Tiny, Hardware-Independent, Compression-based Classification
Charles Meyers, Aaron MacSween, Erik Elmroth, Tommy L\"ofstedt

TL;DR
This paper introduces a compression-based classification method that is hardware-independent, privacy-preserving, and effective with small datasets, suitable for client-side deployment on limited hardware.
Contribution
It develops the normalized compression distance into a kernel for complex data modeling and improves training efficiency, enabling practical client-side machine learning.
Findings
Compression-based methods perform comparably or better than traditional metrics.
The approach requires minimal computational resources, suitable for client devices.
Models trained with this method achieve high accuracy with few samples.
Abstract
The recent developments in machine learning have highlighted a conflict between online platforms and their users in terms of privacy. The importance of user privacy and the struggle for power over user data has been intensified as regulators and operators attempt to police online platforms. As users have become increasingly aware of privacy issues, client-side data storage, management, and analysis have become a favoured approach to large-scale centralised machine learning. However, state-of-the-art machine learning methods require vast amounts of labelled user data, making them unsuitable for models that reside client-side and only have access to a single user's data. State-of-the-art methods are also computationally expensive, which degrades the user experience on compute-limited hardware and also reduces battery life. A recent alternative approach has proven remarkably successful in…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Computability, Logic, AI Algorithms · Machine Learning and Algorithms
