论文标题
关键字的指标,以了解转发与每个类别中的差异
The metrics of keywords to understand the difference between Retweet and Like in each category
论文作者
论文摘要
这项研究的目的是阐明哪种新闻很容易转发,并且很容易喜欢哪种新闻。我们认为这些动作(转发和喜好)对用户具有不同的含义。了解这种差异对于理解人们对Twitter的兴趣很重要。为了分析转发(RT)和Twitter上喜欢的差异,我们将重点介绍新闻标题中的单词出现。首先,我们计算基本统计数据,并确认包含新闻网址的推文与其他推文相比具有不同的RT和喜欢的趋势。接下来,我们比较了每个类别的RT和喜欢,并确认类别的趋势是不同的。因此,我们提出了指标,以阐明$ -Square测试中使用的每个类别的每个操作的差异,以执行针对该主题的分析。所提出的指标比简单的计数和TF-IDF更有用,用于提取有意义的单词以了解RT和喜欢之间的差异。我们使用拟议的指标分析了每个类别,并定量确认转发和喜好的作用差异取决于类别的内容。此外,通过按时间顺序汇总推文,结果表明了RT的趋势,就像单词列表一样,并阐明了每周的特征性单词与转发和喜好的时事如何相关。
The purpose of this study is to clarify what kind of news is easily retweeted and what kind of news is easily Liked. We believe these actions, retweeting and Liking, have different meanings for users. Understanding this difference is important for understanding people's interest in Twitter. To analyze the difference between retweets (RT) and Likes on Twitter in detail, we focus on word appearances in news titles. First, we calculate basic statistics and confirm that tweets containing news URLs have different RT and Like tendencies compared to other tweets. Next, we compared RTs and Likes for each category and confirmed that the tendency of categories is different. Therefore, we propose metrics for clarifying the differences in each action for each category used in the $χ$-square test in order to perform an analysis focusing on the topic. The proposed metrics are more useful than simple counts and TF-IDF for extracting meaningful words to understand the difference between RTs and Likes. We analyzed each category using the proposed metrics and quantitatively confirmed that the difference in the role of retweeting and Liking appeared in the content depending on the category. Moreover, by aggregating tweets chronologically, the results showed the trend of RT and Like as a list of words and clarified how the characteristic words of each week were related to current events for retweeting and Liking.