The Relationships Between Users' Negative Tweets, Topic Choices, and Subjective Well-Being in Japan

The Relationships Between Users' Negative Tweets, Topic Choices, and Subjective Well-Being in Japan

Shaoyu Ye, Kei Wakabayashi, Kevin K. W. Ho, Muhammad Haseeb Khan
DOI: 10.4018/978-1-7998-9016-4.ch013
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Abstract

This study examined the relationships between expressions in Tweets, topic choices, and subjective well-being among undergraduates in Japan. The authors conducted a survey with 304 college students and analyzed their Twitter posts using natural language processing (NLP). Based on those who posted over 50 tweets, the authors found that (1) users with higher levels of social skills had fewer negative tweets and higher levels of subjective well-being; (2) frequent users posted both positive and negative tweets but posted more negative than positive tweets; (3) users with fewer negative tweets or with more positive tweets had higher levels of subjective well-being; and (4) “safe” topics such as social events and personal interests had a positive correlation with the users' subjective well-being, while debatable topics such as politics and social issues had a negative correlation with the users' subjective well-being. The findings of this study provide the foundation for applying NLP to analyze the social media posts for businesses and services to understand their consumers' sentiments.
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Background And Research Questions

Relationship of Subjective Well-Being and Trust With Social Media Usage

Until now, little has been known about social media’s use on subjective well-being since there are no consistent results. For example, Jung et al. (2017) reported that overusing social media has a negative impact on users’ subjective well-being, whereas Skues et al. (2012) reported that social media reduces users’ levels of loneliness and improves their levels of subjective well-being. On the positive side, Johnson, Tanner, Lalla, and Kawalski (2013) suggested that social media can be used to maintain young people’s social capital, thus improving their subjective well-being. However, a recent meta-analysis by Liu, Baumeister, Yang, and Hu (2019) pointed out that social media use could harm users’ subjective well-being. However, heavy users of Facebook, Twitter, and Instagram seem to decrease their levels of subjective well-being, specifically, by increasing negative affective states rather than by decreasing positive states or life satisfaction—a pattern evident across all these three platforms (Wirtz, Tucker, Briggs, & Schoemann, 2021). Furthermore, Ye, Ho, and Zerbe (2021) indicated that the effects of these three platforms on users’ subjective well-being might be different due to their different use patterns and the people who they followed, as the users of Twitter only seemed to have the lowest levels of subjective well-being and highest levels of loneliness, whereas users of all the three platforms had the highest levels of subjective well-being and lowest levels of loneliness.

Trust also plays a role in people’s social media use; for example, deciding to follow another user or forward a message on social media is dependent on the degree of trust between the person and the source of the message (Abdullah, Nishioka, Tanaka, & Murayama, 2015). Furthermore, social media can be a tool for emotional expressions, as can be observed in posts and messages disseminated through such social media as Facebook and Twitter. In this way, social media can play a vital role in maintaining relationships. For example, an emotional message on Twitter could influence readers to be more likely to retweet the message and retweet it more quickly (Stieglitz & Linh, 2013).

Key Terms in this Chapter

Trust: It is a belief in the reliability and benevolence.

Social media: It is a term to describe a set of Web 2.0 application, which provide users platforms to interact with each other. User-generated content in a characteristics of social media.

Text Mining: It is a computation analysis of text, which aims to derive high quality information from the text for further analysis.

Natural Language Processing (NLP): It is a branch of artificial intelligence (AI), which focuses on the use of computers to understand human language, including both text and spoken language, like human beings.

Sentiment Analysis: It is the use of natural language process, text mining, and other techniques to study people’s opinion and emotion.

Subjective Well-Being: It is a person’s feeling on going well in his/her life. It contains two types of emotion, i.e., happiness and life satisfaction.

Twitter: It is a social media, which allows users to post and interact with short messages and is considered as microblogging. It is the most popular social media platform in Japan (as at 2021).

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