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master thesis

Uncertainty-aware Model Inversion Networks

Gratier de Saint-Louis, Romain  
July 14, 2020

In this thesis, we assess a new framework called UMIN on a data-driven optimization problem. Such a problem happens recurrently in real life and can quickly become dicult to model when the input has a high dimensionality as images for instance. From the architecture of aircraft to the design of proteins, a great number of dierent techniques have already been explored. Based on former solutions, this work introduces a brand new Bayesian approach that updates previous frameworks. Former model architectures use generative adversarial networks on one side and a forward model on the other side to improve the accuracy of the results. However, employing a Bayesian network allows us to leverage its uncertainty estimates to enhance the accuracy of the results and also to reduce unrealistic samples output by the generator. By creating new experiments on a modern MNIST dataset and by reproducing former works taken as baseline, we show that the framework introduces in this work outperforms the previous method. The whole code is available at the following url: https://github.com/RomainGratier/Black-box_Optimization_via_Deep_ Generative-Exploratory_Networks.

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Type
master thesis
Author(s)
Gratier de Saint-Louis, Romain  
Advisors
Alahi, Alexandre  
Date Issued

2020-07-14

Total of pages

35 pages

Written at

EPFL

EPFL units
SGC  
VITA  
Section
GC-S  
Available on Infoscience
July 14, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/170050
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