We propose a general algorithm of constructing an extended formulation for any given set of linear constraints with integer coefficients. Our algorithm consists of two phases: first construct a decision diagram $(V,E)$ that somehow represents a given $m \times n$ constraint matrix, and then build an equivalent set of $|E|$ linear constraints over $n+|V|$ variables. That is, the size of the resultant extended formulation depends not explicitly on the number $m$ of the original constraints, but on its decision diagram representation. Therefore, we may significantly reduce the computation time for optimization problems with integer constraint matrices by solving them under the extended formulations, especially when we obtain concise decision d...
Constraint programming is a well known efficient programming paradigm sometimes called smart brute-f...
<p>Many optimization problems require the modelling of discrete and continuous variables, giving ris...
A general n-ary constraint is usually represented explicitly as a set of its solution tuples, which ...
We propose a united framework to address a family of classical mixed-component analysis, and sparse ...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
<p>Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard dis...
Decision diagrams (DDs) are graphical structures that can be used to solve discrete optimization pro...
A mixed-integer program is an optimization problem where one is required to minimize a linear functi...
A recent development in the field of discrete optimization is the combined use of (binary) decision ...
Abstract-To detect errors in decision tables one needs to decide whether a given set of constraints ...
We study the application of limited-width MDDs (multi-valued decision diagrams) as discrete relaxati...
Abstract. We study the application of limited-width MDDs (multi-valued decision diagrams) as discret...
In this thesis we explore two methods of computing lower bounds. We first discuss the Lagrangian Rel...
Many important problems from the operations research and statistics literatures exhibit either (a) l...
Constraint programming is a declarative way of modeling and solving optimization and satisfiability ...
Constraint programming is a well known efficient programming paradigm sometimes called smart brute-f...
<p>Many optimization problems require the modelling of discrete and continuous variables, giving ris...
A general n-ary constraint is usually represented explicitly as a set of its solution tuples, which ...
We propose a united framework to address a family of classical mixed-component analysis, and sparse ...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
<p>Mixed-integer programming (MIP) is often a practitioner’s primary approach when tackling hard dis...
Decision diagrams (DDs) are graphical structures that can be used to solve discrete optimization pro...
A mixed-integer program is an optimization problem where one is required to minimize a linear functi...
A recent development in the field of discrete optimization is the combined use of (binary) decision ...
Abstract-To detect errors in decision tables one needs to decide whether a given set of constraints ...
We study the application of limited-width MDDs (multi-valued decision diagrams) as discrete relaxati...
Abstract. We study the application of limited-width MDDs (multi-valued decision diagrams) as discret...
In this thesis we explore two methods of computing lower bounds. We first discuss the Lagrangian Rel...
Many important problems from the operations research and statistics literatures exhibit either (a) l...
Constraint programming is a declarative way of modeling and solving optimization and satisfiability ...
Constraint programming is a well known efficient programming paradigm sometimes called smart brute-f...
<p>Many optimization problems require the modelling of discrete and continuous variables, giving ris...
A general n-ary constraint is usually represented explicitly as a set of its solution tuples, which ...