Conference item
Adversarial robustness guarantees for classification with Gaussian Processes
- Abstract:
- We investigate adversarial robustness of Gaussian Process classification (GPC) models. Specifically, given a compact subset of the input space T⊆ℝd enclosing a test point x∗ and a GPC trained on a dataset , we aim to compute the minimum and the maximum classification probability for the GPC over all the points in T.In order to do so, we show how functions lower- and upper-bounding the GPC output in T can be derived, and implement those in a branch and bound optimisation algorithm. For any error threshold ϵ>0 selected \emph{a priori}, we show that our algorithm is guaranteed to reach values ϵ-close to the actual values in finitely many iterations.We apply our method to investigate the robustness of GPC models on a 2D synthetic dataset, the SPAM dataset and a subset of the MNIST dataset, providing comparisons of different GPC training techniques, and show how our method can be used for interpretability analysis. Our empirical analysis suggests that GPC robustness increases with more accurate posterior estimation.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
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(Preview, Version of record, pdf, 609.9KB, Terms of use)
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- Publication website:
- http://proceedings.mlr.press/v108/blaas20a.html
Authors
- Publisher:
- Proceedings of Machine Learning Research
- Volume:
- 108
- Pages:
- 3372-3382
- Publication date:
- 2020-06-03
- Acceptance date:
- 2020-01-06
- Event title:
- 23rd International Conference on Artificial Intelligence and Statistics
- Event location:
- Online
- Event website:
- https://www.aistats.org/
- Event start date:
- 2020-08-26
- Event end date:
- 2020-08-28
- Language:
-
English
- Keywords:
- Pubs id:
-
1090987
- Local pid:
-
pubs:1090987
- Deposit date:
-
2020-03-04
- ARK identifier:
Terms of use
- Copyright holder:
- Blaas, A et al.
- Copyright date:
- 2020
- Rights statement:
- Copyright 2020 by the author(s).
- Notes:
- This conference paper was presented at the 23rd International Conference on Artificial Intelligence and Statistics (AISTATS 2020), August 26-28, Online. This is the publisher's version of the article. The final version is available online from the Proceedings of Machine Learning Research at: http://proceedings.mlr.press/v108/blaas20a.html
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