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Improving the performance of lexicon-based review sentiment analysis method by reducing additional introduced sentiment bias

机译:通过减少其他引入的情感偏见来提高基于词典的评论情感分析方法的性能

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摘要

Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and various methods have been proposed in recent literature. However, these methods are likely to introduce sentiment bias, and the classification results tend to be positive or negative, especially for the lexicon-based sentiment classification methods. The existence of sentiment bias leads to poor performance of sentiment analysis. To deal with this problem, we propose a novel sentiment bias processing strategy which can be applied to the lexicon-based sentiment analysis method. Weight and threshold parameters learned from a small training set are introduced into the lexicon-based sentiment scoring formula, and then the formula is used to classify the reviews. In this paper, a completed sentiment classification framework is proposed. SentiWordNet (SWN) is used as the experimental sentiment lexicon, and review data of four products collected from Amazon are used as the experimental datasets. Experimental results show that the bias processing strategy reduces polarity bias rate (PBR) and improves performance of the lexicon-based sentiment analysis method.
机译:对情感分析进行了广泛的研究以从用户生成的内容(UGC)中提取意见,并且在最近的文献中提出了各种方法。但是,这些方法可能会引入情感偏差,并且分类结果倾向于是肯定的或否定的,尤其是对于基于词典的情感分类方法而言。情绪偏差的存在导致情绪分析的性能较差。为了解决这个问题,我们提出了一种新颖的情感偏差处理策略,可以应用于基于词典的情感分析方法。从小训练集中学习的权重和阈值参数被引入基于词典的情感评分公式,然后使用该公式对评论进行分类。本文提出了一个完整的情感分类框架。 SentiWordNet(SWN)用作实验情感词典,而从亚马逊收集的四种产品的评论数据用作实验数据集。实验结果表明,偏置处理策略可降低极性偏置率(PBR),并提高基于词典的情感分析方法的性能。

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