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Bag of Embedding Words for Sentiment Analysis of Tweets

机译:嵌入词袋以分析推文

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This paper presents an alternative of solution based in artificial intelligence to simplify the human effort that implies the analysis of the impact for businesses of their publications in social networks services. This analysis is very important because the audience manifest its opinion mostly in texts that must be processed one by one to know their content and use it in benefit of the business, this implies the use of resources to read each comment and extract characteristics that make possible to determine whether the comments are, positive reactions or negative. Our solution can obtain most effective reports than the ones generated by manual procedures, it means that demands less resources and leads to the save of time and money during the extraction of the answers to a Twitter’s publication. We use BOEW and Word2vec to generate the characteristic vector for each of the answers. Finally, to make the sentiment analysis we use statistic classification models to polarize comments.
机译:本文提出了一种基于人工智能的解决方案的替代方案,以简化人工工作,这意味着要分析其出版物在社交网络服务中对企业的影响。这种分析非常重要,因为受众主要是在文本中表达自己的观点,必须逐一处理该文本以了解其内容并从中受益,以利于业务发展,这意味着要利用资源来阅读每个评论并提取使之成为可能的特征。确定评论是正面反应还是负面反应。与手动程序生成的报告相比,我们的解决方案可以获得最有效的报告,这意味着所需资源更少,并且在提取Twitter出版物的答案时节省了时间和金钱。我们使用BOEW和Word2vec为每个答案生成特征向量。最后,为了进行情感分析,我们使用统计分类模型来极化评论。

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