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Aspect-category based Sentiment Analysis on Dynamic Reviews

机译:基于方面类别的动态评论情感分析

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The emergence of social media has generated huge amounts of datawhich has led researchers to study the possibility of their exploration in order to identify their hidden knowledge. Two areas are being used for this: opinion mining and sentiment analysis. Sentiment analysis identifies and extracts subjective information in social material. In this paper we propose a method to process the user reviews and categorize them based on their aspects after which the aspect categories are recognized. Following this, the polarity of the reviews based on these categories are calculated, depending on the tone and adjectives used. In the proposed method, a Convolutional Neural Network (CNN) is trained and used for the task of aspect term extraction, which gives an f-measure of 88.97%. This CNN model uses general embeddings as well as domain specific embeddings for training purposes which are created using Word2Vec. Aspect term list and review pairs are processed to identify their aspect categories. Then the polarity of the review is detected using TextBlob. An aspect-category based summary is generated for the dynamic reviews input by the users using the deep neural network model.
机译:社交媒体的出现产生了大量数据,这促使研究人员研究其探索的可能性,以识别其隐藏的知识。为此使用了两个领域:观点挖掘和情感分析。情感分析可识别并提取社交材料中的主观信息。在本文中,我们提出了一种方法来处理用户评论并将其基于其方面进行分类,然后再识别方面类别。然后,根据所使用的语气和形容词,计算基于这些类别的评论的极性。在该方法中,对卷积神经网络(CNN)进行了训练,并将其用于方面项提取任务,其f测度为88.97%。此CNN模型使用常规嵌入以及针对特定领域的嵌入进行培训,这些嵌入是使用Word2Vec创建的。对方面术语列表和审阅对进行处理以识别其方面类别。然后,使用TextBlob检测评论的极性。使用深层神经网络模型为用户输入的动态评论生成基于方面类别的摘要。

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