Mind Your Weight(s): A Large-scale Study on Insufficient Machine Learning Model Protection in Mobile Apps
Zhichuang Sun, Ruimin Sun, Long Lu, Alan Mislove

TL;DR
This large-scale empirical study reveals that a significant portion of mobile apps lack effective machine learning model protection, exposing models to theft with serious financial and security implications.
Contribution
First comprehensive analysis of ML model protection in mobile apps, highlighting widespread vulnerabilities and the need for more robust security techniques.
Findings
41% of ML apps do not protect models at all
66% of protected models can be extracted with simple analysis
Leaked models pose potential financial and security risks worth millions
Abstract
On-device machine learning (ML) is quickly gaining popularity among mobile apps. It allows offline model inference while preserving user privacy. However, ML models, considered as core intellectual properties of model owners, are now stored on billions of untrusted devices and subject to potential thefts. Leaked models can cause both severe financial loss and security consequences. This paper presents the first empirical study of ML model protection on mobile devices. Our study aims to answer three open questions with quantitative evidence: How widely is model protection used in apps? How robust are existing model protection techniques? What impacts can (stolen) models incur? To that end, we built a simple app analysis pipeline and analyzed 46,753 popular apps collected from the US and Chinese app markets. We identified 1,468 ML apps spanning all popular app categories. We found that,…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Security and Verification in Computing · Advanced Data Storage Technologies
