We address the problem of learning an unknown unitary transformation from a finite number of examples. The problem consists in finding the learning machine that optimally emulates the examples, thus reproducing the unknown unitary with maximum fidelity. Learning a unitary is equivalent to storing it in the state of a quantum memory (the memory of the learning machine) and subsequently retrieving it. We prove that, whenever the unknown unitary is drawn from a group, the optimal strategy consists in a parallel call of the available uses followed by a "measure-and-rotate" retrieving. Differing from the case of quantum cloning, where the incoherent "measure-and-prepare" strategies are typically suboptimal, in the case of learning the "measure-a...
Finding optimal measurement schemes in quantum state tomography is a fundamental problem in quantum ...
Quantum states can be used to encode the information contained in a direction, i.e., in a unit vecto...
A key component of a quantum machine learning model operating on classical inputs is the design of a...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
Quantum learning of a unitary transformation estimates a quantum channel in a process similar to qua...
Unitary transformations formulate the time evolution of quantum states. How to learn a unitary trans...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
Abstract. Quantum learning of a unitary transformation estimates a quantum channel in a process simi...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
We analyze quantum algorithms for cloning of a quantum measurement. Our aim is to mimic two uses of ...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
Simulating stochastic processes using less resources is a key pursuit in many sciences. This involve...
Abstract. Pattern recognition is a central topic in Learning Theory with numerous applications such ...
Finding optimal measurement schemes in quantum state tomography is a fundamental problem in quantum ...
Quantum states can be used to encode the information contained in a direction, i.e., in a unit vecto...
A key component of a quantum machine learning model operating on classical inputs is the design of a...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
Quantum learning of a unitary transformation estimates a quantum channel in a process similar to qua...
Unitary transformations formulate the time evolution of quantum states. How to learn a unitary trans...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
Abstract. Quantum learning of a unitary transformation estimates a quantum channel in a process simi...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
We analyze quantum algorithms for cloning of a quantum measurement. Our aim is to mimic two uses of ...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
After proving a general no-cloning theorem for black boxes, we derive the optimal universal cloning ...
Simulating stochastic processes using less resources is a key pursuit in many sciences. This involve...
Abstract. Pattern recognition is a central topic in Learning Theory with numerous applications such ...
Finding optimal measurement schemes in quantum state tomography is a fundamental problem in quantum ...
Quantum states can be used to encode the information contained in a direction, i.e., in a unit vecto...
A key component of a quantum machine learning model operating on classical inputs is the design of a...