We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is derived for arbitrary von Neumann measurements in the case of training with one or two examples. The analysis of the case of three examples reveals that, differently from the learning of unitary gates, the optimal algorithm for learning of quantum measurements cannot be parallelized, and requires quantum memories for the storage of information
A key component of a quantum machine learning model operating on classical inputs is the design of a...
Traditional quantum state tomography requires a number of measurements that grows exponentially with...
We study classical and quantum learning algorithms with access to data produced by a quantum process...
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...
We address the problem of learning an unknown unitary transformation from a finite number of example...
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...
Abstract. Quantum learning of a unitary transformation estimates a quantum channel in a process simi...
Abstract. Pattern recognition is a central topic in Learning Theory with numerous applications such ...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
We analyze quantum algorithms for cloning of a quantum measurement. Our aim is to mimic two uses of ...
48+14 pages, 4 figuresLearning tasks play an increasingly prominent role in quantum information and ...
We propose a quantum machine learning algorithm for efficiently solving a class of problems encoded ...
Finding optimal measurement schemes in quantum state tomography is a fundamental problem in quantum ...
A key component of a quantum machine learning model operating on classical inputs is the design of a...
Traditional quantum state tomography requires a number of measurements that grows exponentially with...
We study classical and quantum learning algorithms with access to data produced by a quantum process...
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...
We address the problem of learning an unknown unitary transformation from a finite number of example...
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...
Abstract. Quantum learning of a unitary transformation estimates a quantum channel in a process simi...
Abstract. Pattern recognition is a central topic in Learning Theory with numerous applications such ...
This thesis studies strengths and weaknesses of quantum computers. In the first part we present thre...
We analyze quantum algorithms for cloning of a quantum measurement. Our aim is to mimic two uses of ...
48+14 pages, 4 figuresLearning tasks play an increasingly prominent role in quantum information and ...
We propose a quantum machine learning algorithm for efficiently solving a class of problems encoded ...
Finding optimal measurement schemes in quantum state tomography is a fundamental problem in quantum ...
A key component of a quantum machine learning model operating on classical inputs is the design of a...
Traditional quantum state tomography requires a number of measurements that grows exponentially with...
We study classical and quantum learning algorithms with access to data produced by a quantum process...