International audienceDesigning plausible network models typically requires scholars to form a priori intuitions on the key drivers of network formation. Oftentimes, these intuitions are supported by the statistical estimation of a selection of network evolution processes which will form the basis of the model to be developed. Machine learning techniques have lately been introduced to assist the automatic discovery of generative models. These approaches may more broadly be described as "symbolic regression", where fundamental network dynamic functions, rather than just parameters, are evolved through genetic programming. This chapter first aims at reviewing the principles, efforts and the emerging literature in this direction, which is ve...
Complex networks have attracted a large amount of research attention, especially over the past decad...
Statistical models of networks are widely used to reason about the properties of complex systems—whe...
Networks are continuously growing in complexity, which creates challenges for determining their most...
International audienceDesigning plausible network models typically requires scholars to form a prior...
International audienceNetworks are a powerful abstraction with applicability to a variety of scienti...
Research on probabilistic models of networks now spans a wide variety of fields, including physics, ...
A method for the reliable generation of random networks that model known social networks is becoming...
In this thesis, I will introduce two methodological tools for understanding the evolution of social ...
A complex network is an abstract representation of an intricate system of interrelated elements wher...
Blockmodels have been studied for many years in social network analysis. In blockmodelling, the goal...
Abstract Background Recent genomic and bioinformatic advances have motivated the development of nume...
Systems science is widely used for population, public health, traffic, hazard, and other scientific ...
Abstract Our understanding of real-world connected systems has benefited from studying their evoluti...
The study of complex social networks is an inherently interdisciplinary research area with applicati...
Different network models have been suggested for the topology underlying complex interactions in nat...
Complex networks have attracted a large amount of research attention, especially over the past decad...
Statistical models of networks are widely used to reason about the properties of complex systems—whe...
Networks are continuously growing in complexity, which creates challenges for determining their most...
International audienceDesigning plausible network models typically requires scholars to form a prior...
International audienceNetworks are a powerful abstraction with applicability to a variety of scienti...
Research on probabilistic models of networks now spans a wide variety of fields, including physics, ...
A method for the reliable generation of random networks that model known social networks is becoming...
In this thesis, I will introduce two methodological tools for understanding the evolution of social ...
A complex network is an abstract representation of an intricate system of interrelated elements wher...
Blockmodels have been studied for many years in social network analysis. In blockmodelling, the goal...
Abstract Background Recent genomic and bioinformatic advances have motivated the development of nume...
Systems science is widely used for population, public health, traffic, hazard, and other scientific ...
Abstract Our understanding of real-world connected systems has benefited from studying their evoluti...
The study of complex social networks is an inherently interdisciplinary research area with applicati...
Different network models have been suggested for the topology underlying complex interactions in nat...
Complex networks have attracted a large amount of research attention, especially over the past decad...
Statistical models of networks are widely used to reason about the properties of complex systems—whe...
Networks are continuously growing in complexity, which creates challenges for determining their most...