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Intelligent Decision System of Higher Educational Resource Data under Artificial Intelligence Technology

机译:人工智能技术下高等教育资源数据智能决策系统

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It aims to apply the neural network algorithm to the mining of educational resource data and provide new ideas for the intelligent development of teaching evaluation. The potential correlations between the teaching evalua-tion results and the teacher’s age, gender, professional title, and academic qualification are analyzed with the Apriori algorithm, which is improved with the decision tree based on the research of the existing university teaching evaluation system. The back propagation (BP) neural network model is improved based on the differential evolution algorithm (DEA). The DEA-BP model is applied to the prediction of teaching evaluation results for analysis. The results show that the execution time of the improved association rule algorithm (ARA) is significantly better than that of other models. In addition, the teacher’s age (40 - 50 years old or 50 - 60 years old), gender (female), professional title (senior or deputy senior), and academic qualifications (undergraduate or master) have certain correlation with the teaching evaluation results (excellent). When the DEA-BP algorithm is adopted to predict the teaching evaluation results, the average absolute error (1.05%) and the relative accuracy rate (95.44%) between its prediction value and the true value are optimal. Therefore, the ARA algorithm and DEA-BP algorithm based on the decision tree can intelligently extract the potential laws and knowledge in the teaching evaluation data, and provide support for teaching evaluation decisions. Thus, it exerts the role of promotion in the mining of educational resource data in universities and the intelligent development of decision-making systems.
机译:它旨在将神经网络算法应用于教育资源数据的挖掘,为教学评估的智能发展提供新的思路。采用APRIORI算法分析了教学评估结果与教师年龄,性别,专业称谓和学术资质之间的潜在相关性,这是基于现有大学教学评估系统研究的决策树改进。基于差分演进算法(DEA)改进了后传播(BP)神经网络模型。 DEA-BP模型应用于分析的教学评估结果的预测。结果表明,改进关联规则算法(ARA)的执行时间明显优于其他模型。此外,老师的年龄(40 - 50岁或50岁),性别(女),专业称号(高级或副长),以及学术资格(本科或硕士)与教学评估结果有一定的相关性(优秀的)。采用DEA-BP算法预测教学评估结果时,其预测值与真值之间的平均绝对误差(1.05%)和相对精度(95.44%)是最佳的。因此,基于决策树的ARA算法和DEA-BP算法可以智能地提取教学评估数据中的潜在法律和知识,并为教学评估决策提供支持。因此,它促进促进在大学教育资源数据采矿的作用以及决策系统的智能发展。

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