The intrinsic probabilistic nature of quantum mechanics invokes endeavors of designing quantum generative learning models (QGLMs) with computational advantages over classical ones. To date, two prototypical QGLMs are quantum circuit Born machines (QCBMs) and quantum generative adversarial networks (QGANs), which approximate the target distribution in explicit and implicit ways, respectively. Despite the empirical achievements, the fundamental theory of these models remains largely obscure. To narrow this knowledge gap, here we explore the learnability of QCBMs and QGANs from the perspective of generalization when their loss is specified to be the maximum mean discrepancy. Particularly, we first analyze the generalization ability of QCBMs an...
Defining and accurately measuring generalization in generative models remains an ongoing challenge a...
Quantum computers are actively competing to surpass classical supercomputers, but quantum errors rem...
Due to the linearity of quantum mechanics, it remains a challenge to design quantum generative machi...
Quantum computers are next-generation devices that hold promise to perform calculations beyond the r...
The goal of generative machine learning is to model the probability distribution underlying a given ...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
Modern quantum machine learning (QML) methods involve variationally optimizing a parameterized quant...
We introduce a new approach towards generative quantum machine learning significantly reducing the n...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
The increasing success of classical generative adversarial networks (GANs) has inspired several quan...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
This is the final version. Available from the American Physical Society via the DOI in this record. ...
Quantum neural networks (QNNs) have been a promising framework in pursuing near-term quantum advanta...
Defining and accurately measuring generalization in generative models remains an ongoing challenge a...
Quantum computers are actively competing to surpass classical supercomputers, but quantum errors rem...
Due to the linearity of quantum mechanics, it remains a challenge to design quantum generative machi...
Quantum computers are next-generation devices that hold promise to perform calculations beyond the r...
The goal of generative machine learning is to model the probability distribution underlying a given ...
International audienceThe search for an application of near-term quantum devices is widespread. Quan...
Modern quantum machine learning (QML) methods involve variationally optimizing a parameterized quant...
We introduce a new approach towards generative quantum machine learning significantly reducing the n...
Quantum generative modeling is a growing area of interest for industry-relevant applications. With t...
The increasing success of classical generative adversarial networks (GANs) has inspired several quan...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
Machine learning algorithms based on parametrized quantum circuits are a prime candidate for near-te...
Are multi-layer parameterized quantum circuits (MPQCs) more expressive than classical neural network...
This is the final version. Available from the American Physical Society via the DOI in this record. ...
Quantum neural networks (QNNs) have been a promising framework in pursuing near-term quantum advanta...
Defining and accurately measuring generalization in generative models remains an ongoing challenge a...
Quantum computers are actively competing to surpass classical supercomputers, but quantum errors rem...
Due to the linearity of quantum mechanics, it remains a challenge to design quantum generative machi...