Search-optimization problems are plentiful in scientific and engineering domains. Artificial intelligence has long contributed to the development of search algorithms and declarative programming languages geared towards solving and modeling search-optimization problems. Automated reasoning and knowledge representation are the subfields of AI that are particularly vested in these developments. Many popular automated reasoning paradigms provide users with languages supporting optimization statements: MaxSAT or answer set programming, to name a few. These paradigms vary significantly in their languages and in the ways they express quality conditions on computed solutions. Here we propose a unifying framework of so-called weight systems that el...
Constraints on Pseudo-Boolean (PB) expressions can be translated into Conjunctive Normal Form (CNF) ...
International audienceDiversification-based learning (DBL) derives from a collection of principles a...
The interplay between optimization and machine learning is one of the most important developments in...
We introduce the framework of qualitative optimization prob-lems (or, simply, optimization problems)...
A pioneering look at the fundamental role of logic in optimization and constraint satisfaction Whil...
Optimization can make at least two contributions to boolean logic. Its solution meth-ods can address...
. This paper proposes a logic-based approach to optimization that combines solution methods from ma...
Constraints on Pseudo-Boolean (PB) expressions can be translated into Conjunctive Normal Form (CNF) ...
Many problems that arise in the real world are difficult to solve partly because they present comput...
We have designed a prototype compiler optimization infrastructure called Varia and demonstrated its ...
Packages to encode Machine Learned models into optimization problems is an underdeveloped area, desp...
While there exist several approaches in the constraint programming community to learn a constraint t...
Experienced users often have useful knowledge and intuition in solving real-world optimization probl...
Preference logic programming (PLP) is an extension of constraint logic programming (CLP) for declara...
The ability to efficiently solve hard combinatorial optimization problems is a key prerequisite to v...
Constraints on Pseudo-Boolean (PB) expressions can be translated into Conjunctive Normal Form (CNF) ...
International audienceDiversification-based learning (DBL) derives from a collection of principles a...
The interplay between optimization and machine learning is one of the most important developments in...
We introduce the framework of qualitative optimization prob-lems (or, simply, optimization problems)...
A pioneering look at the fundamental role of logic in optimization and constraint satisfaction Whil...
Optimization can make at least two contributions to boolean logic. Its solution meth-ods can address...
. This paper proposes a logic-based approach to optimization that combines solution methods from ma...
Constraints on Pseudo-Boolean (PB) expressions can be translated into Conjunctive Normal Form (CNF) ...
Many problems that arise in the real world are difficult to solve partly because they present comput...
We have designed a prototype compiler optimization infrastructure called Varia and demonstrated its ...
Packages to encode Machine Learned models into optimization problems is an underdeveloped area, desp...
While there exist several approaches in the constraint programming community to learn a constraint t...
Experienced users often have useful knowledge and intuition in solving real-world optimization probl...
Preference logic programming (PLP) is an extension of constraint logic programming (CLP) for declara...
The ability to efficiently solve hard combinatorial optimization problems is a key prerequisite to v...
Constraints on Pseudo-Boolean (PB) expressions can be translated into Conjunctive Normal Form (CNF) ...
International audienceDiversification-based learning (DBL) derives from a collection of principles a...
The interplay between optimization and machine learning is one of the most important developments in...