We present an algorithm for quantum-assisted cluster analysis that makes use of the topological properties of a D-Wave 2000Q quantum processing unit. Clustering is a form of unsupervised machine learning, where instances are organized into groups whose members share similarities. The assignments are, in contrast to classification, not known a priori, but generated by the algorithm. We explain how the problem can be expressed as a quadratic unconstrained binary optimization problem and show that the introduced quantum-assisted clustering algorithm is, regarding accuracy, equivalent to commonly used classical clustering algorithms. Quantum annealing algorithms belong to the class of metaheuristic tools, applicable for solving binary optimizat...
Quantum computing is an emerging technology that uses the principles of quantum mechanics to solve p...
The pattern recognition of the trajectories of charged particles is at the core of the computing cha...
A widely used clustering algorithm, density peak clustering (DPC), assigns different attribute value...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
In this thesis we face the problem of clustering with the aim of designing a quantum version of the ...
Many quantum algorithms for machine learning require access to classical data in superposition. Howe...
International audienceQuantum machine learning is one of the most promising applications of a full-s...
Quantum annealing is a quantum computing approach widely used for optimization and probabilistic sam...
The emerging field of quantum computing has recently created much interest in the computer science c...
Clustering is one of the most crucial problems in unsupervised learning, and the well-known $k$-mean...
Quantum annealing belongs to a family of quantum optimization algorithms designed to solve combinato...
Quantum annealing is getting increasing attention in combinatorial optimization. The quantum process...
Quantum annealing is a heuristic quantum optimization algorithm that can be used to solve combinator...
Quantum(-inspired) annealers show promise in solving combinatorial optimisation problems in practice...
Quantum computing is an emerging technology that uses the principles of quantum mechanics to solve p...
The pattern recognition of the trajectories of charged particles is at the core of the computing cha...
A widely used clustering algorithm, density peak clustering (DPC), assigns different attribute value...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
In this thesis we face the problem of clustering with the aim of designing a quantum version of the ...
Many quantum algorithms for machine learning require access to classical data in superposition. Howe...
International audienceQuantum machine learning is one of the most promising applications of a full-s...
Quantum annealing is a quantum computing approach widely used for optimization and probabilistic sam...
The emerging field of quantum computing has recently created much interest in the computer science c...
Clustering is one of the most crucial problems in unsupervised learning, and the well-known $k$-mean...
Quantum annealing belongs to a family of quantum optimization algorithms designed to solve combinato...
Quantum annealing is getting increasing attention in combinatorial optimization. The quantum process...
Quantum annealing is a heuristic quantum optimization algorithm that can be used to solve combinator...
Quantum(-inspired) annealers show promise in solving combinatorial optimisation problems in practice...
Quantum computing is an emerging technology that uses the principles of quantum mechanics to solve p...
The pattern recognition of the trajectories of charged particles is at the core of the computing cha...
A widely used clustering algorithm, density peak clustering (DPC), assigns different attribute value...