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Analyzing influence of emotional tweets on user relationships using Naive Bayes and dependency parsing

机译:利用天真贝叶斯和依赖解析分析情绪推文对用户关系的影响

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摘要

Twitter is one of the most popular social network services (SNS) applications, in which users can casually post their messages. Given that users can easily post what they feel, Twitter is widely used as a platform to express emotions. These emotional expressions are considered to possibly influence user relationships on Twitter. In our previous study, we analyzed this influence using emotional word dictionaries. However, we could not measure the emotion scores for the words not included in the dictionaries. To solve this problem, in this study, we use the Naive Bayes and consider dependency parsing, i.e., the structure of tweets and the relationships of words. Furthermore, we introduce a set of new measures, namely total positive emotion score (TPES), total negative emotion score (TNES), and total neutral emotion score (TNtES). Based on these measures, we define a new composite index (CI) for emotion scores, which is a normalized value in the range of 0 to 1. We categorize users into positive and negative groups based on the composite index and test the difference of user relationships between these two groups with a statistical method. The result demonstrates that the relationships of positive users not only get better (i.e., the number increases) with time, but also tends to be mutual, which is consistent with the result of our previous study.
机译:Twitter是最受欢迎的社交网络服务(SNS)应用之一,用户可以随便发布消息。鉴于用户可以轻易发布他们的感受,Twitter被广泛用作表达情绪的平台。这些情绪表达式被认为可能影响推特上的用户关系。在我们以前的研究中,我们使用情绪词典分析了这种影响。但是,我们无法衡量词典中不包括的单词的情感分数。为了解决这个问题,在这项研究中,我们使用天真贝叶斯并考虑依赖解析,即推文的结构和词语的关系。此外,我们介绍了一套新措施,即总积极情绪评分(TPE),总负面情绪评分(TNES),以及全中性情绪评分(TNTES)。基于这些措施,我们为情感分数定义了一个新的综合指数(CI),它是0到1的标准化值。我们根据复合索引对用户分类为正面和负数,并测试用户的差异具有统计方法的这两组之间的关系。结果表明,正用户的关系不仅随时间变得更好(即,数字增加),而且往往是相互的,这与我们以前的研究结果一致。

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