Fast Adversarial Training for Deep Neural Networks
Farzad Nikfam
Fast Adversarial Training for Deep Neural Networks.
Rel. Maurizio Martina, Muhammad Shafique. Politecnico di Torino, Corso di laurea magistrale in Mechatronic Engineering (Ingegneria Meccatronica), 2020
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Abstract
Thesis topic focuses on Machine Learning from the software point of view, nowadays one of the research route for the management of large databases. Machine Learning is already widely present in our daily lives and we can find it, for example, both in the anti-spam filter of electronic mail, and in facial recognition of cameras, in the automatic corrector of smartphones, or in weather forecasts, etc. The aim of the thesis is to review algorithms written in Python language for models robust to adversarial attacks and try to apply to them fast training techniques to improve computational time. The word “fast training” refers to a code able to reach the skill to distinguish and divide a large database's data in a reasonable time according to the learning rules given by the programmer.
The main criticality of fast training consists in being able to find a quite fast algorithm but as well accurate: too much accuracy may require learning times that are too long to be acceptable, while a high convergence speed could lead to wrong results or even worse, do not converge, but diverge
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