Song Ran, Pang Fei, Jiang Hongyun, Zhu Hancan
School of Mathematics, Physics and Information, Shaoxing University, Shaoxing, Zhejiang, 312000, China.
Institute of Artificial Intelligence, Shaoxing University, Shaoxing, Zhejiang, 312000, China.
Heliyon. 2024 Apr 7;10(7):e29181. doi: 10.1016/j.heliyon.2024.e29181. eCollection 2024 Apr 15.
This study facilitates university student profiling by constructing a prediction model to forecast the classification of future students participating in a survey, thereby enhancing the utility and effectiveness of the questionnaire approach. In the context of the ongoing digital transformation of campuses, higher education institutions are increasingly prioritizing student educational development. This shift aligns with the maturation of big data technology, prompting scholars to focus on profiling university student education. While earlier research in this area, particularly foreign studies, focus on extracting data from specific learning contexts and often relied on single data sources, our study addresses these limitations. We employ a comprehensive approach, incorporating questionnaire surveys to capture a diverse array of student data. Considering various university student attributes, we create a holistic profile of the student population. Furthermore, we use clustering techniques to develop a categorical prediction model. In our clustering analysis, we employ the K-means algorithm to group student survey data. The results reveal four distinct student profiles: Diligent Learners, Earnest Individuals, Discerning Achievers, and Moral Advocates. These profiles are subsequently used to label student groups. For the classification task, we leverage these labels to establish a prediction model based on the Back Propagation neural network, with the goal of assigning students to their respective groups. Through meticulous model optimization, an impressive classification accuracy of 90.22% is achieved. Our research offers a novel perspective and serves as a valuable methodological reference for university student profiling.
本研究通过构建预测模型来预测参与调查的未来学生的分类,从而促进大学生画像,进而提高问卷调查方法的实用性和有效性。在校园正在进行数字化转型的背景下,高等教育机构越来越重视学生的教育发展。这一转变与大数据技术的成熟相契合,促使学者们将重点放在大学生画像上。虽然该领域早期的研究,尤其是国外研究,侧重于从特定学习情境中提取数据,且往往依赖单一数据源,但我们的研究解决了这些局限性。我们采用综合方法,纳入问卷调查以获取各种各样的学生数据。考虑到大学生的各种属性,我们创建了学生群体的整体画像。此外,我们使用聚类技术来开发分类预测模型。在聚类分析中,我们采用K均值算法对学生调查数据进行分组。结果揭示了四种不同的学生画像:勤奋学习者、认真个体、有洞察力的成就者和道德倡导者。这些画像随后被用于标记学生群体。对于分类任务,我们利用这些标签基于反向传播神经网络建立预测模型,目的是将学生分配到各自的群体。通过精心的模型优化,实现了高达90.22%的令人印象深刻的分类准确率。我们的研究提供了一个新颖的视角,并为大学生画像提供了有价值的方法参考。