神经网络优化预测学生学习时间

A. Laksito, Ainul Yaqin, Sumarni Adi, Mardhiya Hayaty
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引用次数: 0

摘要

学生在大学的学习时间对于实现高等教育目标和提高认证水平的学习计划具有重要意义。学生学习时间的预测可以为高校制定未来政策提供依据。在学生学习期间实施的几个因素,包括累积成绩指数(GPA),都会影响学习时间。此外,学校往往不考虑校园的条件或学生学习期的预测价值。神经网络(NN)是一种预测或分类方法,由于其在解决预测问题方面的可靠性而被前人广泛使用。提高神经网络精度的主要问题是调谐参数。神经网络模型具有优化算法,即粒子群优化算法(PSO)和遗传算法(GA)。经过实验和分析,GA (GA- ann)神经网络模型的准确率达到了71.4%。得分由epoch 5、突变率= 0.9、层大小为20、tanh激活函数、adam解算器和最大迭代次数为1000的参数规范数获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Optimization for Prediction of Student Study Period
The student's study period's in a university was significant in implementing higher education goals and study programs to improve accreditation level. The student's study period's prediction can make higher education institutions' foundation in making future policies. Several factors in implementing students during their studies, including the cumulative achievement index (GPA), affect the study period. Furthermore, the institution often does not consider the conditions or the student's study period's predictive value at its campus. A neural network (NN) is a prediction or classification method that previous researchers have widely used because it is reliable in solving prediction problems. The main problem with improving the accuracy of the NN is the tuning parameter. The neural network model has algorithms for optimization, namely, Particle Swarm Optimization (PSO) and Genetic Algorithm(GA). Based on the experiments and analyses that have been done, the accuracy has been obtained in the GA (GA-ANN) Neural network model with an accuracy score of 71.4%. The score is gained from the parameter specification number of epoch 5, mutation rate = 0.9, layer size 20, tanh activation function, adam solver, and 1000 maximum iteration.
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