Machine Beats Machine: Machine Learning Models to Defend Against Adversarial Attacks

09/28/2022
by   Jože M. Rožanec, et al.
0

We propose using a two-layered deployment of machine learning models to prevent adversarial attacks. The first layer determines whether the data was tampered, while the second layer solves a domain-specific problem. We explore three sets of features and three dataset variations to train machine learning models. Our results show clustering algorithms achieved promising results. In particular, we consider the best results were obtained by applying the DBSCAN algorithm to the structured structural similarity index measure computed between the images and a white reference image.

READ FULL TEXT
research
11/27/2018

Robust Classification of Financial Risk

Algorithms are increasingly common components of high-impact decision-ma...
research
06/12/2018

Learning to Automatically Generate Fill-In-The-Blank Quizzes

In this paper we formalize the problem automatic fill-in-the-blank quest...
research
01/28/2021

Adversarial Machine Learning Attacks on Condition-Based Maintenance Capabilities

Condition-based maintenance (CBM) strategies exploit machine learning mo...
research
07/06/2022

Enhancing Adversarial Attacks on Single-Layer NVM Crossbar-Based Neural Networks with Power Consumption Information

Adversarial attacks on state-of-the-art machine learning models pose a s...
research
04/28/2020

Private Dataset Generation Using Privacy Preserving Collaborative Learning

With increasing usage of deep learning algorithms in many application, n...
research
03/29/2020

Prediction of properties of steel alloys

We present a study of possible predictors based on four supervised machi...
research
01/05/2023

Enhancement attacks in biomedical machine learning

The prevalence of machine learning in biomedical research is rapidly gro...

Please sign up or login with your details

Forgot password? Click here to reset