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Micro-Blog Sentiment Classification Method Based on the Personality and Bagging Algorithm

机译:基于个性和堆积算法的微博情感分类方法

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Integrated learning can be used to combine weak classifiers in order to improve the effect of emotional classification. Existing methods of emotional classification on micro-blogs seldom consider utilizing integrated learning. Personality can significantly influence user expressions but is seldom accounted for in emotional classification. In this study, a micro-blog emotion classification method is proposed based on a personality and bagging algorithm (PBAL). Introduce text personality analysis and use rule-based personality classification methods to divide five personality types. The micro-blog text is first classified using five personality basic emotion classifiers and a general emotion classifier. A long short-term memory language model is then used to train an emotion classifier for each set, which are then integrated together. Experimental results show that compared with traditional sentiment classifiers, PBAL has higher accuracy and recall. The F value has increased by 9%.
机译:综合学习可用于组合弱分类器,以提高情绪分类的影响。在微博的现有情感分类方法很少考虑利用综合学习。个性可以显着影响用户表达,但很少占情感分类。在本研究中,基于个性和堆垛机(PBAL)提出了一种微博情感分类方法。介绍文本个性分析,并使用基于规则的个性分类方法来划分五种人格类型。 Micro-Blog文本首先使用五个个性基本情感分类器和一般情感分类器进行分类。然后,使用长期的短期内存语言模型来训练每个集合的情感分类器,然后将其集成在一起。实验结果表明,与传统情绪分类器相比,PBAL具有更高的准确性和召回。 F值增加了9%。

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