Reader small image

You're reading from  Deep Learning for Beginners

Product typeBook
Published inSep 2020
Reading LevelBeginner
PublisherPackt
ISBN-139781838640859
Edition1st Edition
Languages
Tools
Right arrow
Author (1)
Dr. Pablo Rivas
Dr. Pablo Rivas
author image
Dr. Pablo Rivas

Dr. Pablo Rivas is an assistant professor of computer science at Baylor University in Texas. He worked in industry for a decade as a software engineer before becoming an academic. He is a senior member of the IEEE, ACM, and SIAM. He was formerly at NASA Goddard Space Flight Center performing research. He is an ally of women in technology, a deep learning evangelist, machine learning ethicist, and a proponent of the democratization of machine learning and artificial intelligence in general. He teaches machine learning and deep learning. Dr. Rivas is a published author and all his papers are related to machine learning, computer vision, and machine learning ethics. Dr. Rivas prefers Vim to Emacs and spaces to tabs.
Read more about Dr. Pablo Rivas

Right arrow

Introducing adversarial learning

Recently, there has been interest in adversarial training using adversarial neural networks (Abadi, M., et al. (2016)). This is due to adversarial neural networks that can be trained to protect the model itself from AI-based adversaries. We could categorize adversarial learning into two major branches:

  • Black box: In this category, a machine learning model exists as a black box, and the adversary can only learn to attack the black box to make it fail. The adversary arbitrarily (within some bounds) creates fake input to make the black box model fail, but it has no access to the model it is attacking (Ilyas, A., et al. (2018)).
  • Insider: This type of adversarial learning is meant to be part of the training process of the model it aims to attack. The adversary has an influence on the outcome of a model that is trained not to be fooled by such an adversary (Goodfellow, I., et al. (2014)).

There are pros and cons to each of these:

Black box pros

Black...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Deep Learning for Beginners
Published in: Sep 2020Publisher: PacktISBN-13: 9781838640859

Author (1)

author image
Dr. Pablo Rivas

Dr. Pablo Rivas is an assistant professor of computer science at Baylor University in Texas. He worked in industry for a decade as a software engineer before becoming an academic. He is a senior member of the IEEE, ACM, and SIAM. He was formerly at NASA Goddard Space Flight Center performing research. He is an ally of women in technology, a deep learning evangelist, machine learning ethicist, and a proponent of the democratization of machine learning and artificial intelligence in general. He teaches machine learning and deep learning. Dr. Rivas is a published author and all his papers are related to machine learning, computer vision, and machine learning ethics. Dr. Rivas prefers Vim to Emacs and spaces to tabs.
Read more about Dr. Pablo Rivas