AbstractIn combinatorial optimization problems that exhibit phase transition it is a frequently observed phenomenon that the algorithmically hard instances are concentrated around the phase transition region. The location, the size and sometimes the mere existence of this critical region, however, may depend on several factors: on the choice of an “order parameter”, on the solving algorithm or on the probabilistic model. We investigate a large class of graph optimization problems and show that this concentration of hardness is in fact a more general phenomenon, if we focus on the complexity of finding or approximating the optimal value (such as the size of a maximum clique), rather than finding a witness (an actual maximum clique). Specific...
AbstractThis paper analyzes the resolution complexity of two random constraint satisfaction problem ...
What makes an algorithmic problem easy or hard? Many general algorithmic techniques arising from de...
AbstractOur motivation for this work is the remarkable discovery that many large-scale real-world gr...
AbstractIn combinatorial optimization problems that exhibit phase transition it is a frequently obse...
We look at the empirical complexity of the maximum clique problem, the graph colouring problem, and ...
At present, most of the important computational problems - be they decision, search, or optimization...
Clique-width is a graph parameter that measures in a certain sense the complexity of a graph. Hard g...
AbstractIn recent years, numerous studies have observed that many hard combinatorial decision proble...
Many graph properties are expressible in first order logic. Whether a graph contains a clique or a d...
AbstractThe phase transition in binary constraint satisfaction problems, i.e. the transition from a ...
AbstractAn empirical study of randomly generated binary constraint satisfaction problems reveals tha...
The edge-percolation and vertex-percolation random graph models start with an arbitrary graph G, and...
Given an undirected graph, we consider the two problems of combinatorial optimization, which ask tha...
A generic NP-complete graph problem is described. The calculation of certain predicate on the graph ...
We prove that, unless any problem in NP can be solved in proba-bilistic polynomial time, for any >...
AbstractThis paper analyzes the resolution complexity of two random constraint satisfaction problem ...
What makes an algorithmic problem easy or hard? Many general algorithmic techniques arising from de...
AbstractOur motivation for this work is the remarkable discovery that many large-scale real-world gr...
AbstractIn combinatorial optimization problems that exhibit phase transition it is a frequently obse...
We look at the empirical complexity of the maximum clique problem, the graph colouring problem, and ...
At present, most of the important computational problems - be they decision, search, or optimization...
Clique-width is a graph parameter that measures in a certain sense the complexity of a graph. Hard g...
AbstractIn recent years, numerous studies have observed that many hard combinatorial decision proble...
Many graph properties are expressible in first order logic. Whether a graph contains a clique or a d...
AbstractThe phase transition in binary constraint satisfaction problems, i.e. the transition from a ...
AbstractAn empirical study of randomly generated binary constraint satisfaction problems reveals tha...
The edge-percolation and vertex-percolation random graph models start with an arbitrary graph G, and...
Given an undirected graph, we consider the two problems of combinatorial optimization, which ask tha...
A generic NP-complete graph problem is described. The calculation of certain predicate on the graph ...
We prove that, unless any problem in NP can be solved in proba-bilistic polynomial time, for any >...
AbstractThis paper analyzes the resolution complexity of two random constraint satisfaction problem ...
What makes an algorithmic problem easy or hard? Many general algorithmic techniques arising from de...
AbstractOur motivation for this work is the remarkable discovery that many large-scale real-world gr...