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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Emotional tendency of online legal course review texts based on SVM algorithm and network data acquisition
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Emotional tendency of online legal course review texts based on SVM algorithm and network data acquisition

机译:基于SVM算法和网络数据采集的在线合法课程的情感趋势

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摘要

The lack of effective evaluation of online education is a worldwide malpractice, and it is impossible to help students improve the correctness of online learning choices through existing reviews. Based on the current mainstream sentiment lexicon and text sentiment analysis, the authors use machine learning method to analyze the sentiment orientation of the legal course review text, through method that combines PMI and SVM. At the same time, this paper uses LibSVM tool to train and predict data, collect and pre-process data through network data collection, and, based on traditional algorithms, propose improved experimental scheme based on their respective advantages and disadvantages. In addition, the model proposed in this study is used to classify and process the emotional text, and the two methods are combined to obtain the final result. Finally, this paper combines experiments to analyze the performance of the comprehensive model proposed in this study. The research shows that the classification effect of the text sentiment analysis of model is good, it can be applied to practice, and it can provide theoretical reference for subsequent related research.
机译:缺乏对在线教育的有效评估是一个全球性的医疗事故,并且不可能通过现有审查帮助学生提高在线学习选择的正确性。基于当前主流情绪词典和文本情绪分析,作者使用机器学习方法来分析法律课程审查文本的情绪取向,通过结合PMI和SVM的方法。与此同时,本文使用Libsvm工具通过网络数据收集来培训和预测数据,收集和预处理数据,并且基于传统算法,提出了基于各自的优缺点的改进的实验方案。此外,本研究中提出的模型用于对情绪文本进行分类和处理,并将两种方法组合以获得最终结果。最后,本文结合了实验来分析本研究提出的综合模型的性能。该研究表明,模型文本情绪分析的分类效果良好,可应用于实践,并可为随后的相关研究提供理论参考。

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