Please use this identifier to cite or link to this item: https://knowledgecommons.lakeheadu.ca/handle/2453/5175
Title: Light-weight federated learning with augmented knowledge distillation for human activity recognition
Authors: Gad, Gad
Keywords: Deep Learning (DL);Federated Learning (FL);Empirical Loss Minimization (ELM);Federated Learning algorithm based on Knowledge Distillation (FedAKD);Local Differential Privacy (LDP);Human Activity Recognition (HAR)
Issue Date: 2023
Abstract: The field of deep learning has experienced significant growth in recent years in various domains where data can be collected and processed. However, as data plays a central role in the deep learning revolution, there are risks associated with moving the data from where it is produced to central servers and data centers for processing. To address this issue, Federated Learning (FL) was introduced as a framework for collaboratively training a global model on distributed data. However, deploying FL comes with several unique challenges, including communication overhead and system and statistical heterogeneity. While FL is inherently private as clients don’t share local data, privacy is still a concern in the FL context since sensitive data can be leaked from the exchanged gradients. To address these challenges, this thesis proposes the incorporation of techniques such as Knowledge Distillation (KD) and Differential Privacy (DP) with FL. Specifically, a modelagnostic FL algorithm based on KD is proposed, called the Federated Learning algorithm based on Knowledge Distillation (FedAKD). FedAKD utilizes a shared dataset as a proxy dataset to calculate and transfer knowledge in the form of soft labels, which are then sent to the server for aggregation and broadcast back to clients to train on them in addition to local training. Additionally, we elaborate on applying Local Differential Privacy (LDP) where clients apply gradient clipping and noise injection according to the Differentially Private Stochastic Gradient Descent (DP-SGD). The FedAKD algorithm is evaluated utilizing Human Activity Recognition (HAR) datasets in terms of accuracy and communication efficiency.
URI: https://knowledgecommons.lakeheadu.ca/handle/2453/5175
metadata.etd.degree.discipline: Computer Science
metadata.etd.degree.name: Master of Science
metadata.etd.degree.level: Master
metadata.dc.contributor.advisor: Fadlullah, Zubair
Fouda, Mostafa
Appears in Collections:Electronic Theses and Dissertations from 2009

Files in This Item:
File Description SizeFormat 
GadG2023m-1b.pdf13.18 MBAdobe PDFThumbnail
View/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.