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Crowd explicit sentiment analysis

机译:人群显性情绪分析

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摘要

With the rapid growth of data generated by social web applications new paradigms in the generation of knowledge are opening. This paper introduces Crowd Explicit Sentiment Analysis (CESA) as an approach for sentiment analysis in social media environments. Similar to Explicit Semantic Analysis, microblog posts are indexed by a predefined collection of documents. In CESA, these documents are built up from common emotional expressions in social streams. In this way, texts are projected to feelings or emotions. This process is performed within a Latent Semantic Analysis. A few simple regular expressions (e.g. "I feel X", considering X a term representing an emotion or feeling) are used to scratch the enormous flow of micro-blog posts to generate a textual representation of an emotional state with clear polarity value (e.g. angry, happy, sad, confident, etc.). In this way, new posts can be indexed by these feelings according to the distance to their textual representation. The approach is suitable in many scenarios dealing with social media publications and can be implemented in other languages with little effort. In particular, we have evaluated the system on Polarity Classification with both English and Spanish data sets. The results show that CESA is a valid solution for sentiment analysis and that similar approaches for model building from the continuous flow of posts could be exploited in other scenarios.
机译:随着社交网络应用程序生成的数据的快速增长,知识生成的新范例正在打开。本文介绍了人群显式情感分析(CESA)作为社交媒体环境中情感分析的一种方法。与显式语义分析类似,微博帖子由预定义的文档集合索引。在CESA中,这些文件是根据社交流中常见的情感表达建立的。这样,文本就可以投射到感觉或情感上。此过程在潜在语义分析中执行。一些简单的正则表达式(例如,“我感觉X”,考虑到X代表一种情感或感觉)被用于抓取大量微博帖子,以生成具有清晰极性值的情感状态的文本表示(例如,生气,快乐,悲伤,自信等)。这样,可以根据这些感觉根据与文本表示的距离来为新帖子建立索引。该方法适用于处理社交媒体出版物的许多情况,并且可以轻松实现其他语言的实现。特别是,我们使用英语和西班牙语数据集评估了极性分类系统。结果表明,CESA是一种有效的情感分析解决方案,在其他情况下,可以采用类似的方法来从职位的连续流中建立模型。

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