Topic Brief: Burstiness, the tendency of interaction events to be heterogeneously distributed in time, is critical to information diffusion in ... Author: Le Song, College of Computing, Georgia Institute of Technology Abstract: Nowadays, large-scale human activity data from ...
Modeling Temporal Communication Networks And Dynamical Processes -
Burstiness, the tendency of interaction events to be heterogeneously distributed in time, is critical to information diffusion in ... Author: Le Song, College of Computing, Georgia Institute of Technology Abstract: Nowadays, large-scale human activity data from ... Abstract: Many networked systems of scientific interest–from food webs, to infrastructure, to human social systems–are ...
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- Burstiness, the tendency of interaction events to be heterogeneously distributed in time, is critical to information diffusion in ...
- Author: Le Song, College of Computing, Georgia Institute of Technology Abstract: Nowadays, large-scale human activity data from ...
- Abstract: Many networked systems of scientific interest–from food webs, to infrastructure, to human social systems–are ...
- Speaker: Mohammed Saqr Recorded: March 26, 2020 Short research paper Abstract: There has been significant efforts in ...
- IMA Data Science Seminar Speaker: Kevin Xu "Continuous-time probabilistic generative
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