A Tutorial on Adversarial Learning Attacks and Countermeasures
- URL: http://arxiv.org/abs/2202.10377v1
- Date: Mon, 21 Feb 2022 17:14:45 GMT
- Title: A Tutorial on Adversarial Learning Attacks and Countermeasures
- Authors: Cato Pauling, Michael Gimson, Muhammed Qaid, Ahmad Kida and Basel
Halak
- Abstract summary: A machine learning model is capable of making highly accurate predictions without being explicitly programmed to do so.
adversarial learning attacks pose a serious security threat that greatly undermines further such systems.
This paper provides a detailed tutorial on the principles of adversarial learning, explains the different attack scenarios, and gives an in-depth insight into the state-of-art defense mechanisms against this rising threat.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine learning algorithms are used to construct a mathematical model for a
system based on training data. Such a model is capable of making highly
accurate predictions without being explicitly programmed to do so. These
techniques have a great many applications in all areas of the modern digital
economy and artificial intelligence. More importantly, these methods are
essential for a rapidly increasing number of safety-critical applications such
as autonomous vehicles and intelligent defense systems. However, emerging
adversarial learning attacks pose a serious security threat that greatly
undermines further such systems. The latter are classified into four types,
evasion (manipulating data to avoid detection), poisoning (injection malicious
training samples to disrupt retraining), model stealing (extraction), and
inference (leveraging over-generalization on training data). Understanding this
type of attacks is a crucial first step for the development of effective
countermeasures. The paper provides a detailed tutorial on the principles of
adversarial machining learning, explains the different attack scenarios, and
gives an in-depth insight into the state-of-art defense mechanisms against this
rising threat .
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