Due to the linearity of quantum mechanics, it remains a challenge to design quantum generative machine learning models that embed non-linear activations into the evolution of the statevector. However, some of the most successful classical generative models, such as those based on neural networks, involve highly non-linear dynamics for quality training. In this paper, we explore the effect of these dynamics in quantum generative modeling by introducing a model that adds non-linear activations via a neural network structure onto the standard Born Machine framework - the Quantum Neuron Born Machine (QNBM). To achieve this, we utilize a previously introduced Quantum Neuron subroutine, which is a repeat-until-success circuit with mid-circuit mea...
Parameterized quantum circuits (PQCs) have been broadly used as a hybrid quantum-classical machine l...
Reinforcement learning is a growing field in AI with a lot of potential. Intelligent behavior is lea...
Neural Networks (NN) are known to be unversal approximators for any non-linear function. Training al...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
The goal of generative machine learning is to model the probability distribution underlying a given ...
Quantum computers are next-generation devices that hold promise to perform calculations beyond the r...
The intrinsic probabilistic nature of quantum mechanics invokes endeavors of designing quantum gener...
Machine learning (ML) has revolutionized the world in recent years. Despite the success, the huge co...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
Neural networks enjoy widespread success in both research and industry and, with the advent of quant...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
Can quantum computers be used for implementing machine learning models that are better than traditio...
68 pages, 39 Figures. Comments welcome. Implementation at https://github.com/BrianCoyle/IsingBornMac...
68 pages, 39 Figures. Comments welcome. Implementation at https://github.com/BrianCoyle/IsingBornMac...
With a surge in popularity of machine learning as a whole, many researchers have sought optimization...
Parameterized quantum circuits (PQCs) have been broadly used as a hybrid quantum-classical machine l...
Reinforcement learning is a growing field in AI with a lot of potential. Intelligent behavior is lea...
Neural Networks (NN) are known to be unversal approximators for any non-linear function. Training al...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
The goal of generative machine learning is to model the probability distribution underlying a given ...
Quantum computers are next-generation devices that hold promise to perform calculations beyond the r...
The intrinsic probabilistic nature of quantum mechanics invokes endeavors of designing quantum gener...
Machine learning (ML) has revolutionized the world in recent years. Despite the success, the huge co...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
Neural networks enjoy widespread success in both research and industry and, with the advent of quant...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
Can quantum computers be used for implementing machine learning models that are better than traditio...
68 pages, 39 Figures. Comments welcome. Implementation at https://github.com/BrianCoyle/IsingBornMac...
68 pages, 39 Figures. Comments welcome. Implementation at https://github.com/BrianCoyle/IsingBornMac...
With a surge in popularity of machine learning as a whole, many researchers have sought optimization...
Parameterized quantum circuits (PQCs) have been broadly used as a hybrid quantum-classical machine l...
Reinforcement learning is a growing field in AI with a lot of potential. Intelligent behavior is lea...
Neural Networks (NN) are known to be unversal approximators for any non-linear function. Training al...