基于TLBO-BP算法的学术预警模型

Longlong Liu, Shengnan Yu
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引用次数: 1

摘要

跟踪学生的学习情况,分析考试成绩,预测未来可能的学习状态,对需要学业干预的学生有帮助。为教师提供有针对性的指导和决策依据是一项具有现实意义和研究价值的重要任务。本文将群体智能优化算法和神经网络理论应用于学生学业干预问题。提出了TLBO-BP算法来优化BP神经网络的初始权值。它可以加快算法的收敛速度,避免BP神经网络随机初始化导致训练结果的不稳定性。通过两个算例验证了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Academic Warning Model Based on TLBO-BP Algorithm
Tracking students' learning situations, analyzing test scores and predicting possible states of learning in the future are helpful for students who need academic intervention. And it is an important task with practical meaning and research value for teachers to provide targeted guidance and a decision-making basis. In this paper, a group intelligent optimization algorithm and the neural network theory are applied to the students' academic intervention problem. The TLBO-BP algorithm is proposed to optimize the initial weights in the BP neural network. It can speed up the convergence of the algorithm and avoid the instability of the training result caused by the random initialization of the BP neural network. The model shows satisfactory results in two examples, which further supports its validity.
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