Mixed-State Quantum Denoising Diffusion Probabilistic Model
- URL: http://arxiv.org/abs/2411.17608v1
- Date: Tue, 26 Nov 2024 17:20:58 GMT
- Title: Mixed-State Quantum Denoising Diffusion Probabilistic Model
- Authors: Gino Kwun, Bingzhi Zhang, Quntao Zhuang,
- Abstract summary: We propose a mixed-state quantum denoising diffusion probabilistic model (MSQuDDPM) to eliminate the need for scrambling unitaries.
MSQuDDPM integrates depolarizing noise channels in the forward diffusion process and parameterized quantum circuits with projective measurements in the backward denoising steps.
We evaluate MSQuDDPM on quantum ensemble generation tasks, demonstrating its successful performance.
- Score: 0.40964539027092906
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Generative quantum machine learning has gained significant attention for its ability to produce quantum states with desired distributions. Among various quantum generative models, quantum denoising diffusion probabilistic models (QuDDPMs) [Phys. Rev. Lett. 132, 100602 (2024)] provide a promising approach with stepwise learning that resolves the training issues. However, the requirement of high-fidelity scrambling unitaries in QuDDPM poses a challenge in near-term implementation. We propose the \textit{mixed-state quantum denoising diffusion probabilistic model} (MSQuDDPM) to eliminate the need for scrambling unitaries. Our approach focuses on adapting the quantum noise channels to the model architecture, which integrates depolarizing noise channels in the forward diffusion process and parameterized quantum circuits with projective measurements in the backward denoising steps. We also introduce several techniques to improve MSQuDDPM, including a cosine-exponent schedule of noise interpolation, the use of single-qubit random ancilla, and superfidelity-based cost functions to enhance the convergence. We evaluate MSQuDDPM on quantum ensemble generation tasks, demonstrating its successful performance.
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