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 quantum wasserstein generative adversarial network


Quantum Wasserstein Generative Adversarial Networks

Neural Information Processing Systems

The study of quantum generative models is well-motivated, not only because of its importance in quantum machine learning and quantum chemistry but also because of the perspective of its implementation on near-term quantum machines. Inspired by previous studies on the adversarial training of classical and quantum generative models, we propose the first design of quantum Wasserstein Generative Adversarial Networks (WGANs), which has been shown to improve the robustness and the scalability of the adversarial training of quantum generative models even on noisy quantum hardware. Specifically, we propose a definition of the Wasserstein semimetric between quantum data, which inherits a few key theoretical merits of its classical counterpart. We also demonstrate how to turn the quantum Wasserstein semimetric into a concrete design of quantum WGANs that can be efficiently implemented on quantum machines. Our numerical study, via classical simulation of quantum systems, shows the more robust and scalable numerical performance of our quantum WGANs over other quantum GAN proposals. As a surprising application, our quantum WGAN has been used to generate a 3-qubit quantum circuit of ~50 gates that well approximates a 3-qubit 1-d Hamiltonian simulation circuit that requires over 10k gates using standard techniques.


Reviews: Quantum Wasserstein Generative Adversarial Networks

Neural Information Processing Systems

After rebuttal: Thank you for the rebuttal. It helped me understand the sampling more / evaluating the loss more. Also, as your scheme is not designed to generalize OT to the quantum setting, I am fine that the quantum Wasserstein semimetric does not allow for a general cost function. Based on these and the promising real life experiment mentioned in the rebuttal, I have decided to raise my review to marginally above the acceptance rate. The properties required for a semimetric are shown and furthermore the authors show that it behaves in a smooth way with respect to the quantum states.


Reviews: Quantum Wasserstein Generative Adversarial Networks

Neural Information Processing Systems

Please take into account the new comments brought forward by the new Reviewer. This accept decision is somewhat conditional on the fact that you will include more clearly these references in the final version of the paper. We strongly urge you to do so, and trust you on this, because at this point, without these references and a more clear discussion of what has been considered by other authors, the paper in its current form would be a borderline reject. Please spend at least 1/2 a page clarifying connections with prior quantum W work.


Quantum Wasserstein Generative Adversarial Networks

Neural Information Processing Systems

The study of quantum generative models is well-motivated, not only because of its importance in quantum machine learning and quantum chemistry but also because of the perspective of its implementation on near-term quantum machines. Inspired by previous studies on the adversarial training of classical and quantum generative models, we propose the first design of quantum Wasserstein Generative Adversarial Networks (WGANs), which has been shown to improve the robustness and the scalability of the adversarial training of quantum generative models even on noisy quantum hardware. Specifically, we propose a definition of the Wasserstein semimetric between quantum data, which inherits a few key theoretical merits of its classical counterpart. We also demonstrate how to turn the quantum Wasserstein semimetric into a concrete design of quantum WGANs that can be efficiently implemented on quantum machines. Our numerical study, via classical simulation of quantum systems, shows the more robust and scalable numerical performance of our quantum WGANs over other quantum GAN proposals.


Quantum Wasserstein Generative Adversarial Networks

Chakrabarti, Shouvanik, Yiming, Huang, Li, Tongyang, Feizi, Soheil, Wu, Xiaodi

Neural Information Processing Systems

The study of quantum generative models is well-motivated, not only because of its importance in quantum machine learning and quantum chemistry but also because of the perspective of its implementation on near-term quantum machines. Inspired by previous studies on the adversarial training of classical and quantum generative models, we propose the first design of quantum Wasserstein Generative Adversarial Networks (WGANs), which has been shown to improve the robustness and the scalability of the adversarial training of quantum generative models even on noisy quantum hardware. Specifically, we propose a definition of the Wasserstein semimetric between quantum data, which inherits a few key theoretical merits of its classical counterpart. We also demonstrate how to turn the quantum Wasserstein semimetric into a concrete design of quantum WGANs that can be efficiently implemented on quantum machines. Our numerical study, via classical simulation of quantum systems, shows the more robust and scalable numerical performance of our quantum WGANs over other quantum GAN proposals. As a surprising application, our quantum WGAN has been used to generate a 3-qubit quantum circuit of 50 gates that well approximates a 3-qubit 1-d Hamiltonian simulation circuit that requires over 10k gates using standard techniques.