Visible to the public A Data-driven Attack Against Support Vectors of SVM

TitleA Data-driven Attack Against Support Vectors of SVM
Publication TypeConference Paper
Year of Publication2018
AuthorsLiu, Shigang, Zhang, Jun, Wang, Yu, Zhou, Wanlei, Xiang, Yang, Vel., Olivier De
Conference NameProceedings of the 2018 on Asia Conference on Computer and Communications Security
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-5576-6
Keywordsadversarial learning, attack vectors, evasion attacks, Human Behavior, pubcrawl, Resiliency, Scalability, support vector machine
AbstractMachine learning (ML) is commonly used in multiple disciplines and real-world applications, such as information retrieval, financial systems, health, biometrics and online social networks. However, their security profiles against deliberate attacks have not often been considered. Sophisticated adversaries can exploit specific vulnerabilities exposed by classical ML algorithms to deceive intelligent systems. It is emerging to perform a thorough security evaluation as well as potential attacks against the machine learning techniques before developing novel methods to guarantee that machine learning can be securely applied in adversarial setting. In this paper, an effective attack strategy for crafting foreign support vectors in order to attack a classic ML algorithm, the Support Vector Machine (SVM) has been proposed with mathematical proof. The new attack can minimize the margin around the decision boundary and maximize the hinge loss simultaneously. We evaluate the new attack in different real-world applications including social spam detection, Internet traffic classification and image recognition. Experimental results highlight that the security of classifiers can be worsened by poisoning a small group of support vectors.
URLhttp://doi.acm.org/10.1145/3196494.3196539
DOI10.1145/3196494.3196539
Citation Keyliu_data-driven_2018