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Sentiment Analysis of Chinese Product Reviews using Gated Recurrent Unit

机译:基于门控递归单元的中文产品评论情感分析

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Despite the explosive growth of Chinese e-commerce platforms in recent years, research focusing on the sentiment classification of Chinese documents pales in comparison to its western counterparts (English documents). This paper looks into the nascent area of Natural Language Processing (NLP) in the Sentiment Analysis of Chinese Text. The proposed Deep Learning method is the use of a sentence-based approach in the sentiment analysis of online reviews to gain more granularity and increased classification accuracy. Experimental results on a balanced (50:50), 2 class (positive, negative) test dataset of 1669 product reviews show an empirical accuracy of 87.66%, while results on an imbalanced (18:82) test dataset of 2519 product reviews show an accuracy of 87.9%, thus demonstrating the effectiveness and robustness of this proposed approach.
机译:尽管近年来中国电子商务平台的爆炸性增长,但与西方同行(英语文件)相比,针对中国文件的情感分类的研究却显得苍白无力。本文探讨了中文文本情感分析中自然语言处理(NLP)的新兴领域。拟议的深度学习方法是在在线评论的情感分析中使用基于句子的方法,以获得更多的粒度和更高的分类准确性。在1669个产品评论的平衡(50:50),2类(正,负)测试数据集上的实验结果显示,经验准确性为87.66%,而在2519个产品评论的不平衡(18:82)测试数据集上的结果显示,精度为87.9%,因此证明了该方法的有效性和鲁棒性。

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