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Non-Transferable Learning: A New Approach for Model Ownership Verification and Applicability Authorization

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As Artificial Intelligence as a Service gains popularity, protecting well-trained models as intellectual property is becoming increasingly important. There are two common types of protection methods: ownership verification and usage authorization. In this paper, we propose Non-Transferable Learning (NTL), a novel approach that captures the exclusive data representation in the learned model and restricts the model generalization ability to certain domains. This approach provides effective solutions to both model verification and authorization. Specifically: 1) For ownership verification, watermarking techniques are commonly used but are often vulnerable to sophisticated watermark removal methods. By comparison, our NTL-based ownership verification provides robust resistance to state-of-the-art watermark removal methods, as shown in extensive experiments with 6 removal approaches over the digits, CIFAR10 & STL10, and VisDA datasets. 2) For usage authorization, prior solutions focus on authorizing specific users to access the model, but authorized users can still apply the model to any data without restriction. Our NTL-based authorization approach instead provides data-centric protection, which we call applicability authorization, by significantly degrading the performance of the model on unauthorized data. Its effectiveness is also shown through experiments on the aforementioned datasets.

Lixu Wang, Shichao Xu, Ruiqi Xu, Xiao Wang, Qi Zhu• 2021

Related benchmarks

TaskDatasetResultRank
Domain VerificationOffice Home 65
Dua0.515
25
Domain VerificationDomainNet Mini
Dua38.66
25
Domain VerificationOffice-31
Dua1.63
20
Model Intellectual Property ProtectionDigit Datasets (MNIST, USPS, SVHN, MNIST-M) standard
Source Drop-0.2
15
Image ClassificationDigits (MNIST, USPS, SVHN, MNIST-M) standard (test)
Source Drop57.6
15
Digit ClassificationDigit Datasets MT, US, SN, MM
Source Drop0.6
10
Applicability AuthorizationDigit datasets (MNIST, USPS, SVHN, MNIST-M)
Authorization Success Rate99.8
8
Image ClassificationDigit datasets (MNIST, USPS, SVHN, MNIST-M)
Source Drop1
8
Ownership VerificationMini-DomainNet Clipart
Au57.1
7
Ownership VerificationOffice-31 Amazon
Au15
7
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