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A Novel Approach for Sentiment Analysis Using Deep Recurrent Networks and Sequence Modeling

机译:一种利用深度复发网络和序列建模的一种新型情感分析方法

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摘要

Background: Due to the increasing growth of social websites, a lot of user-generateddata is available these days in the form of customer reviews, opinions, and comments.Objective: Sentiment analysis includes analyzing the user reviews and finding the overall opinionsfrom the reviews in terms of positive, negative and neutral categories. Sentiment analysis techniquescan be used to assign a piece of text a single value that represents opinion expressed in that text.Sentiment analysis using lexicon approaches is already studied.Methods: A new approach to sentiment analysis using deep neural networks techniques is proposed.Deep neural networks using Sequence to sequence model is studied in this paper. The main objectiveof this paper is to identify the sequence of relationships among the words in the reviews. Customerreviews are taken from Amazon and sentiment analysis is done using the word embedding method.Results: The results obtained by the proposed method are compared with the baseline algorithmssuch as Naïve, and logistic regression.Conclusion: Confusion Matrix along with receiver operating characteristics and area under thecurve is analyzed. The accuracy of the proposed methodology is compared with other algorithms.
机译:背景:由于社交网站增长的增加,这些天可以通过客户评论,意见和评论的形式获得许多用户生成的数据.Bijective:情绪分析包括分析用户评论并找到整体意见的评论积极,消极和中立类别的条款。情绪分析技术可用于分配一条文本,该文本是表示在该文本中表达的意见的单一值。使用Lexicon方法已经研究了使用深度神经网络技术的新方法。展示神经网络本文研究了使用序列进行序列模型。本文的主要目标是识别评论中的文字中的关系序列。 CustomErviews从亚马逊采用,使用Word嵌入方法完成了情绪分析。结果:将所提出的方法获得的结果与基线算法作为天真的基线算法和逻辑回归进行比较。结论:混淆矩阵以及接收器的操作特性和区域分析了这种情况。将所提出的方法的准确性与其他算法进行比较。

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