Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidean instances, but little is known about metric instances drawn from distributions other than the Euclidean. This motivates our study of random metric instances for optimization problems obtained as follows: Every edge of a complete graph gets a weight drawn independently at random. The distance between two nodes is then the length of a shortest path (with respect to the weights drawn) that connects these nodes. We prove structural properties of the random shortest path metrics generated in this way. Our main structural contribution is the construction of a good clustering. Then we apply these findings to analyze the approximation ratios of heu...
Suppose you have to route agents through a network from a source node to a destination node in some ...
The determination of the shortest path in a given graph i.e. the classical shortest path problem (CS...
Large probabilistic graphs arise in various domains spanning from social networks to biological and ...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Simple heuristics often show a remarkable performance in practice for optimization problems. Worst-c...
The facility location problem is an NP-hard optimization problem. Therefore, approximation algorithm...
Consider a weighted or unweighted k-nearest neighbor graph that has been built on n data points draw...
There have lately been several suggestions for parametrized distances on a graph that generalize the...
For some positive constant 0, we give a ( 32 − 0)-approximation algorithm for the following problem:...
We consider the problem of determining the proportion of edges that are discovered in a random graph...
Here I will present an introduction to the results that have been recently obtained in constraint op...
AbstractWe consider the problem of finding the shortest distance between all pairs of vertices in a ...
One of the basic streams of modern statistics physics is an effort to understand the frustration and...
Suppose you have to route agents through a network from a source node to a destination node in some ...
The determination of the shortest path in a given graph i.e. the classical shortest path problem (CS...
Large probabilistic graphs arise in various domains spanning from social networks to biological and ...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Probabilistic analysis for metric optimization problems has mostly been conducted on random Euclidea...
Simple heuristics often show a remarkable performance in practice for optimization problems. Worst-c...
The facility location problem is an NP-hard optimization problem. Therefore, approximation algorithm...
Consider a weighted or unweighted k-nearest neighbor graph that has been built on n data points draw...
There have lately been several suggestions for parametrized distances on a graph that generalize the...
For some positive constant 0, we give a ( 32 − 0)-approximation algorithm for the following problem:...
We consider the problem of determining the proportion of edges that are discovered in a random graph...
Here I will present an introduction to the results that have been recently obtained in constraint op...
AbstractWe consider the problem of finding the shortest distance between all pairs of vertices in a ...
One of the basic streams of modern statistics physics is an effort to understand the frustration and...
Suppose you have to route agents through a network from a source node to a destination node in some ...
The determination of the shortest path in a given graph i.e. the classical shortest path problem (CS...
Large probabilistic graphs arise in various domains spanning from social networks to biological and ...