An activity window model for social interaction structure on Twitter
The development of online social environments has changed the manner of social interaction and communication, which are driven by individual human actions. Thus temporal variations in interaction networks are deeply impacted by the temporal dimension of human activity. In this paper, we address this...
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Online Access: | https://doi.org/10.1515/phys-2018-0087 |
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doaj-8d591839eeee4d90bb5dcc20644bffd02021-09-05T13:59:35ZengDe GruyterOpen Physics2391-54712018-11-0116168569110.1515/phys-2018-0087phys-2018-0087An activity window model for social interaction structure on TwitterZhang Jun0Xia Haoxiang1Wang Le-zhi2Li Peng3Quadir Benazir4Institute of System Engineering Dalian University of Technology, Business School, Shandong University of Technology, ShandongChinaInstitute of System Engineering Dalian University of Technology, DalianChinaSchool of Electrical, Computer and Energy Engineering Arizona State University, Arizona, USABusiness School, Shandong University of Technology, ShandongChinaBusiness School, Shandong University of Technology, ShandongChinaThe development of online social environments has changed the manner of social interaction and communication, which are driven by individual human actions. Thus temporal variations in interaction networks are deeply impacted by the temporal dimension of human activity. In this paper, we address this issue through a detailed analysis on the retweets and comments of 550,000 Twitter users. We propose a temporal network model to represent the interaction network on Twitter, in which each node contains an activity window and the emergence of the edges between nodes are dependent on it. Specifically, the activity window is defined as the backtracking length from the message flow posted by the user’s friend, which represents the user’s social ability. It complies with a power-law distribution with an exponential cut-off. The interaction network is sparser and more clustered than the followee-follower network, in which the interaction stability and burstiness fluctuate with the activity window or with the degree to which the two users are involved in the communication. Finally, the effect of activity window on the aggregating degrees of the interaction network is examined.https://doi.org/10.1515/phys-2018-0087activity windowtemporal networkinteraction network89.75.fb89.70.hj |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhang Jun Xia Haoxiang Wang Le-zhi Li Peng Quadir Benazir |
spellingShingle |
Zhang Jun Xia Haoxiang Wang Le-zhi Li Peng Quadir Benazir An activity window model for social interaction structure on Twitter Open Physics activity window temporal network interaction network 89.75.fb 89.70.hj |
author_facet |
Zhang Jun Xia Haoxiang Wang Le-zhi Li Peng Quadir Benazir |
author_sort |
Zhang Jun |
title |
An activity window model for social interaction structure on Twitter |
title_short |
An activity window model for social interaction structure on Twitter |
title_full |
An activity window model for social interaction structure on Twitter |
title_fullStr |
An activity window model for social interaction structure on Twitter |
title_full_unstemmed |
An activity window model for social interaction structure on Twitter |
title_sort |
activity window model for social interaction structure on twitter |
publisher |
De Gruyter |
series |
Open Physics |
issn |
2391-5471 |
publishDate |
2018-11-01 |
description |
The development of online social environments has changed the manner of social interaction and communication, which are driven by individual human actions. Thus temporal variations in interaction networks are deeply impacted by the temporal dimension of human activity. In this paper, we address this issue through a detailed analysis on the retweets and comments of 550,000 Twitter users. We propose a temporal network model to represent the interaction network on Twitter, in which each node contains an activity window and the emergence of the edges between nodes are dependent on it. Specifically, the activity window is defined as the backtracking length from the message flow posted by the user’s friend, which represents the user’s social ability. It complies with a power-law distribution with an exponential cut-off. The interaction network is sparser and more clustered than the followee-follower network, in which the interaction stability and burstiness fluctuate with the activity window or with the degree to which the two users are involved in the communication. Finally, the effect of activity window on the aggregating degrees of the interaction network is examined. |
topic |
activity window temporal network interaction network 89.75.fb 89.70.hj |
url |
https://doi.org/10.1515/phys-2018-0087 |
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