Automatic question-answering modeling in English by integrating TF-IDF and segmentation algorithms

Hainan Wang
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Abstract

Online network education offers convenience, however, the inefficiency and time-consuming nature of question-answering models negatively impact the demand for online learning. To address this issue, the study puts forward the development of an automatic English question-answering model. The improved model leverages a term frequence-inverse document frequency approach and an unsupervised participle algorithm based on deep learning. The precision and promptness of the question-answering model were enhanced by refining the weighted allocation of the term frequence-inverse document frequency algorithm and the unsupervised word-splitting algorithm. The validation shows that the improved precision rate is 68.14%, which is 34.37% and 50.45% more than the other two methods, respectively. The precision rate, recall rate, and F1 value for semantic similarity calculation improved by 9.23%, 9.22%, and 9.71%, respectively, compared to the traditional method. The validation experiments of the automatic English question-answering model indicate that its average accuracy was 94.68%, surpassing other models by 4.77%. The average answer time for the four types of questions was 30.52 ms, and the average answer time for the cause questions was 11.45 ms. The results show that the proposed English automatic question-answering model has better accuracy and timeliness of answering questions, and the improved accuracy for weight calculation is better. The English automatic question-answering model integrating word frequency-inverse document frequency and participle algorithm can satisfy the basic needs of teachers and students in online teaching, course question-answering, etc., which is of positive significance for the development of online education in the context of the Internet.

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通过整合 TF-IDF 和分段算法建立英语自动问答模型
在线网络教育为人们提供了便利,然而,答题模式的低效性和耗时性对在线学习的需求产生了负面影响。针对这一问题,本研究提出了一种自动英语答疑模型。改进后的模型采用了词频-反文档频率方法和基于深度学习的无监督分词算法。通过改进词频-反向文档频率算法和无监督分词算法的加权分配,提高了答题模型的精确度和及时性。验证结果表明,精确率提高了 68.14%,比其他两种方法分别提高了 34.37% 和 50.45%。与传统方法相比,语义相似性计算的精确率、召回率和 F1 值分别提高了 9.23%、9.22% 和 9.71%。英语自动答题模型的验证实验表明,其平均准确率为 94.68%,比其他模型高出 4.77%。四类问题的平均回答时间为 30.52 毫秒,原因问题的平均回答时间为 11.45 毫秒。结果表明,所提出的英语自动答题模型具有较好的答题准确性和及时性,权重计算的准确性也有较好的提高。集词频-反文档词频和分词算法于一体的英语自动答题模型可以满足教师和学生在在线教学、课程答疑等方面的基本需求,对互联网背景下在线教育的发展具有积极意义。
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