scholarly journals A generative modeling approach for benchmarking and training shallow quantum circuits

2019 ◽  
Vol 5 (1) ◽  
Author(s):  
Marcello Benedetti ◽  
Delfina Garcia-Pintos ◽  
Oscar Perdomo ◽  
Vicente Leyton-Ortega ◽  
Yunseong Nam ◽  
...  
2020 ◽  
Author(s):  
Ran Liu ◽  
Cem Subakan ◽  
Aishwarya H. Balwani ◽  
Jennifer Whitesell ◽  
Julie Harris ◽  
...  

AbstractUnderstanding how neural structure varies across individuals is critical for characterizing the effects of disease, learning, and aging on the brain. However, disentangling the different factors that give rise to individual variability is still an outstanding challenge. In this paper, we introduce a deep generative modeling approach to find different modes of variation across many individuals. To do this, we start by training a variational autoencoder on a collection of auto-fluorescence images from a little over 1,700 mouse brains at 25 micron resolution. To then tap into the learned factors and validate the model’s expressiveness, we developed a novel bi-directional technique to interpret the latent space–by making structured perturbations to both, the high-dimensional inputs of the network, as well as the low-dimensional latent variables in its bottleneck. Our results demonstrate that through coupling generative modeling frameworks with structured perturbations, it is possible to probe the latent space to provide insights into the representations of brain structure formed in deep neural networks.


2009 ◽  
Vol 94 (4) ◽  
pp. 829-843 ◽  
Author(s):  
Chad H. Van Iddekinge ◽  
Gerald R. Ferris ◽  
Pamela L. Perrewé ◽  
Alexa A. Perryman ◽  
Fred R. Blass ◽  
...  

2021 ◽  
Vol 3 (1) ◽  
Author(s):  
Vicente Leyton-Ortega ◽  
Alejandro Perdomo-Ortiz ◽  
Oscar Perdomo

2019 ◽  
Vol 5 (10) ◽  
pp. eaaw9918 ◽  
Author(s):  
D. Zhu ◽  
N. M. Linke ◽  
M. Benedetti ◽  
K. A. Landsman ◽  
N. H. Nguyen ◽  
...  

Generative modeling is a flavor of machine learning with applications ranging from computer vision to chemical design. It is expected to be one of the techniques most suited to take advantage of the additional resources provided by near-term quantum computers. Here, we implement a data-driven quantum circuit training algorithm on the canonical Bars-and-Stripes dataset using a quantum-classical hybrid machine. The training proceeds by running parameterized circuits on a trapped ion quantum computer and feeding the results to a classical optimizer. We apply two separate strategies, Particle Swarm and Bayesian optimization to this task. We show that the convergence of the quantum circuit to the target distribution depends critically on both the quantum hardware and classical optimization strategy. Our study represents the first successful training of a high-dimensional universal quantum circuit and highlights the promise and challenges associated with hybrid learning schemes.


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