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Machine learning meets complex networks via coalescent embedding in the hyperbolic space.

Alessandro MuscoloniJosephine Maria ThomasSara CiucciGinestra BianconiCarlo Vittorio Cannistraci
Published in: Nature communications (2017)
Physicists recently observed that realistic complex networks emerge as discrete samples from a continuous hyperbolic geometry enclosed in a circle: the radius represents the node centrality and the angular displacement between two nodes resembles their topological proximity. The hyperbolic circle aims to become a universal space of representation and analysis of many real networks. Yet, inferring the angular coordinates to map a real network back to its latent geometry remains a challenging inverse problem. Here, we show that intelligent machines for unsupervised recognition and visualization of similarities in big data can also infer the network angular coordinates of the hyperbolic model according to a geometrical organization that we term "angular coalescence." Based on this phenomenon, we propose a class of algorithms that offers fast and accurate "coalescent embedding" in the hyperbolic circle even for large networks. This computational solution to an inverse problem in physics of complex systems favors the application of network latent geometry techniques in disciplines dealing with big network data analysis including biology, medicine, and social science.
Keyphrases
  • machine learning
  • big data
  • artificial intelligence
  • data analysis
  • deep learning
  • public health
  • mental health
  • squamous cell carcinoma
  • high resolution
  • mass spectrometry