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Research on the Majority Decision Algorithm based on WeChat sentiment classification

机译:基于微信情感分类的多数决策算法研究

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Sentiment analysis mainly studies the emotional tendencies of texts from grammar, semantic rules and other aspects. The texts from social network are characterized by less words, irregular grammar, data noise and so on, which have increased the difficulty of emotion analysis. In order to improve the performance of machine learning in sentiment analysis, this study proposed the Majority Decision Algorithm to classify the emotional tendentious of the text in WeChat, combined the characteristics of five classifiers and integrated the classification results of five classifiers, eventually the text can be classified in WeChat. Firstly, this study utilized the BlueStacks to crawl the cache of WeChat Moment developed by Tencent company. Secondly, the cache was processed by Python to get the WeChat dataset. After the Chinese word segmentation, data cleaning and segmentation, the sentiment classification experiment were carried out using different classifiers. Finally, a Majority Decision Algorithm composed of five classifiers was established. It included, Naive Bayes (sklearn), Naive Bayes (SnowNLP), SVM (linear), SVM (RBF) and SGD. Then, the comparison was carried out between the performance of the algorithm and the five classifiers. Results show that the precision rates of the five classifiers are 0.8598, 0.8154, 0.8511, 0.8739 and 0.8678; the recall rates are 0.8544, 0.8482, 0.9380, 0.9226 and 0.9349; F1 scores are 0.8571, 0.8315, 0.8924, 0.8975 and 0.9001, respectively. The algorithm of the Precision rate, Recall rate and F1 score were 0.8804, 0.9349 and 0.9069, respectively, indicating that algorithm in current study significantly improved the performance, which can be effectively applied into the new text form of WeChat Moment. The study can provide theoretical reference for sentiment classification of Chinese text based on machine learning.
机译:情绪分析主要研究语法,语义规则和其他方面的文本的情感倾向。来自社交网络的文本的特点是较少的单词,不规则的语法,数据噪声等,这增加了情绪分析的难度。为了提高机器学习在情感分析中的性能分析中,本研究提出了多数决策算法对微信中的文本进行分类,组合五分类器的特点,并集成了五分类器的分类结果,最终文本可以在微信中分类。首先,本研究利用了蓝布爬到由腾讯公司开发的微信矩的缓存。其次,Python处理缓存以获取微信数据集。在中文字分割后,数据清洁和分割后,使用不同的分类剂进行情绪分类实验。最后,建立了由五个分类器组成的多数决策算法。它包括,天真的贝叶斯(Sklearn),天真贝叶斯(Snownlp),SVM(线性),SVM(RBF)和SGD。然后,在算法和五分类器的性能之间进行比较。结果表明,五分类机的精确率为0.8598,0.8154,0.8511,0.8739和0.8678;召回率为0.8544,0.8482,0.9380,0.9226和0.9349; F1分数分别为0.8571,0.8315,0.8924,0.8975和0.9001。精确率,召回率和F1得分的算法分别为0.8804,0.9349和0.9069,表明当前研究中的算法显着提高了性能,可以有效地应用于微信矩的新文本形式。该研究可以为基于机器学习的中国文本情感分类提供理论参考。

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