Published 2015
| Version v1
Publication
One-and-a-half-class multiple classifier systems for secure learning against evasion attacks at test time
Contributors
Description
Pattern classifiers have been widely used in adversarial settings
like spam and malware detection, although they have not been originally
designed to cope with intelligent attackers that manipulate data at
test time to evade detection. While a number of adversary-aware learning
algorithms have been proposed, they are computationally demanding
and aim to counter specific kinds of adversarial data manipulation. In
this work, we overcome these limitations by proposing a multiple classifier
system capable of improving security against evasion attacks at
test time by learning a decision function that more tightly encloses the
legitimate samples in feature space, without significantly compromising
accuracy in the absence of attack. Since we combine a set of one-class and
two-class classifiers to this end, we name our approach one-and-a-halfclass
(1.5C) classification. Our proposal is general and it can be used to
improve the security of any classifier against evasion attacks at test time,
as shown by the reported experiments on spam and malware detection
Additional details
Identifiers
- URL
- http://hdl.handle.net/11567/1086373
- URN
- urn:oai:iris.unige.it:11567/1086373
Origin repository
- Origin repository
- UNIGE