A fundamental issue of network data science is the ability to discern observed features that can be expected at random from those beyond such expectations. Configuration models play a crucial role there, allowing us to compare observations against degree-corrected null-models. Nonetheless, existing formulations have limited large-scale data analysis applications either because they require expensive Monte-Carlo simulations or lack the required flexibility to model real-world systems. With the generalized hypergeometric ensemble, we address both problems. To achieve this, we map the configuration model to an urn problem, where edges are represented as balls in an appropriately constructed urn. Doing so, we obtain the generalized hypergeometr...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Abstract A fundamental issue of network data science is the ability to discern observed features tha...
This thesis consits of a literature study and an investigation of a new problem. This new problem in...
This book supports researchers who need to generate random networks, or who are interested in the th...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Abstract A fundamental issue of network data science is the ability to discern observed features tha...
This thesis consits of a literature study and an investigation of a new problem. This new problem in...
This book supports researchers who need to generate random networks, or who are interested in the th...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
\u3cp\u3eDue to its ease of use, as well as its enormous flexibility in its degree structure, the co...
We consider the problem of modeling complex systems where little or nothing is known about the struc...