Abstract. Nogood learning is a powerful approach to reducing search in Constraint Programming (CP) solvers. The current state of the art, called Lazy Clause Generation (LCG), uses resolution to derive nogoods expressing the reasons for each search failure. Such nogoods can prune other parts of the search tree, producing exponential speedups on a wide variety of problems. Nogood learning solvers can be seen as resolution proof systems. The stronger the proof system, the faster it can solve a CP problem. It has recently been shown that the proof system used in LCG is at least as strong as general resolution. However, stronger proof systems such as extended resolution exist. Extended resolution allows for literals expressing arbitrary logical ...
AbstractThe past decade has seen clause learning as the most successful algorithm for SAT instances ...
Abstract. Within-problem learning, and in particular learning from failure, has proven to be extreme...
The past decade has seen clause learning as the most successful algorithm for SAT instances arising ...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
Backtracking CSP solvers provide a powerful framework for search and reasoning. The aim of constrain...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Lazy Clause Generation (LCG) solvers dominate the current constraint programming competitions. These...
Abstract: Many real world problems appear naturally as constraints satisfaction problems (CSP), for ...
Though resolution and constraint satisfaction problems are two of the most developed areas in artifi...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
AbstractThe past decade has seen clause learning as the most successful algorithm for SAT instances ...
Abstract. Within-problem learning, and in particular learning from failure, has proven to be extreme...
The past decade has seen clause learning as the most successful algorithm for SAT instances arising ...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
Backtracking CSP solvers provide a powerful framework for search and reasoning. The aim of constrain...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Modern complete SAT solvers almost uniformly implement variations of the clause learning framework i...
Lazy Clause Generation (LCG) solvers dominate the current constraint programming competitions. These...
Abstract: Many real world problems appear naturally as constraints satisfaction problems (CSP), for ...
Though resolution and constraint satisfaction problems are two of the most developed areas in artifi...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
Learning in the context of constraint solving is a technique by which previously unknown constraints...
AbstractThe past decade has seen clause learning as the most successful algorithm for SAT instances ...
Abstract. Within-problem learning, and in particular learning from failure, has proven to be extreme...
The past decade has seen clause learning as the most successful algorithm for SAT instances arising ...