Sparsification is the process of decreasing the number of edges in a network while one or more topological properties are preserved. For probabilistic networks, sparsification has only been studied to preserve the expected degree of the nodes. In this work we introduce a sparsification method to preserve ego betweenness. Moreover, we study the effect of backboning and density on the resulting sparsified networks. Our experimental results show that the sparsification of high density networks can be used to efficiently and accurately estimate measures from the original network, with the choice of backboning algorithm only partially affecting the result
We propose a statistical model for graphs with a core-periphery structure. We give a precise notion ...
Network sparsification aims to reduce the number of edges of a network while maintaining its structu...
Abstract. It is often desirable that a probabilistic network is mono-tone, e.g., more severe symptom...
Abstract Sparsification is the process of decreasing the number of edges in a network while one or m...
Most queries on probabilistic networks assume a possible world semantic, which causes an exponential...
Modeling and analysis of imperfection in network data is essential in many applications such as prot...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
<p>The estimation error changes with the sparsity of directed random networks. There, the sparsity ...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Abstract We consider the problem of deleting edges from a Bayesian network for the purpose of simpli...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
Analysis of large network datasets has become increasingly important. Algorithms have been designed ...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Scatterplots of infection probabilities for localized (A) and dispersed (B) initial conditions for f...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
We propose a statistical model for graphs with a core-periphery structure. We give a precise notion ...
Network sparsification aims to reduce the number of edges of a network while maintaining its structu...
Abstract. It is often desirable that a probabilistic network is mono-tone, e.g., more severe symptom...
Abstract Sparsification is the process of decreasing the number of edges in a network while one or m...
Most queries on probabilistic networks assume a possible world semantic, which causes an exponential...
Modeling and analysis of imperfection in network data is essential in many applications such as prot...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
<p>The estimation error changes with the sparsity of directed random networks. There, the sparsity ...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Abstract We consider the problem of deleting edges from a Bayesian network for the purpose of simpli...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
Analysis of large network datasets has become increasingly important. Algorithms have been designed ...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Scatterplots of infection probabilities for localized (A) and dispersed (B) initial conditions for f...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
We propose a statistical model for graphs with a core-periphery structure. We give a precise notion ...
Network sparsification aims to reduce the number of edges of a network while maintaining its structu...
Abstract. It is often desirable that a probabilistic network is mono-tone, e.g., more severe symptom...