Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it is often very difficult to determine a priori which solving method is best suited to a problem. This work explores the use of machine learning to predict which solving method will be most effective for a given problem. We use four different problem sets to determine the CSP attributes that can be used to determine which solving method should be applied. After choosing an appropriate set of attributes, we determine how well j48 decision trees can predict which solving method to apply. Furthermore, we take a cost sensitive approach such that problem instances where there is a great difference in runtime between algorithms are emphasized. We al...
We propose CABSC, a system that performs Constraint Acquisition Based on Solution Counting. In order...
The Constraint Satisfaction Problem (CSP) is ubiquitous in artificial intelligence. It has a wide ap...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...
Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it...
A well-known difficulty with solving Constraint Satisfaction Problems (CSPs) is that, while one form...
Backtracking CSP solvers provide a powerful framework for search and reasoning. The aim of constrai...
Constraint satisfaction problems (CSPs) are at the core of many tasks with direct practical relevanc...
Many real world problems can be encoded as Constraint Satisfaction Problems (CSPs). Constraint satis...
In the context of Constraint Programming, a portfolio approach exploits the complementary strengths...
A large number of problems in Artificial Intelligence and other areas of science can be viewed as sp...
Research effort in constraint satisfaction has traditionally been devoted to curbing the exponential...
In this paper we present a general representation for constraint satisfaction problems (CSP) and a -...
Constraint satisfaction problems (CSPs) are at the core of many tasks with di-rect practical relevan...
Computing the minimal network of a Constraint Satisfaction Problem (CSP) is a useful and difficult t...
The focus of the thesis is on improving solving constraint satisfaction problems (CSPs) that change ...
We propose CABSC, a system that performs Constraint Acquisition Based on Solution Counting. In order...
The Constraint Satisfaction Problem (CSP) is ubiquitous in artificial intelligence. It has a wide ap...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...
Given the breadth of constraint satisfaction problems (CSPs) and the wide variety of CSP solvers, it...
A well-known difficulty with solving Constraint Satisfaction Problems (CSPs) is that, while one form...
Backtracking CSP solvers provide a powerful framework for search and reasoning. The aim of constrai...
Constraint satisfaction problems (CSPs) are at the core of many tasks with direct practical relevanc...
Many real world problems can be encoded as Constraint Satisfaction Problems (CSPs). Constraint satis...
In the context of Constraint Programming, a portfolio approach exploits the complementary strengths...
A large number of problems in Artificial Intelligence and other areas of science can be viewed as sp...
Research effort in constraint satisfaction has traditionally been devoted to curbing the exponential...
In this paper we present a general representation for constraint satisfaction problems (CSP) and a -...
Constraint satisfaction problems (CSPs) are at the core of many tasks with di-rect practical relevan...
Computing the minimal network of a Constraint Satisfaction Problem (CSP) is a useful and difficult t...
The focus of the thesis is on improving solving constraint satisfaction problems (CSPs) that change ...
We propose CABSC, a system that performs Constraint Acquisition Based on Solution Counting. In order...
The Constraint Satisfaction Problem (CSP) is ubiquitous in artificial intelligence. It has a wide ap...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...