About us
We are a research group dedicated to the understanding of the structure and of the dynamics of complex systems using tools from statistical physics, nonlinear dynamics, differential geometry, information theory, statistical inference, and deep learning. Current research topics include:
- Embedding of complex networks in hyperbolic space
- Dimension reduction of dynamical processes on large networks (neuronal, epidemiological, synchronization, percolation)
- Detection of critical species from co-occurrence patterns in ecological data
- Deep learning dynamical processes on complex networks from time series
- Inference of connectomes from neural activity data
- Community and hierarchical structures of networks