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Lecturer in Science and Technology publishes a paper in a Web of Science-indexed journal
2024-12-13
Mr Goran Saman Nariman, a Lecturer in the Computer
Science Department at the College of Science and Technology, University of
Human Development, has co-authored a scientific paper titled Communication
overhead reduction in federated learning: a review, published
in the International Journal of Data
Science and Analytics. The journal is indexed in the Emerging
Sources Citation Index, which is part of the Core Collection of the Web of
Science. Below is the paper’s abstract. Federated learning (FL) is a decentralized
machine learning approach, where multiple entities, typically devices or edge
servers, collaboratively train a shared model while keeping their training data
locally. This enables these entities to train the model on their local datasets
and then exchange just the model updates with a central server. While this
approach enhances privacy, it also introduces a communication overhead. This
overhead arises from continuous updates of both the global model by the clients
and the local model by the central server, referred to as update rounds. This
review explores methods that mitigate the communication overhead at the data
and model level, classifying them into broad categories based on their shared
characteristics: communication round reduction and compression techniques. The
contribution of this review lies in providing an overview of these techniques,
classifying the strategies, and exploring how they can be combined for maximum
communication enhancement, highlighting the factors contributing to
communication load and their corresponding reduction methods. Furthermore, the
review conducts a significant statistical analysis of the frequently used ML
models, comparative approaches for evaluation, and datasets. Then, it considers
their non-identically and independently distributed data aspects. This
comprehensive analysis aims to standardize the application of these models and
datasets throughout de facto. Finally, a guideline framework is provided to
help researchers effectively address the communication overhead in FL.