从客户评论中提取极性的深度学习方法

Mitra Bavakhani, Alireza Yari, A. Sharifi
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引用次数: 1

摘要

由于Tweeter、Facebook、LinkedIn和各种博客等社交网络和媒体的扩展,以及信息共享和评论的大量增加,这些信息通常以文本数据的形式出现,足以被认为是大数据。,考虑到这些数据对于分析客户的优先级、需求和他们对不同产品的态度的重要性,从他们的评论中寻找和提取数据是本研究的主要目标。为了达到这一目的,本研究使用了深度学习方法和多层神经网络方法,以提取从餐馆到笔记本电脑等两个产品/服务领域的客户意见和评论的极性。本研究的结果表明,所提出的模型利用长短期记忆网络的效力,能够在餐馆和笔记本电脑领域分别以85%和84.62%的准确率确定评论的极性,这样的结果比其他方法的结果相对更准确
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A Deep Learning Approach for Extracting Polarity from Customers’ Reviews
Due to the expansion of social networks and media such as Tweeter, Facebook, LinkedIn, and different weblogs, and the great increase in information sharing and comments, Which typically are in the form of text data, big enough to be recognized as big data., and with respect to the importance of these data for the analysis of customers’ priorities, needs and their attitudes toward different products, finding and extracting data from their comments, are the primary goals of this research. To serve this purpose, this research has used deep learning approach, and multilayer neural network methods in order to extract the polarity of customers’ opinions and comments in two domains of products/services ranging from restaurant to laptop.The findings of this study indicate that the proposed model using the potencies of the long short-term-memory networks, is able to determine the comments’ polarity with 85 % and 84.62 % precision for restaurant and laptop domains respectively, in such a way that the results are relatively more accurate than the results of other methods
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