Repository logo
Collections
Browse
Statistics
  • English
  • हिंदी
Log In
New user? Click here to register.Have you forgotten your password?
  1. Home
  2. Theses and Dissertations
  3. M Tech Dissertations
  4. On the Robustness of Federated Learning towards Various Attacks

On the Robustness of Federated Learning towards Various Attacks

Files

202111072.pdf (6.16 MB)

Date

2023

Authors

Yagnik, Shrey Devenkumar

Journal Title

Journal ISSN

Volume Title

Publisher

Dhirubhai Ambani Institute of Information and Communication Technology

Abstract

A study based on Federated Learning (FL), i.e., a kind of decentralized learningthat consists of local training among the clients, and the central server returnsthe federated average. Deep learning models have been used in numeroussecurity-critical settings since they have performed well on various tasks. Here,we study different kinds of attacks on FL. FL has become a popular distributedtraining method because it enables users to work with large datasets without sharingthem. Once the model has been trained using data on local devices, only theupdated model parameters are sent to the central server. The FL approach is distributed.Thus, someone could launch an attack to influence the model�s behavior.In this work, we conducted the study for a Backdoor attack, a black-box attackwhere we added a few poisonous instances to check the model�s behavior duringtest time. Also, we conducted three types of White-Box attacks, i.e., Fast GradientSign Method (FGSM), Carlini-Wagner (CW), and DeepFool. We conductedvarious experiments using the standard CIFAR10 dataset to alter the model�s behavior.We used ResNet20 and DenseNet as the Deep Neural Networks. Wefound some adversarial samples upon which the required perturbation is addedto fool the model upon giving the misclassifications. This decentralized approachto training can make it more difficult for attackers to access the training data, butit can also introduce new vulnerabilities that attackers can exploit. We found outthat the expected behavior of the model could be compromised without havingmuch difference in the training accuracy.

Description

Keywords

Federated Learning, Deep Learning, White-Box attacks, Fast Gradient Sign Method (FGSM), Carlini-Wagner, CW, DeepFool

Citation

Yagnik, Shrey Devenkumar (2023). On the Robustness of Federated Learning towards Various Attacks. Dhirubhai Ambani Institute of Information and Communication Technology. vii, 33 p. (Acc. # T01143).

URI

http://ir.daiict.ac.in/handle/123456789/1202

Collections

M Tech Dissertations

Endorsement

Review

Supplemented By

Referenced By

Full item page
 
Quick Links
  • Home
  • Search
  • Research Overview
  • About
Contact

DAU, Gandhinagar, India

library@dau.ac.in

+91 0796-8261-578

Follow Us

© 2025 Dhirubhai Ambani University
Designed by Library Team