应用人工神经网络算法预测工科学生毕业率

M. Anwar
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引用次数: 1

摘要

工科学生的按时毕业率对学习质量影响很大。本研究的目的是预测工程教育学生的毕业率。该方法采用粒子群优化和正向选择相结合的人工神经网络算法,样本数为234个。人工神经网络的测试结果表明,预测时间为149,预测时间为62,准确率为82.61%。基于粒子群算法的人工神经网络在预测时间为165而非69的情况下,准确率达到91.30%。此外,采用粒子群优化和转发选择简化的人工神经网络在预测165次毕业数和69次毕业数时获得95.65%的准确率。因此,这三种算法的结合可以较准确地预测工程教育学生的毕业率。
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Prediction of the graduation rate of engineering education students using Artificial Neural Network Algorithms
The graduation rate of engineering education students on time dramatically affects the quality of learning. The purpose of this study is to predict the graduation rate of engineering education students. The method uses an artificial neural network algorithm combined with particle swarm optimization and forward selection, with 234 samples. The test results with Artificial Neural Network obtained 82.61% accuracy with predictions on time 149 and not on time 62. Artificial Neural Network with Particle Swarm Optimization obtained 91.30% accuracy with predictions on time 165, not on time 69. Furthermore, Artificial Neural Network with Particle Swarm Optimization and reduced by forwarding selection obtained 95.65% accuracy with predictions of the number of graduations on time 165 and not on time 69. Thus, the combination of the three algorithms can predict the graduation rate of engineering education students with high accuracy.
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审稿时长
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