Maximum satisfiability (MaxSat) solving is an active area of research motivated by numerous successful applications to solving NP-hard combinatorial optimization problems. One of the most successful approaches for solving MaxSat instances from real world domains are the so called implicit hitting set (IHS) solvers. IHS solvers decouple MaxSat solving into separate core-extraction (i.e. reasoning) and optimization steps which are tackled by a Boolean satisfiability (SAT) and an integer linear programming (IP) solver, respectively. While the approach shows state-of-the-art performance on many industrial instances, it is known that there exists instances on which IHS solvers need to extract an exponential number of cores before terminating. Mo...
The so-called declarative approach has proven to be a viable paradigm for solving various real-world...
Core-guided approaches to solving MAXSAT have proved to be effective on industrial problems. These a...
Computationally hard optimization problems are commonplace not only in theory but also in practice i...
Core-guided solvers and Implicit Hitting Set (IHS) solvers have become ubiquitous within the field o...
Recent advances in solvers for the Boolean satisfiability (SAT) based optimization paradigm of maxim...
Many current complete MaxSAT algorithms fall into two categories: core-guided or implicit hitting se...
Core-guided solvers are among the best performing algorithms for solving maximum satisfiability prob...
Real-world optimization problems, such as those found in logistics and bioinformatics, are often NP-...
The development of practical approaches to efficiently reasoning over pseudo-Boolean constraints has...
Boolean satisfiability (SAT) solvers allow for incremental computations, which is key to efficient e...
Maximum satisfiability (MaxSAT) is a viable approach to solving NP-hard optimization problems. In th...
Maximum Satisfiability (MaxSAT), the optimisation extension of the well-known Boolean Satisfiability...
Several MaxSAT algorithms based on iterative SAT solving have been proposed in recent years. These a...
A central algorithmic paradigm in maximum satisfiability solving geared towards real-world optimizat...
Core-guided algorithms proved to be effective on industrial instances of MaxSAT, the optimization va...
The so-called declarative approach has proven to be a viable paradigm for solving various real-world...
Core-guided approaches to solving MAXSAT have proved to be effective on industrial problems. These a...
Computationally hard optimization problems are commonplace not only in theory but also in practice i...
Core-guided solvers and Implicit Hitting Set (IHS) solvers have become ubiquitous within the field o...
Recent advances in solvers for the Boolean satisfiability (SAT) based optimization paradigm of maxim...
Many current complete MaxSAT algorithms fall into two categories: core-guided or implicit hitting se...
Core-guided solvers are among the best performing algorithms for solving maximum satisfiability prob...
Real-world optimization problems, such as those found in logistics and bioinformatics, are often NP-...
The development of practical approaches to efficiently reasoning over pseudo-Boolean constraints has...
Boolean satisfiability (SAT) solvers allow for incremental computations, which is key to efficient e...
Maximum satisfiability (MaxSAT) is a viable approach to solving NP-hard optimization problems. In th...
Maximum Satisfiability (MaxSAT), the optimisation extension of the well-known Boolean Satisfiability...
Several MaxSAT algorithms based on iterative SAT solving have been proposed in recent years. These a...
A central algorithmic paradigm in maximum satisfiability solving geared towards real-world optimizat...
Core-guided algorithms proved to be effective on industrial instances of MaxSAT, the optimization va...
The so-called declarative approach has proven to be a viable paradigm for solving various real-world...
Core-guided approaches to solving MAXSAT have proved to be effective on industrial problems. These a...
Computationally hard optimization problems are commonplace not only in theory but also in practice i...