Quantum generative models, in providing inherently efficient sampling strategies, show promise for achieving a near-term advantage on quantum hardware. Nonetheless, important questions remain regarding their scalability. In this work, we investigate the barriers to the trainability of quantum generative models posed by barren plateaus and exponential loss concentration. We explore the interplay between explicit and implicit models and losses, and show that using implicit generative models (such as quantum circuit-based models) with explicit losses (such as the KL divergence) leads to a new flavour of barren plateau. In contrast, the Maximum Mean Discrepancy (MMD), which is a popular example of an implicit loss, can be viewed as the expectat...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
Quantum neural networks (QNNs) have generated excitement around the possibility of efficiently analy...
Simulating stochastic processes using less resources is a key pursuit in many sciences. This involve...
Quantum generative models, in providing inherently efficient sampling strategies, show promise for a...
The goal of generative machine learning is to model the probability distribution underlying a given ...
In the design of stochastic models, there is a constant trade-off between model complexity and accur...
Mainstream machine-learning techniques such as deep learning and probabilistic programming rely heav...
In the noisy intermediate-scale quantum era, an important goal is the conception of implementable al...
The intrinsic probabilistic nature of quantum mechanics invokes endeavors of designing quantum gener...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
Can quantum computers be used for implementing machine learning models that are better than traditio...
The task of learning a probability distribution from samples is ubiquitous across the natural scienc...
In machine learning, overparameterization is associated with qualitative changes in the empirical ri...
Quantum computers are known to provide speedups over classical state-of-the-art machine learning met...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
Quantum neural networks (QNNs) have generated excitement around the possibility of efficiently analy...
Simulating stochastic processes using less resources is a key pursuit in many sciences. This involve...
Quantum generative models, in providing inherently efficient sampling strategies, show promise for a...
The goal of generative machine learning is to model the probability distribution underlying a given ...
In the design of stochastic models, there is a constant trade-off between model complexity and accur...
Mainstream machine-learning techniques such as deep learning and probabilistic programming rely heav...
In the noisy intermediate-scale quantum era, an important goal is the conception of implementable al...
The intrinsic probabilistic nature of quantum mechanics invokes endeavors of designing quantum gener...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
Can quantum computers be used for implementing machine learning models that are better than traditio...
The task of learning a probability distribution from samples is ubiquitous across the natural scienc...
In machine learning, overparameterization is associated with qualitative changes in the empirical ri...
Quantum computers are known to provide speedups over classical state-of-the-art machine learning met...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
Quantum neural networks (QNNs) have generated excitement around the possibility of efficiently analy...
Simulating stochastic processes using less resources is a key pursuit in many sciences. This involve...