While Multiple Classifier Systems (MCS) are currently used in several security applications, like intrusion detection in computer networks and spam filtering, there are very few MCS proposals that explicitly address the problem of learning in adversarial environments. In this paper we propose a general algorithm based on a multiple classifier approach to find out and clean mislabeled training samples. We will report several experiments to verify the robustness of the proposed approach to the presence of possible mislabeled samples. In particular, we will show that the performance obtained with a simple classifier trained on the training set "cleaned" by our algorithm is comparable and even better than those obtained by some state-of-the-art MCS trained on the original datasets.

Pattern recognition techniques are often used in environments (called adversarial environments) where adversaries can consciously act to limit or prevent accurate recognition performance. This can be obtained, for example, by changing labels of training data in a malicious way.

SOCIAL: Self-Organizing ClassIfier ensemble for Adversarial Learning

Gargiulo Francesco;
2010

Abstract

Pattern recognition techniques are often used in environments (called adversarial environments) where adversaries can consciously act to limit or prevent accurate recognition performance. This can be obtained, for example, by changing labels of training data in a malicious way.
2010
Inglese
MCS'10 Proceedings of the 9th international conference on Multiple Classifier Systems
5997
84
93
10
978-3-642-12126-5
Sì, ma tipo non specificato
07-09/042010
Cairo, Egypt
While Multiple Classifier Systems (MCS) are currently used in several security applications, like intrusion detection in computer networks and spam filtering, there are very few MCS proposals that explicitly address the problem of learning in adversarial environments. In this paper we propose a general algorithm based on a multiple classifier approach to find out and clean mislabeled training samples. We will report several experiments to verify the robustness of the proposed approach to the presence of possible mislabeled samples. In particular, we will show that the performance obtained with a simple classifier trained on the training set "cleaned" by our algorithm is comparable and even better than those obtained by some state-of-the-art MCS trained on the original datasets.
Multiple Classifier System
Label noise
adversarial environments
2
none
Gargiulo, Francesco; Sansone, Carlo
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/317121
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