Integer Linear Programming (ILP) has a broad range of applications in various areas of artificial intelligence. Yet in spite of recent advances, we still lack a thorough understanding of which structural restrictions make ILP tractable. Here we study ILP instances consisting of a small number of “global” variables and/or constraints such that the remaining part of the instance consists of small and otherwise independent components; this is captured in terms of a structural measure we call fracture backdoors which generalizes, for instance, the well-studied class of N-fold ILP instances. Our main contributions can be divided into three parts. First, we formally develop fracture backdoors and obtain exact and approximation algorithms f...
A backdoor set of a CSP instance is a set of variables whose instantiation moves the instance into a...
In Mixed Integer Linear Programming (MIP), a (strong) backdoor is a "small" subset of an instance's ...
A backdoor in a finite-domain CSP instance is a set of variables where each possible instantiation m...
Integer Linear Programming (ILP) has a broad range of applications in various areas of artificial in...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
Integer Linear Programming (ILP) is among the most successful and general paradigms for solving comp...
Integer Linear Programming (ILP) is among the most successful and general paradigms for solving comp...
Integer Linear Programming (ILP) and its mixed variant (MILP) are archetypical examples of NP-comple...
Recently a number of algorithmic results have appeared which show the tractability of Integer Linear...
Integer linear programs (ILPs) are a widely applied framework for dealing with combinatorial problem...
The thesis argues the case for exploiting certain structures in integer linear programs. Integer ...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
We show that CSP is fixed-parameter tractable when parameterized by the treewidth of a backdoor into...
International audienceIn the context of CSPs, a strong backdoor is a subset of variables such that e...
A backdoor set of a CSP instance is a set of variables whose instantiation moves the instance into a...
In Mixed Integer Linear Programming (MIP), a (strong) backdoor is a "small" subset of an instance's ...
A backdoor in a finite-domain CSP instance is a set of variables where each possible instantiation m...
Integer Linear Programming (ILP) has a broad range of applications in various areas of artificial in...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
Integer Linear Programming (ILP) is among the most successful and general paradigms for solving comp...
Integer Linear Programming (ILP) is among the most successful and general paradigms for solving comp...
Integer Linear Programming (ILP) and its mixed variant (MILP) are archetypical examples of NP-comple...
Recently a number of algorithmic results have appeared which show the tractability of Integer Linear...
Integer linear programs (ILPs) are a widely applied framework for dealing with combinatorial problem...
The thesis argues the case for exploiting certain structures in integer linear programs. Integer ...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
We show that CSP is fixed-parameter tractable when parameterized by the treewidth of a backdoor into...
International audienceIn the context of CSPs, a strong backdoor is a subset of variables such that e...
A backdoor set of a CSP instance is a set of variables whose instantiation moves the instance into a...
In Mixed Integer Linear Programming (MIP), a (strong) backdoor is a "small" subset of an instance's ...
A backdoor in a finite-domain CSP instance is a set of variables where each possible instantiation m...