Poisoning Attacks against Support Vector Machines
University of Cagliari · University of Tübingen
Abstract
We investigate a family of poisoning attacks against Support Vector Machines (SVM). Such attacks inject specially crafted training data that increases the SVM's test error. Central to the motivation for these attacks is the fact that most learning algorithms assume that their training data comes from a natural or well-behaved distribution. However, this assumption does not generally hold in security-sensitive settings. As we demonstrate, an intelligent adversary can, to some extent, predict the change of the SVM's decision function due to malicious input and use this ability to construct malicious data. The proposed attack uses a gradient ascent strategy in which the gradient is computed based on properties of…
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Authors
3Topics & keywords
- Support vector machine
- Computer science
- Classifier (UML)
- Artificial intelligence
- Construct (python library)
- Machine learning
- Test data
- Structured support vector machine
- Peace, Justice and strong institutions