LGMLApr 26, 2019

Robustness Verification of Support Vector Machines

arXiv:1904.11803v121 citations
Originality Incremental advance
AI Analysis

This work addresses the robustness verification problem for SVMs, a major ML model, but it is incremental as it adapts existing neural network verification methods to SVMs.

The authors tackled the problem of formally verifying the robustness of support vector machines (SVMs) against adversarial examples, achieving fast and scalable automated verification with significantly high percentages of provable robustness on datasets like MNIST compared to neural networks.

We study the problem of formally verifying the robustness to adversarial examples of support vector machines (SVMs), a major machine learning model for classification and regression tasks. Following a recent stream of works on formal robustness verification of (deep) neural networks, our approach relies on a sound abstract version of a given SVM classifier to be used for checking its robustness. This methodology is parametric on a given numerical abstraction of real values and, analogously to the case of neural networks, needs neither abstract least upper bounds nor widening operators on this abstraction. The standard interval domain provides a simple instantiation of our abstraction technique, which is enhanced with the domain of reduced affine forms, which is an efficient abstraction of the zonotope abstract domain. This robustness verification technique has been fully implemented and experimentally evaluated on SVMs based on linear and nonlinear (polynomial and radial basis function) kernels, which have been trained on the popular MNIST dataset of images and on the recent and more challenging Fashion-MNIST dataset. The experimental results of our prototype SVM robustness verifier appear to be encouraging: this automated verification is fast, scalable and shows significantly high percentages of provable robustness on the test set of MNIST, in particular compared to the analogous provable robustness of neural networks.

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