Multimodal Multiple Federated Feature Construction Method for IoT Environments
Afsaneh Mahanipour, Hana Khamfroush

TL;DR
This paper introduces a novel federated feature construction method called MMFFC that enhances IoT data processing by reducing dataset size, lowering communication costs, and improving model accuracy without sharing raw data.
Contribution
The paper proposes the first federated feature construction method using multimodal optimization and gravitational search, improving accuracy and reducing communication costs in IoT environments.
Findings
Reduces dataset size by about 60%
Improves model accuracy across multiple datasets
Lowers communication costs in federated learning scenarios
Abstract
The fast development of Internet-of-Things (IoT) devices and applications has led to vast data collection, potentially containing irrelevant, noisy, or redundant features that degrade learning model performance. These collected data can be processed on either end-user devices (clients) or edge/cloud server. Feature construction is a pre-processing technique that can generate discriminative features and reveal hidden relationships between original features within a dataset, leading to improved performance and reduced computational complexity of learning models. Moreover, the communication cost between clients and edge/cloud server can be minimized in situations where a dataset needs to be transmitted for further processing. In this paper, the first federated feature construction (FFC) method called multimodal multiple FFC (MMFFC) is proposed by using multimodal optimization and…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Energy Efficient Wireless Sensor Networks · Machine Learning and ELM
