ABSTRACT
We propose research directions to model a holistic and general diffusion framework by considering heterogeneous social signals as contextual inputs and by incorporating universal components of real-world diffusion dynamics.
- C. Aggarwal and T. Abdelzaher. 2013. Social sensing. In Managing and mining sensor data. Springer, 237--297. Google ScholarCross Ref
- A. Barabasi. 2005. The origin of bursts and heavy tails in human dynamics. Nature 435, 7039 (2005), 207--211. Google ScholarCross Ref
- M. Gomez-Rodriguez, J. Leskovec, and B. Schölkopf. 2013. Modeling Information Propagation with Survival Theory.. In ICML. 666-674.Google ScholarDigital Library
- R. Jurdak, K. Zhao, J. Liu, M. AbouJaoude, M. Cameron, and D. Newth. 2015. Understanding human mobility from Twitter. PLOS ONE 10, 7 (2015), e0131469.Google ScholarCross Ref
- M. Kim. 2015. Dynamics of Information Diffusion. Ph.D. Dissertation. The Australian National University.Google Scholar
- M. Kim, D. Newth, and P. Christen. 2013. Modeling dynamics of meta-populations with a probabilistic approach: global diffusion in social media. In CIKM. 489-498. Google ScholarDigital Library
- M. Shahzamal, R. Jurdak, R. Arablouei, M. Kim, K. Thilakarathna, and B. Mans. 2017. Airborne Disease Propagation on Large Scale Social Contact Networks. In SocialSens.Google Scholar
- H. Shen, D. Wang, C. Song, and A. Barabási. 2014. Modeling and Predicting Popularity Dynamics via Reinforced Poisson Processes. In AAAI.Google Scholar
- Q. Zhao, M. Erdogdu, H. He, A. Rajaraman, and J. Leskovec. 2015. SEISMIC: A Self-Exciting Point Process Model for Predicting Tweet Popularity. In KDD. Google ScholarDigital Library
Recommendations
Real-world diffusion dynamics based on point process approaches: a review
AbstractBursts in human and natural activities are highly clustered in time or space, suggesting that these activities are influenced by previous events within the social or natural system. Such bursty behavior in the real world conveys substantial ...
Anomalous information diffusion in social networks: Twitter and Digg
Highlights- A new characteristic of diffusion type in social networks is introduced.
- ...
AbstractDiffusion is an important phenomenon in different sciences like epidemiology, economy, biology and social sciences. Information diffusion is mainly important for two reasons, to study and forecast diffusion growth and to find the ...
Graphical abstractDisplay Omitted
Model for Heterogeneous Diffusion
A revertible kinetic equation for Brownian particles is introduced when the turning frequency and the collision kernel are spatially heterogeneous. We derive an anisotropic diffusion equation by taking the singular limit of the kinetic equation and then ...
Comments