ML Mule: Mobile-Driven Context-Aware Collaborative Learning
Haoxiang Yu, Javier Berrocal, Christine Julien

TL;DR
ML Mule introduces a mobile device-based collaborative learning framework that enhances privacy, reduces convergence time, and improves model accuracy by leveraging physical movement and space-sharing among users.
Contribution
It proposes a novel decentralized learning approach using mobile devices as 'mules' to facilitate model sharing and evolution in physical spaces, addressing limitations of existing federated methods.
Findings
Faster convergence compared to existing methods
Higher model accuracy achieved
Enhanced privacy through decentralized model sharing
Abstract
Artificial intelligence has been integrated into nearly every aspect of daily life, powering applications from object detection with computer vision to large language models for writing emails and compact models for use in smart homes. These machine learning models at times cater to the needs of individual users but are often detached from them, as they are typically stored and processed in centralized data centers. This centralized approach raises privacy concerns, incurs high infrastructure costs, and struggles to provide real time, personalized experiences. Federated and fully decentralized learning methods have been proposed to address these issues, but they still depend on centralized servers or face slow convergence due to communication constraints. We propose ML Mule, an approach that utilizes individual mobile devices as 'mules' to train and transport model snapshots as the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · IoT and Edge/Fog Computing · Mobile Crowdsensing and Crowdsourcing
