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Radial Basis Function Network with Differential Privacy

journal contribution
posted on 2024-11-02, 19:14 authored by Neda Bugshan, Ibrahim KhalilIbrahim Khalil, Nour Moustafa, Mahathir Almashor, Alsharif Abuadbba
Differential privacy (DP) remains a potent solution to what is arguably the defining issue in machine learning: balancing user privacy with an ever-increasing need for data. Practitioners must respect privacy, especially in sensitive healthcare domains. DP strives towards this aim by adding noise to training data to occlude its origin and nature, and is ideal for multiple Neural Network (NN) types. This includes deep varieties that utilise multiple hidden layers, and shallow ones with single hidden layers such as the Radial Base Function Network (RBFN). The work herein explores DP within this context by devising a model that leverages Gaussian RBF parameters to add privacy during training. Our model's efficacy is examined against two real and three synthetic datasets, with results showing reasonable trade-offs between accuracy and privacy. With high intra-class variation, we retained 100% accuracy for two synthetic datasets and a drop of only 1.72% for another. If privacy is prioritised with low intra-class variation, we achieved accuracy drops of 8%–23% with an inherited epsilon that never exceeds one, indicating a good privacy guarantee. We also show that timely training is achievable on a high-dimensional dataset consisting of 2M records and 170 features.

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Related Materials

  1. 1.
    DOI - Is published in 10.1016/j.future.2021.09.013
  2. 2.
    ISSN - Is published in 0167739X

Journal

Future Generation Computer Systems

Volume

127

Start page

473

End page

486

Total pages

14

Publisher

Elsevier BV

Place published

Netherlands

Language

English

Copyright

© 2021 Elsevier B.V. All rights reserved.

Former Identifier

2006113721

Esploro creation date

2022-10-16

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