We propose a general branch-and-bound algorithm for discrete optimization in which binary decision diagrams (BDDs) play the role of the traditional linear programming relaxation. In particular, relaxed BDD representations of the problem provide bounds and guidance for branching, and restricted BDDs supply a primal heuristic. Each problem is given a dynamic programming model that allows one to exploit recursive structure, even though the problem is not solved by dynamic programming. A novel search scheme branches within relaxed BDDs rather than on values of variables. Preliminary testing shows that a rudimentary BDD-based solver is competitive with or superior to a leading commercial integer programming solver for the maximum stable set prob...
Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard discre...
Decision diagrams are an increasingly important tool in cutting-edge solvers for discrete optimizati...
We study the application of limited-width MDDs (multi-valued decision diagrams) as discrete relaxati...
We propose a general branch-and-bound algorithm for discrete optimization in which binary decision d...
We propose a general branch-and-bound algorithm for discrete optimization in which binary decision d...
<p>Decision diagrams are compact graphical representations of Boolean functions originally introduce...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Discrete optimization problems expressible as dynamic programs can be solved by branch-and-bound wit...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Discrete optimization problems expressible as dynamic programs can be solved by branch-and-bound wit...
Dynamic Programming (DP) is a popular tool to solve combinatorial problems. This paradigm is ubiquit...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
Decision diagrams are an increasingly important tool in cutting-edge solvers for discrete optimizati...
Decision diagrams (DDs) are graphical structures that can be used to solve discrete optimization pro...
Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard discre...
Decision diagrams are an increasingly important tool in cutting-edge solvers for discrete optimizati...
We study the application of limited-width MDDs (multi-valued decision diagrams) as discrete relaxati...
We propose a general branch-and-bound algorithm for discrete optimization in which binary decision d...
We propose a general branch-and-bound algorithm for discrete optimization in which binary decision d...
<p>Decision diagrams are compact graphical representations of Boolean functions originally introduce...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Discrete optimization problems expressible as dynamic programs can be solved by branch-and-bound wit...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Discrete optimization problems expressible as dynamic programs can be solved by branch-and-bound wit...
Dynamic Programming (DP) is a popular tool to solve combinatorial problems. This paradigm is ubiquit...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
Decision diagrams are an increasingly important tool in cutting-edge solvers for discrete optimizati...
Decision diagrams (DDs) are graphical structures that can be used to solve discrete optimization pro...
Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard discre...
Decision diagrams are an increasingly important tool in cutting-edge solvers for discrete optimizati...
We study the application of limited-width MDDs (multi-valued decision diagrams) as discrete relaxati...