Ebook: Dynamics On and Of Complex Networks III: Machine Learning and Statistical Physics Approaches
- Tags: Physics, Data-driven Science Modeling and Theory Building, Complexity, Computational Social Sciences, Complex Systems
- Series: Springer Proceedings in Complexity
- Year: 2019
- Publisher: Springer International Publishing
- Edition: 1st ed.
- Language: English
- pdf
This book bridges the gap between advances in the communities of computer science and physics--namely machine learning and statistical physics. It contains diverse but relevant topics in statistical physics, complex systems, network theory, and machine learning. Examples of such topics are: predicting missing links, higher-order generative modeling of networks, inferring network structure by tracking the evolution and dynamics of digital traces, recommender systems, and diffusion processes.
The book contains extended versions of high-quality submissions received at the workshop, Dynamics On and Of Complex Networks (doocn.org), together with new invited contributions. The chapters will benefit a diverse community of researchers. The book is suitable for graduate students, postdoctoral researchers and professors of various disciplines including sociology, physics, mathematics, and computer science.