建立高等教育机构绩效管理和机器学习框架

Joyir Siram, Dr Gurmeet singh sikh, Dr Joel Osei-Asiamah, Dr. Chikati Srinu, Dr. Surendar Vaddepalli, Dr. Abhishek Tripathi
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引用次数: 0

摘要

本文提出了高等教育机构管理和机器学习的新结构,旨在从整体上提高组织的效率和学生的成功率。该框架采用了多种分析技术,如预测建模和数据驱动决策,有助于制定准确的规划和持续改进策略。我们比较了机器学习的四种算法--线性回归、决策树、随机森林和多层感知器--看它们是否能预测学生成功、教师生产力和机构效率等重要绩效指标。结果表明,多层感知器算法表现最佳,MSE 为 0.018,MAE 为 0.105,R2 为 0.842,表明 MLP 优于其他算法。将其与基础模型或该领域的相关模型进行比较所做的验证研究证明,所建议的模型可广泛应用于高等教育领域,以处理相关问题。可想象的框架似乎是一个前瞻性的工具,可激发学术界的创造力、包容性和杰出性,同时增加知识获取和实现学院目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Framework for Performance Management and Machine Learning in a Higher Education Institution
This paper proposes a new structure for management and machine learning in higher education institutions, which is designed to improve the efficiency of an organization and the success of the students at a whole. The framework brings about the enactment of several analytical techniques, like predictive modeling and data-driven decision making, which help to make accurate strategies for planning and providing continuous improvement. Four algorithms in machine learning- Linear Regression, Decision Tree, Random Forest and Multilayer Perceptron- are compared to see if they predict important performance markers for student success, faculty productivity and institutional efficiency. The results illustrate the Multilayer Perceptron algorithm as the best performer, getting MSE of 0.018 and MAE of 0.105, while R2 score of 0.842, showing the superiority of MLP over the others. Validation studies done comparing it with base line models or related models in the field are proof that the suggested model is widely applicable among the higher education spectrum in dealing with the involved issues. The imaginable framework seems to be a prospective tool for stimulating creativity, inclusion, and eminence in academia while adding to the knowledge acquisition and achieving institute objectives.
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