LGCRNINov 23, 2023

A Blockchain Solution for Collaborative Machine Learning over IoT

arXiv:2311.14136v21 citationsh-index: 6
Originality Incremental advance
AI Analysis

This is an incremental improvement for IoT applications requiring secure and efficient collaborative machine learning.

The paper tackled the challenges of data privacy, security, and scalability in IoT machine learning by combining incremental learning vector quantization with Ethereum blockchain, resulting in reduced computational and communication overheads while maintaining privacy and security.

The rapid growth of Internet of Things (IoT) devices and applications has led to an increased demand for advanced analytics and machine learning techniques capable of handling the challenges associated with data privacy, security, and scalability. Federated learning (FL) and blockchain technologies have emerged as promising approaches to address these challenges by enabling decentralized, secure, and privacy-preserving model training on distributed data sources. In this paper, we present a novel IoT solution that combines the incremental learning vector quantization algorithm (XuILVQ) with Ethereum blockchain technology to facilitate secure and efficient data sharing, model training, and prototype storage in a distributed environment. Our proposed architecture addresses the shortcomings of existing blockchain-based FL solutions by reducing computational and communication overheads while maintaining data privacy and security. We assess the performance of our system through a series of experiments, showcasing its potential to enhance the accuracy and efficiency of machine learning tasks in IoT settings.

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