Data_Sheet_1_Topical Alignment in Online Social Systems.pdf
Understanding the dynamics of social interactions is crucial to comprehend human behavior. The emergence of online social media has enabled access to data regarding people relationships at a large scale. Twitter, specifically, is an information oriented network, with users sharing and consuming information. In this work, we study whether users tend to be in contact with people interested in similar topics, i.e., if they are topically aligned. To do so, we propose an approach based on the use of hashtags to extract information topics from Twitter messages and model users' interests. Our results show that, on average, users are connected with other users similar to them. Furthermore, we show that topical alignment provides interesting information that can eventually allow inferring users' connectivity. Our work, besides providing a way to assess the topical similarity of users, quantifies topical alignment among individuals, contributing to a better understanding of how complex social systems are structured.
History
Usage metrics
Categories
- Classical Physics not elsewhere classified
- Biophysics
- Quantum Physics not elsewhere classified
- Physical Chemistry of Materials
- Solar System, Solar Physics, Planets and Exoplanets
- Condensed Matter Physics not elsewhere classified
- Mathematical Physics not elsewhere classified
- Applied Physics
- Tropospheric and Stratospheric Physics
- Computational Physics
- Condensed Matter Physics
- Particle Physics
- Plasma Physics
- Mesospheric, Ionospheric and Magnetospheric Physics
- High Energy Astrophysics; Cosmic Rays
- Space and Solar Physics
- Cloud Physics
- Astrophysics
- Photonics, Optoelectronics and Optical Communications
- Classical and Physical Optics
- Physical Chemistry not elsewhere classified