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Understanding Socio-Cultural Factors related to Obesity: Sentiment Analysis on related Tweets

机译:了解肥胖相关的社会文化因素:相关推文的情感分析

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Objective We aim to better understand socio-cultural factors (i.e., attitudes or perceptions of cultural groups) associated with food consumption and weight loss via sentiment analysis on tweets, short messages from Twitter. Introduction Obesity can lead to the death of at least 2.8 million people each year 1 , yet the rate of obesity around the world has continuously increased over the past 30 years 1 . Societal changes, including increased food consumption and decreased physical activity, have been determined as two of the main drivers behind the current obesity pandemic 2 . Examining socio-cultural factors (i.e., attitudes or perceptions of cultural groups) 3 associated with food consumption and weight loss can provide important insights to guide effective interventions and a novel surveillance approach to characterize population obesity trends from sociological perspectives. The primary goal of this study is to examine socio-cultural factors associated with food consumption and weight loss by conducting sentiment analysis on related online chatters. The secondary goal is to discuss the potential implications of being exposed to these different chatters in the online environment. Scientific evidence in support of using social media to understand socio-cultural factors and its potential implications can be illustrated in two concise assertions. First, online chatters, including discussions on social media, have been shown to be an effective data source for understanding public interests 4,5 . Second, prolonged participation in social media has been suggested to have impacts on users 6–8 . Methods In this study, we examined Twitter ( www.twitter.com ), a highly popular, free-to-use, micro-blogging social media platform that can instantly broadcast short messages to the world. These short messages are called Tweets and we collected weight loss related and food consumption related Tweets using Python library called Tweepy 9 . We used hashtags from a previous study 10 , including #weightloss , #diet , #fitness , and #health for collecting weight loss related tweets. Similarly, we used #Food , #FoodPorn , and #Foodie to collect food consumption related tweets. We then used a rule-based model called Vader 11 , a sentiment analysis tool (i.e., computational process of categorizing sentiment) developed for social media text, to measure tweets’ sentiment. We used the compound score, which is a normalized and weighted composite score that ranges from -1.0 (most negative) to 1.0 (most positive). Lastly, we conducted independent sample t -test to compare the sentiments of two types of tweets. Results We collected 81,535 (from 41,436 unique user ID) weight loss related tweets from August 30 th to September 2 nd of 2018 and 86,277 (from 36,977 unique user ID) food consumption related Tweets from August 28 th to September 2 nd of 2018. The mean sentiment score for weight loss related tweets was 0.17 (sample standard deviation: 0.39), whereas the mean sentiment for food consumption related Tweets was more positive, scoring 0.26 with sample standard deviation of 0.34. The independent sample t -test suggests that the sentiment difference between the two types of tweets is statistically significant (t=52.10, p .001). However, it is important note that the mean sentiment for both types of tweets was in the positive range. Conclusions We present preliminary findings concerning socio-cultural factors associated with food consumption and weight loss within twitter chatters. Our initial results suggest that individuals expressed more positive sentiment when tweeting about food consumption than when tweeting about weight loss. The results not only reflect the social norms of social media, Twitter in this particular study, but also suggest how social media can indirectly promote more food consumption over weight loss via social norms theory 12 and how online social norms can reach individual members. This is especially important for young adults, the main demographic user group for social media 13 , as they develop lasting health related habits and behaviors. Although in its infancy, our research suggests that online sociocultural environment could be a potential socio-environmental risk factor for obesity. The next step is to utilize the findings to create online sociocultural environment that can promote the healthy choices.
机译:目的我们旨在通过对推文的情感分析,Twitter的短消息来更好地了解与食物消耗和体重减轻相关的社会文化因素(即文化群体的态度或看法)。引言肥胖症每年可导致至少280万人死亡1,但在过去30年中,全世界肥胖症的发病率持续上升1。社会变化,包括增加食物消耗和减少体育锻炼,已被确定为当前肥胖大流行2的两个主要驱动因素。检查与食物消耗和体重减轻相关的社会文化因素(即文化群体的态度或看法)3可提供重要见解,以指导有效的干预措施,并提供一种新颖的监测方法,以社会学的角度表征人口肥胖趋势。这项研究的主要目的是通过对相关的在线聊天者进行情绪分析来研究与食物消耗和体重减轻相关的社会文化因素。第二个目标是讨论在线环境中与这些不同的聊天者接触的潜在影响。两个简洁的论断可以说明支持使用社交媒体理解社会文化因素及其潜在影响的科学证据。首先,在线聊天,包括在社交媒体上的讨论,已被证明是理解公众利益4,5的有效数据来源。第二,长期参与社交媒体已被建议对用户6-8产生影响。方法在本研究中,我们研究了Twitter(www.twitter.com),它是一种非常流行的免费使用的微博客社交媒体平台,可以立即向世界各地广播短消息。这些短消息称为Tweets,我们使用称为Tweepy 9的Python库收集了与减肥有关和与食物消耗有关的Tweets。我们使用来自先前研究10的标签,包括#weightloss,#diet,#fitness和#health来收集与减肥相关的推文。同样,我们使用#Food,#FoodPorn和#Foodie来收集与食物消费相关的推文。然后,我们使用了名为Vader 11的基于规则的模型,该模型是针对社交媒体文本开发的情感分析工具(即,对情感进行分类的计算过程),用于衡量推文的情感。我们使用了复合评分,这是标准化的加权综合评分,范围为-1.0(最负)至1.0(最正)。最后,我们进行了独立样本t检验以比较两种类型的推文的情绪。结果我们从2018年8月30日至9月2日收集了81,535条减肥相关推文(来自41,436个唯一用户ID),并于2018年8月28日至9月2日收集了86,277条减肥相关推文(来自36,977个唯一用户ID)。与减肥相关的推文的平均情绪得分为0.17(样本标准偏差:0.39),而与食品消费相关的推文的平均情绪得分更为积极,得分为0.26,样本标准差为0.34。独立样本t检验表明,两种类型的推文之间的情感差异具有统计学意义(t = 52.10,p <.001)。但是,重要的一点是,两种推文的平均情绪都在正值范围内。结论我们提供了有关推特聊天中与食物消耗和体重减轻相关的社会文化因素的初步发现。我们的初步结果表明,与发布减肥消息相比,发推特的人在食物消费方面表达的积极情绪更高。该结果不仅反映了社交媒体的社会规范,即本项特定研究中的Twitter,而且还提出了社交媒体如何通过社会规范理论12间接促进更多的食品消费而非减肥,以及在线社交规范如何达到个人成员的需求。这对于年轻人(社交媒体的主要人口统计用户组)13尤其重要,因为他们养成持久的健康相关习惯和行为。尽管尚处于起步阶段,但我们的研究表明,在线社会文化环境可能是肥胖的潜在社会环境风险因素。下一步是利用调查结果来创建可以促进健康选择的在线社会文化环境。

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