There are two common ways to evaluate algorithms: performance on benchmark problems derived from real applications and analysis of performance on parametrized families of problems. The two approaches complement each other, each having its advantages and disadvantages. The planning community has concentrated on the first approach, with few ways of generating parametrized families of hard problems known prior to this work. Our group's main interest is in comparing approaches to solving planning problems using a novel type of computational device - a quantum annealer - to existing state-of-the-art planning algorithms. Because only small-scale quantum annealers are available, we must compare on small problem sizes. Small problems are primarily ...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
Recent advances in the development of commercial quantum annealers such as the D-Wave 2X allow solvi...
Many challenging scheduling, planning, and resource allocation problems come with real-world input d...
There are two complementary ways to evaluate planning algorithms: performance on benchmark problems ...
Phase transitions in the solubility of problem instances are known in many types of computational pr...
Quantum Approximate Optimization algorithm (QAOA) aims to search for approximate solutions to discre...
We introduce a width parameter that bounds the complexity of classical planning problems and domains...
The path integral Monte Carlo simulated quantum annealing algorithm is applied to the optimization o...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
In this thesis, we implement projective quantum Monte Carlo (PQMC) methods to simulate quantum annea...
AbstractThe efficiency of AI planning systems is usually evaluated empirically. For the validity of ...
In recent years, quantum annealing has gained the status of being a promising candidate for solving ...
Quantum Approximate Optimization algorithm (QAOA) aims to search for approximate solutions to discre...
Sampling a diverse set of high-quality solutions for hard optimization problems is of great practica...
Physical annealing systems provide heuristic approaches to solving combinatorial optimization proble...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
Recent advances in the development of commercial quantum annealers such as the D-Wave 2X allow solvi...
Many challenging scheduling, planning, and resource allocation problems come with real-world input d...
There are two complementary ways to evaluate planning algorithms: performance on benchmark problems ...
Phase transitions in the solubility of problem instances are known in many types of computational pr...
Quantum Approximate Optimization algorithm (QAOA) aims to search for approximate solutions to discre...
We introduce a width parameter that bounds the complexity of classical planning problems and domains...
The path integral Monte Carlo simulated quantum annealing algorithm is applied to the optimization o...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
In this thesis, we implement projective quantum Monte Carlo (PQMC) methods to simulate quantum annea...
AbstractThe efficiency of AI planning systems is usually evaluated empirically. For the validity of ...
In recent years, quantum annealing has gained the status of being a promising candidate for solving ...
Quantum Approximate Optimization algorithm (QAOA) aims to search for approximate solutions to discre...
Sampling a diverse set of high-quality solutions for hard optimization problems is of great practica...
Physical annealing systems provide heuristic approaches to solving combinatorial optimization proble...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
Recent advances in the development of commercial quantum annealers such as the D-Wave 2X allow solvi...
Many challenging scheduling, planning, and resource allocation problems come with real-world input d...