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Teaching Evaluation System by use of Machine Learning and Artificial Intelligence Methods

机译:利用机器学习和人工智能方法教学评估系统

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摘要

To explore the adoption of artificial intelligence (AI) technology in the field of teacher teaching evaluation, the machine learning algorithm is proposed to construct a teaching evaluation model, which is suitable for the current educational model, and can help colleges and universities to improve the existing problems in teaching. Firstly, the existing problems in the current teaching evaluation system are put forward and a novel teaching evaluation model is designed. Then, the relevant theories and techniques required to build the model are introduced. Finally, the experiment methods and process are carried out to find out the appropriate machine learning algorithm and optimize the obtained weighted naive Bayes (WNB) algorithm, which is compared with traditional naive Bayes (NB) algorithm and back propagation (BP) algorithm. The results reveal that compared with NB algorithm, the average classification accuracy of WNB algorithm is 0.817, while that of NB algorithm is 0.751. Compared with BP algorithm, WNB algorithm has a classification accuracy of 0.800, while that of BP algorithm is 0.680. Therefore, it is proved that WNB algorithm has favorable effect in teaching evaluation model.
机译:为了探索人工智能(AI)技术在教师教学评价领域的应用,提出了机器学习算法,构建了适合当前教育模式的教学评价模型,可以帮助高校改善教学中存在的问题。首先,提出了现行教学评价体系存在的问题,设计了一种新的教学评价模型。然后,介绍了建立该模型所需的相关理论和技术。最后,通过实验方法和过程找到合适的机器学习算法,并对得到的加权朴素贝叶斯(WNB)算法进行优化,并与传统朴素贝叶斯(NB)算法和反向传播(BP)算法进行比较。结果表明,与NB算法相比,WNB算法的平均分类精度为0.817,NB算法的平均分类精度为0.751。与BP算法相比,WNB算法的分类精度为0.800,而BP算法的分类精度为0.680。因此,证明了WNB算法在教学评价模型中具有良好的效果。

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