The number one criticism of average-case analysis is that we do not actually know the probability distribution of real-world inputs. Thus, analyzing an algorithm on some random model has no implications for practical performance. At its core, this criticism doubts the existence of external validity, i.e., it assumes that algorithmic behavior on the somewhat simple and clean models does not translate beyond the models to practical performance real-world input. With this paper, we provide a first step towards studying the question of external validity systematically. To this end, we evaluate the performance of six graph algorithms on a collection of 2745 sparse real-world networks depending on two properties; the heterogeneity (variance in th...
When using snowball sampling to estimate exponential random graph model (ERGM) parameters for very l...
The degree variance has been proposed for many years to study the topology of a network. It can be u...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
The number one criticism of average-case analysis is that we do not actually know the probability di...
Here you find supplemental material for our paper On the External Validity of Average-Case Analyse...
Data All networks from networkrepository.com [1] with at most 1M edges (fall 2020). Weights and edg...
International audienceIn recent years, researchers proposed several algorithms that compute metric q...
The theory of random graphs has been mainly concerned with structural properties, in particular the ...
Suppose we want to construct some structure on a bounded-degree graph, e.g., an almost maximum match...
The exponential-family random graph models (ERGMs) have emerged as an important framework for modeli...
In this book, we study random graphs as models for real-world networks. Since 1999, many real-world ...
The field of network science is a highly interdisciplinary area; for the empirical analysis of netwo...
A tutorial discussion is presented about the Exponential Random Graph Model (ERGM) of Social Network...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
Mean field theory models of percolation on networks provide analytic estimates of network robustness...
When using snowball sampling to estimate exponential random graph model (ERGM) parameters for very l...
The degree variance has been proposed for many years to study the topology of a network. It can be u...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
The number one criticism of average-case analysis is that we do not actually know the probability di...
Here you find supplemental material for our paper On the External Validity of Average-Case Analyse...
Data All networks from networkrepository.com [1] with at most 1M edges (fall 2020). Weights and edg...
International audienceIn recent years, researchers proposed several algorithms that compute metric q...
The theory of random graphs has been mainly concerned with structural properties, in particular the ...
Suppose we want to construct some structure on a bounded-degree graph, e.g., an almost maximum match...
The exponential-family random graph models (ERGMs) have emerged as an important framework for modeli...
In this book, we study random graphs as models for real-world networks. Since 1999, many real-world ...
The field of network science is a highly interdisciplinary area; for the empirical analysis of netwo...
A tutorial discussion is presented about the Exponential Random Graph Model (ERGM) of Social Network...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...
Mean field theory models of percolation on networks provide analytic estimates of network robustness...
When using snowball sampling to estimate exponential random graph model (ERGM) parameters for very l...
The degree variance has been proposed for many years to study the topology of a network. It can be u...
We study a number of graph exploration problems in the following natural scenario: an algorithm star...