21–22 Nov 2024
Mercure Budapest Castle Hill Hotel
Europe/Budapest timezone

On the learning abilities of photonic continuous-variable Born machines

Not scheduled
20m
Mercure Budapest Castle Hill Hotel

Mercure Budapest Castle Hill Hotel

H-1013 Budapest, Krisztina Körút 41-43 Tel.: +36 1 488-810

Speaker

Zoltán Kolarovszki

Description

We investigate photonic continuous-variable Born machines (CVBMs), which utilize photonic quantum states as resources for continuous probability distributions. Implementing exact gradient descent in the CVBM training process is often infeasible, bringing forward the need to approximate the gradients using an estimator obtained from a smaller number of samples, obtaining a quantum stochastic gradient descent (SGD) method. In this work, the ability to train CVBMs is analyzed using stochastic gradients obtained using relatively few samples from the probability distribution corresponding to homodyne measurement. The main obstacle to this analysis is that classically simulating CVBMs and obtaining samples is a demanding task, while a large number of iterations are needed to achieve convergence. The present research is enabled by a novel strategy to simulate homodyne detections of generic multimode photonic states using a classical computer. With this approach, a more comprehensive study of CVBMs is made possible, and the training of multimode CVBMs is demonstrated with parametric quantum circuits considerably larger than in previous articles. More specifically, we use the proposed algorithm to demonstrate learning of multimode quantum distributions using CVBMs. Moreover, successful CVBM trainings were demonstrated with the use of stochastic gradients.

Primary author

Co-authors

Dániel Nagy (Wigner Research Centre for Physics) Zoltan Zimboras

Presentation materials

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