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Sentiment Analysis of Chinese E-commerce Reviews Based on BERT

机译:基于伯特的中国电子商务评论的情感分析

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The popularity of the Internet has brought profound influence to electronic commerce. A kind of review-oriented consumption mode is gradually expanding in the market and consumers will refer to the reviews provided by consumers who bought the product in the past. How to accurately analyze users' sentiments from massive data of e-commerce reviews has become one of the key issues for e-commerce platforms. Current standard sentiment analysis classifies overall sentiment of e-commerce reviews without an extended description of the entity. We set up an optimized Aspect-based sentiment analysis (ABSA) that includes four elements: aspect, category, polarity, and opinion. Aiming at the above problems, this paper proposes a Chinese e-commerce reviews sentiment analysis algorithm based on BERT. By using pre-training model, we use the BIO(B-begin,I-inside,O-outside) data labeling pattern to label entities and study sentiment analysis by the annotation data. Experimental results on the Taobao cosmetics review datasets show that compared with the ordinary deep learning methods, our approach in the accuracy rate and the F1 score has significant improvement.
机译:互联网的普及对电子商务带来了深远的影响。在市场上逐步扩展,消费者将参考过去购买产品的消费者提供的评论。如何准确分析来自电子商务评论的大规模数据的用户的情绪已成为电子商务平台的关键问题之一。目前的标准情绪分析将电子商务审查的总体情绪分类,而无需对实体的扩展描述。我们建立了一个优化的基于方面的情绪分析(ABSA),包括四个要素:方面,类别,极性和意见。旨在上述问题,本文提出了中国电子商务评论的情绪分析算法基于伯特。通过使用预培训模型,我们使用BIO(B-BEGIN,I-INSINE,O-OXINGS)数据标记模式来标记实体并通过注释数据研究情绪分析。淘宝化妆品审查数据集的实验结果表明,与普通的深度学习方法相比,我们的方法在准确率和F1分数具有显着的改善。

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