting students' adaptability. The proposed modified ensemble machine learning model can assist educators and administrators in identifying students who may require additional support, tailoring instructional strategies, and designing targeted interventions to enhance their adaptability and overall learning experience in online entrepreneurship education.

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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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