Distance measures provide the foundation for many popular algorithms in Machine Learning and Pattern Recognition. Different notions of distance can be used depending on the types of the data the algorithm is working on. For graph-shaped data, an important notion is the Graph Edit Distance (GED) that measures the degree of (dis)similarity between two graphs in terms of the operations needed to make them identical. As the complexity of computing GED is the same as NP-hard problems, it is reasonable to consider approximate solutions. In this paper we present a QUBO formulation of the GED problem. This allows us to implement two different approaches, namely quantum annealing and variational quantum algorithms that run on the two types of quantu...
Quantum computing has great potential for advancing machine learning algorithms beyond classical rea...
We introduce distance measures between quantum states, measurements, and channels based on their sta...
The quantum approximate optimisation algorithm was proposed as a heuristic method for solving combin...
In this work we use the concept of quantum fingerprinting to develop a quantum communication protoco...
In machine learning and particularly in topological data analysis, ε-graphs are important tools but ...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
We explore the use of machine-learning techniques to detect quantum speedup in random walks on graph...
We introduce and review briefly the phenomenon of quantum annealing and analog computation. The role...
The quantum approximate optimization algorithm (QAOA) is an approach for near-term quantum computers...
Many problems that can be solved in quadratic time have bit-parallel speed-ups with factor w, where ...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
We perform an in-depth comparison of quantum annealing with several classical optimisation technique...
Lately, much attention has been given to quantum algorithms that solve pattern recognition tasks in ...
We develop a quantum computer architecture using quantum statistics and thermal annealing that is hi...
Quantum computing has great potential for advancing machine learning algorithms beyond classical rea...
We introduce distance measures between quantum states, measurements, and channels based on their sta...
The quantum approximate optimisation algorithm was proposed as a heuristic method for solving combin...
In this work we use the concept of quantum fingerprinting to develop a quantum communication protoco...
In machine learning and particularly in topological data analysis, ε-graphs are important tools but ...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
We explore the use of machine-learning techniques to detect quantum speedup in random walks on graph...
We introduce and review briefly the phenomenon of quantum annealing and analog computation. The role...
The quantum approximate optimization algorithm (QAOA) is an approach for near-term quantum computers...
Many problems that can be solved in quadratic time have bit-parallel speed-ups with factor w, where ...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
We perform an in-depth comparison of quantum annealing with several classical optimisation technique...
Lately, much attention has been given to quantum algorithms that solve pattern recognition tasks in ...
We develop a quantum computer architecture using quantum statistics and thermal annealing that is hi...
Quantum computing has great potential for advancing machine learning algorithms beyond classical rea...
We introduce distance measures between quantum states, measurements, and channels based on their sta...
The quantum approximate optimisation algorithm was proposed as a heuristic method for solving combin...