The connectivity of a network contains information about the relationships between nodes, which can denote interactions, associations, or dependencies. We show that this information can be analyzed by measuring the uncertainty (and certainty) contained in paths along nodes and links in a network. Specifically, we derive from first principles a measure known as effective information and describe its behavior in common network models. Networks with higher effective information contain more information in the relationships between nodes. We show how subgraphs of nodes can be grouped into macronodes, reducing the size of a network while increasing its effective information (a phenomenon known as causal emergence). We find that informative highe...
Complex networks usually exhibit a rich architecture organized over multiple intertwined scales. Inf...
2018-11-12Complex systems can be represented as networks of interacting entities or nodes. In numero...
Brain networks are widely used models to understand the topology and organization of the brain. Thes...
Growing networks have a causal structure. We show that the causality strongly influences the scaling...
From the spread of disease across a population to the dispersion of vehicular traffic in cities, man...
One of the goals of complex network analysis is to identify the most influential nodes, i.e., the no...
The causal structure of any system can be analyzed at a multitude of spatial and temporal scales. It...
We address the practical problems of estimating the information relations that characterize large ne...
Abstract. Complex networks are characterized by highly heterogeneous distributions of links, often p...
Revealing the structural features of a complex system from the observed collective dynamics is a fun...
Simple network models that focus only on graph topology or, at best, basic interactions are often in...
Betweenness measures provide quantitative tools to pick out fine details from the massive amount of ...
Complex systems are large collections of entities that organize themselves into non-trivial structur...
As for many complex systems, network structures are important as their backbone. From research on dy...
This thesis is a contribution to a deeper understanding of how information propagates and what this ...
Complex networks usually exhibit a rich architecture organized over multiple intertwined scales. Inf...
2018-11-12Complex systems can be represented as networks of interacting entities or nodes. In numero...
Brain networks are widely used models to understand the topology and organization of the brain. Thes...
Growing networks have a causal structure. We show that the causality strongly influences the scaling...
From the spread of disease across a population to the dispersion of vehicular traffic in cities, man...
One of the goals of complex network analysis is to identify the most influential nodes, i.e., the no...
The causal structure of any system can be analyzed at a multitude of spatial and temporal scales. It...
We address the practical problems of estimating the information relations that characterize large ne...
Abstract. Complex networks are characterized by highly heterogeneous distributions of links, often p...
Revealing the structural features of a complex system from the observed collective dynamics is a fun...
Simple network models that focus only on graph topology or, at best, basic interactions are often in...
Betweenness measures provide quantitative tools to pick out fine details from the massive amount of ...
Complex systems are large collections of entities that organize themselves into non-trivial structur...
As for many complex systems, network structures are important as their backbone. From research on dy...
This thesis is a contribution to a deeper understanding of how information propagates and what this ...
Complex networks usually exhibit a rich architecture organized over multiple intertwined scales. Inf...
2018-11-12Complex systems can be represented as networks of interacting entities or nodes. In numero...
Brain networks are widely used models to understand the topology and organization of the brain. Thes...