TY - GEN
T1 - Performance Analysis of Federated Learning in wireless networks
AU - Joomye, Abdurraheem
AU - Tahir, Mohammad
AU - Sheikh, Muhammad Aman
AU - Ling, Mee Hong
AU - Meng, Yap Kian
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022/12/2
Y1 - 2022/12/2
N2 - With the proliferation of connected devices and the increase in the use of Machine Learning(ML), more confidential data is being generated. Traditional ML, whereby data is sent to a server for training and processing using models, is becoming less suitable due to privacy concerns. Thus, distributed approaches such as Federated Learning(FL) are becoming more popular. In the latter approach, the model is sent to the clients, where it is trained using the client's data. The updated model is sent to a server to be aggregated. FL is expected to be used extensively in wireless networks. Therefore, researchers are interested in optimizing Federated Learning for wireless networks. This paper aims to study the performance of FL in terms of accuracy and amount of data exchanged in a wireless network considering the impact of delay using different datasets. The accuracy of the FL model was found to be reliable when benchmarked to the centralized approach(less than 0.1 difference in accuracy). The data transfer size with FL was also significantly smaller than in the centralized approach for all the tested datasets.
AB - With the proliferation of connected devices and the increase in the use of Machine Learning(ML), more confidential data is being generated. Traditional ML, whereby data is sent to a server for training and processing using models, is becoming less suitable due to privacy concerns. Thus, distributed approaches such as Federated Learning(FL) are becoming more popular. In the latter approach, the model is sent to the clients, where it is trained using the client's data. The updated model is sent to a server to be aggregated. FL is expected to be used extensively in wireless networks. Therefore, researchers are interested in optimizing Federated Learning for wireless networks. This paper aims to study the performance of FL in terms of accuracy and amount of data exchanged in a wireless network considering the impact of delay using different datasets. The accuracy of the FL model was found to be reliable when benchmarked to the centralized approach(less than 0.1 difference in accuracy). The data transfer size with FL was also significantly smaller than in the centralized approach for all the tested datasets.
KW - delay
KW - Federated learning
KW - Machine learning
KW - privacy and security
KW - Wireless networks
UR - http://www.scopus.com/inward/record.url?scp=85144063049&partnerID=8YFLogxK
U2 - 10.1109/ISTT56288.2022.9966534
DO - 10.1109/ISTT56288.2022.9966534
M3 - Conference contribution
AN - SCOPUS:85144063049
T3 - Conference Proceedings - 2022 IEEE 6th International Symposium on Telecommunication Technologies: Intelligent Connectivity for Sustainable World, ISTT 2022
SP - 68
EP - 73
BT - Conference Proceedings - 2022 IEEE 6th International Symposium on Telecommunication Technologies
A2 - Razak, Nur Idora Abdul
A2 - Malik, Nik Noordini Nik Abdul
A2 - Zainuddin, Aznilinda
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 6th IEEE International Symposium on Telecommunication Technologies, ISTT 2022
Y2 - 14 November 2022 through 16 November 2022
ER -