Quantum machine learning has become an area of growing interest but has certain theoretical and hardware-specific limitations. Notably, the problem of vanishing gradients, or barren plateaus, renders the training impossible for circuits with high qubit counts, imposing a limit on the number of qubits that data scientists can use for solving problems. Independently, angle-embedded supervised quantum neural networks were shown to produce truncated Fourier series with a degree directly dependent on two factors: the depth of the encoding and the number of parallel qubits the encoding applied to. The degree of the Fourier series limits the model expressivity. This work introduces two new architectures whose Fourier degrees grow exponentially: th...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Variational quantum algorithms have been acknowledged as a leading strategy to realize near-term qua...
Can quantum computers be used for implementing machine learning models that are better than traditio...
Quantum neural networks (QNNs) have emerged as a leading strategy to establish applications in machi...
Quantum computers are actively competing to surpass classical supercomputers, but quantum errors rem...
Quantum machine learning algorithms based on parameterized quantum circuits are promising candidates...
Quantum machine learning techniques have been proposed as a way to potentially enhance performance i...
The data-embedding process is one of the bottlenecks of quantum machine learning, potentially negati...
The universality of a quantum neural network refers to its ability to approximate arbitrary function...
Quantum neural networks (QNNs), represented by parameterized quantum circuits, can be trained in the...
Variational quantum algorithms (VQAs) are expected to be a path to quantum advantages on noisy inter...
Quantum computers hold great promise to enhance machine learning, but their current qubit counts res...
We can learn from analyzing quantum convolutional neural networks (QCNNs) that: 1) working with quan...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
As more practical and scalable quantum computers emerge, much attention has been focused on realizin...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Variational quantum algorithms have been acknowledged as a leading strategy to realize near-term qua...
Can quantum computers be used for implementing machine learning models that are better than traditio...
Quantum neural networks (QNNs) have emerged as a leading strategy to establish applications in machi...
Quantum computers are actively competing to surpass classical supercomputers, but quantum errors rem...
Quantum machine learning algorithms based on parameterized quantum circuits are promising candidates...
Quantum machine learning techniques have been proposed as a way to potentially enhance performance i...
The data-embedding process is one of the bottlenecks of quantum machine learning, potentially negati...
The universality of a quantum neural network refers to its ability to approximate arbitrary function...
Quantum neural networks (QNNs), represented by parameterized quantum circuits, can be trained in the...
Variational quantum algorithms (VQAs) are expected to be a path to quantum advantages on noisy inter...
Quantum computers hold great promise to enhance machine learning, but their current qubit counts res...
We can learn from analyzing quantum convolutional neural networks (QCNNs) that: 1) working with quan...
The hybrid quantum-classical learning scheme provides a prominent way to achieve quantum advantages ...
As more practical and scalable quantum computers emerge, much attention has been focused on realizin...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Variational quantum algorithms have been acknowledged as a leading strategy to realize near-term qua...
Can quantum computers be used for implementing machine learning models that are better than traditio...