| Literature DB >> 33820918 |
Kimitaka Asatani1, Hiroko Yamano2, Takeshi Sakaki3, Ichiro Sakata3.
Abstract
Despite the intensive study of the viral spread of fake news in political echo chambers (ECs) on social networking services (SNSs), little is known regarding the underlying structure of the daily information spread in these ECs. Moreover, the effect of SNSs on opinion polarisation is still unclear in terms of pluralistic information access or selective exposure to opinions in an SNS. In this study, we confirmed the steady, highly independent nature of left- and right-leaning ECs, both of which are composed of approximately 250,000 users, from a year-long reply/retweet network of 42 million Japanese Twitter users. We found that both communities have similarly efficient information spreading networks with densely connected and core-periphery structures. Core nodes resonate in the early stages of information cascades, and unilaterally transmit information to peripheral nodes. Each EC has resonant core users who amplify and steadily spread information to a quarter of a million users. In addition, we confirmed the existence of extremely aggressive users of ECs who co-reply/retweet each other. The connection between these users and top influencers suggests that the extreme opinions of the former group affect the entire community through the top influencers.Entities:
Year: 2021 PMID: 33820918 PMCID: PMC8021571 DOI: 10.1038/s41598-021-86750-w
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1(a) left Visualisation of 42 million Japanese Twitter users. Each dot corresponds to a user coloured according to his/her cluster. Users are embedded in a 2D space with LINE[50] (network representation learning) and UMAP[51] (dimension reduction). The manually annotated labels of the top 15 clusters based on the number of users are plotted. (a), right Visualisation of the left- and right-leaning political ECs: The users in subcluster 11.02 (left EC) are coloured blue, and those in 11.01 (right EC) are coloured red. The top 20 influencers of each subcluster are plotted with their user names. (b) Ratio of clusters containing the origins of retweets/replies from the left- and right-leaning ECs. c Daily internal information ratio (the ratio of the origins of retweets/replies made by users of the EC in the same cluster).
Details of the left- and right-leaning ECs.
| Left EC | Right EC | |
|---|---|---|
| #Users | 251,036 | 269,791 |
| #Retweets/replies | 13,371,458 | 9,266,349 |
| Top TF-IDF words (Translated to English) | Japan, Abe, National, Liberal Democratic Party, Abe administration, Member of Parliament, Prime Minister Abe, Problem, | South Korea, Japan, Member of parliament, China, Japanese, People, Opposition party, North Korea, Issue, Internet, Communist party, |
| Top influencers | Kikko_no_blog, knife9000, Dgoutokuji, KazuhiroSoda, TomoMachi, nogutiya, ISOKO_MOCHIZUKI, shiikazuo, wanpakuten, Beriozka1917 | Katsuyatakasu, hyakutanaoki, Sankei_news, anonymous201504, KadotaRyusho, takenoma, smith796000, arimoto_kaori, SatoMasahisa, dappi2019, |
Figure 2Sentiment score of tweets in left-(a) and right-leaning ECs (b) and other communities (c). The distribution of the sentiment score of highly replied/retweeted tweets (replied/retweeted more than 1000 times) and other tweets are plotted in each figure. The sentiment score of a tweet is calculated using the Google Natural Language API[52] for 3,000 sampled tweets of each group.
Figure 3Dense core structure of a political EC: (a) In-degree (the number of retweeted/replied users) distribution of the left and right ECs with other communities. (b) Out-degree (the number of reply/retweet users) distribution of the left and right ECs with other communities. (c) Scatter plot of each community. The horizontal axis indicates the Gini indicator of degree distributions and the vertical axis indicates the average number of neighbours.
Figure 4Network visualisation of the top 100 influencers (blue/red) and co-reply/retweet core users (light dark blue/dark red) of the EC communities: (a) Reply/retweet network of left EC. (b) The largest connected component of co-reply/retweet network of the left EC. 11 top influencer is not included in the component. (c) Reply/retweet network of right EC. (d) The largest connected component of co-reply/retweet network of the right EC. 30 top influencer are not included in the component.
Figure 5Word cloud[54] visualisation of top frequently tweeted words of each group of the core users in each EC: The top 50 exclusively frequent words in the influencer/co-reply/retweet core for both groups are listed. The words are limited to words tweeted more than 30 times per day in each set of top 100 users. Personal information and country or place names are concealed for privacy reasons.
Figure 6Role of influencers in information (reply/retweet) spreading in the left and right ECs: (a) The number (millions) of tweets transferred between groups according to the top 1% influencers/others of left EC/right EC and other subclusters. (b) Timeline of the average participation ratio of the top 1% influencers in the highly replied/retweeted tweets (retweeted/replied more than 1000 times) in each EC. The tweets arranged in the time series are divided into 100 equal groups, and the ratio is calculated for each period. We ignore the few tweets one week after the first reply/retweet.