We analyze the expressivity of a universal deep neural network that can be organized as a series of nested qubit rotations, accomplished by adjustable data re-uploads. While the maximal expressive power increases with the depth of the network and the number of qubits, it is fundamentally bounded by the data encoding mechanism. Focusing on regression problems, we systematically investigate the expressivity limits for different measurements and architectures. The presence of entanglement, either by entangling layers or global measurements, saturate towards this bound. In these cases, entanglement leads to an enhancement of the approximation capabilities of the network compared to local readouts of the individual qubits in non-entangling netwo...
Can quantum computers be used for implementing machine learning models that are better than traditio...
There is an increasing interest in Quantum Machine Learning (QML) models, how they work and for whic...
We demonstrate that it is possible to implement a quantum perceptron with a sigmoid activation funct...
Quantum neural networks (QNNs), represented by parameterized quantum circuits, can be trained in the...
Quantum neural networks (QNNs) have emerged as a leading strategy to establish applications in machi...
In this work, we address the question whether a sufficiently deep quantum neural network can approxi...
Quantum machine learning has become an area of growing interest but has certain theoretical and hard...
A single-qubit circuit can approximate any bounded complex function stored in the degrees of freedom...
Neural networks enjoy widespread success in both research and industry and, with the advent of quant...
The utility of classical neural networks as universal approximators suggests that their quantum anal...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
Variational quantum algorithms have been acknowledged as a leading strategy to realize near-term qua...
The universality of a quantum neural network refers to its ability to approximate arbitrary function...
It is well known that artificial neural networks initialized from independent and identically distri...
Machine learning techniques are increasingly being used in fundamental research to solve various cha...
Can quantum computers be used for implementing machine learning models that are better than traditio...
There is an increasing interest in Quantum Machine Learning (QML) models, how they work and for whic...
We demonstrate that it is possible to implement a quantum perceptron with a sigmoid activation funct...
Quantum neural networks (QNNs), represented by parameterized quantum circuits, can be trained in the...
Quantum neural networks (QNNs) have emerged as a leading strategy to establish applications in machi...
In this work, we address the question whether a sufficiently deep quantum neural network can approxi...
Quantum machine learning has become an area of growing interest but has certain theoretical and hard...
A single-qubit circuit can approximate any bounded complex function stored in the degrees of freedom...
Neural networks enjoy widespread success in both research and industry and, with the advent of quant...
The utility of classical neural networks as universal approximators suggests that their quantum anal...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
Variational quantum algorithms have been acknowledged as a leading strategy to realize near-term qua...
The universality of a quantum neural network refers to its ability to approximate arbitrary function...
It is well known that artificial neural networks initialized from independent and identically distri...
Machine learning techniques are increasingly being used in fundamental research to solve various cha...
Can quantum computers be used for implementing machine learning models that are better than traditio...
There is an increasing interest in Quantum Machine Learning (QML) models, how they work and for whic...
We demonstrate that it is possible to implement a quantum perceptron with a sigmoid activation funct...