Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empirically, preprocessing is highly successful in practice, for example in state-of-the-art ILP-solvers like CPLEX. Motivated by this, previous work studied the existence of kernelizations for ILP related problems, e.g., for testing feasibility of Ax¿=¿b. In contrast to the observed success of CPLEX, however, the results were largely negative. Intuitively, practical instances have far more useful structure than the worst-case instances used to prove these lower bounds. In the present paper, we study the effect that subsystems that have (a Gaifman graph of) bounded treewidth or that are totally unimodular have on the kernelizability of the ILP feas...
We present a randomized algorithm which computes, for any fixed k, a tree decomposition of width at ...
We prove that graph problems with finite integer index have linear kernels on graphs of bounded expa...
Kernelization is a notion from parameterized complexity that captures the concept of efficient prepr...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Integer linear programs (ILPs) are a widely applied framework for dealing with combinatorial problem...
Integer Linear Programming (ILP) and its mixed variant (MILP) are archetypical examples of NP-comple...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
The notion of treewidth plays an important role in theoretical and practical studies of graph proble...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
In parameterized complexity each problem instance comes with a parameter k, and a parameterized prob...
Abstract. Using the framework of kernelization we study whether effi-cient preprocessing schemes for...
The purpose of this thesis is to give a mathematical analysis of the power of data reduction for dea...
Kernelization is the process of transforming the input of a combinatorial decision problem to an equ...
We present a randomized algorithm which computes, for any fixed k, a tree decomposition of width at ...
We prove that graph problems with finite integer index have linear kernels on graphs of bounded expa...
Kernelization is a notion from parameterized complexity that captures the concept of efficient prepr...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Kernelization is a theoretical formalization of efficient preprocessing for NP-hard problems. Empiri...
Integer linear programs (ILPs) are a widely applied framework for dealing with combinatorial problem...
Integer Linear Programming (ILP) and its mixed variant (MILP) are archetypical examples of NP-comple...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
The notion of treewidth plays an important role in theoretical and practical studies of graph proble...
Integer Linear Programming (ILP) can be seen as the archetypical problem for NP-complete optimizatio...
In parameterized complexity each problem instance comes with a parameter k, and a parameterized prob...
Abstract. Using the framework of kernelization we study whether effi-cient preprocessing schemes for...
The purpose of this thesis is to give a mathematical analysis of the power of data reduction for dea...
Kernelization is the process of transforming the input of a combinatorial decision problem to an equ...
We present a randomized algorithm which computes, for any fixed k, a tree decomposition of width at ...
We prove that graph problems with finite integer index have linear kernels on graphs of bounded expa...
Kernelization is a notion from parameterized complexity that captures the concept of efficient prepr...