English Teaching Achievement Prediction by Big Data Analysis under Deep Intervention

Junfang Guo
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Abstract

Appropriate data analysis technology can make people use the online degree education, obtain the data and information generated in the learning management system, and provide a useful decision basis for optimizing the teaching and management process of online degree education. Data analysis technology can help English teachers better grasp students’ learning situations and progress and optimize management. First, data analysis methods and decision tree algorithms are analyzed. Second, in data mining technology, the C4.5 decision tree method is used to construct an English score prediction model. Through the analysis of English learning-related information such as questionnaires and collected student test score data, the prediction of English teaching performance is analyzed from the perspective of teachers’ in-depth intervention. The survey results are shown as follows: (1) The model is simulated and tested. The model’s prediction accuracy is 98.20%, 99.10%, 99.40%, 98.70%, and 98.90%, higher than the standard accuracy of 97.5%. Additionally, the average response efficiency of the model is 99.42%, which can be used. (2) The failure rate of boys’ final grades is 11%, and the failure rate of female students’ final grades is 10%. There is only a 1% difference in the final grade failure rate between male and female students. The effect of gender on teaching performance is less pronounced. (3) As the number of practice questions increases, the rate of failing grades decreases. Thus, the data suggest that the number of practice questions affects instructional performance. (4) Teachers’ intervention can improve students’ English achievement. Increasing the intensity of the intervention also improves student achievement. Therefore, the follow-up research should increase the number of practice questions and teacher intervention in English teaching. The English teaching achievement prediction suggestion based on big data analysis is put forward, providing a reference for prediction management.
深度干预下大数据分析的英语教学成果预测
适当的数据分析技术可以使人们利用在线学位教育,获取学习管理系统中产生的数据和信息,为优化在线学位教育的教学和管理过程提供有用的决策依据。数据分析技术可以帮助英语教师更好地掌握学生的学习情况和进度,优化管理。首先,分析了数据分析方法和决策树算法。其次,在数据挖掘技术中,采用C4.5决策树方法构建英语成绩预测模型。通过问卷调查和收集到的学生考试成绩数据等英语学习相关信息的分析,从教师深度干预的角度对英语教学绩效的预测进行分析。调查结果如下:(1)对模型进行了仿真和测试。模型的预测准确率分别为98.20%、99.10%、99.40%、98.70%和98.90%,均高于标准准确率97.5%。该模型的平均响应效率为99.42%,具有较好的应用价值。(2)男生期末成绩不合格率为11%,女生期末成绩不合格率为10%。男女学生的期末不及格率只有1%的差别。性别对教学绩效的影响则不那么明显。随着练习题数量的增加,不及格率降低了。因此,数据表明,习题的数量影响教学绩效。(4)教师的干预可以提高学生的英语成绩。增加干预的强度也能提高学生的成绩。因此,后续研究应增加英语教学中练习题的数量和教师的干预。提出了基于大数据分析的英语教学成果预测建议,为预测管理提供参考。
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