Litcius/Paper detail

Intrinsic Certified Robustness of Bagging against Data Poisoning Attacks

Jinyuan Jia, Xiaoyu Cao, Neil Zhenqiang Gong

2021Proceedings of the AAAI Conference on Artificial Intelligence79 citationsDOIOpen Access PDF

Abstract

In a data poisoning attack, an attacker modifies, deletes, and/or inserts some training examples to corrupt the learnt machine learning model. Bootstrap Aggregating (bagging) is a well known ensemble learning method, which trains multiple base models on random subsamples of a training dataset using a base learning algorithm and uses majority vote to predict labels of testing examples. We prove the intrinsic certified robustness of bagging against data poisoning attacks. Specifically, we show that bagging with an arbitrary base learning algorithm provably predicts the same label for a testing example when the number of modified, deleted, and/or inserted training examples is bounded by a threshold. Moreover, we show that our derived threshold is tight if no assumptions on the base learning algorithm are made. We evaluate our method on MNIST and CIFAR10. For instance, our method achieves a certified accuracy of 91.1% on MNIST when arbitrarily modifying, deleting, and/or inserting 100 training examples. Code is available at: https://github.com/jjy1994/BaggingCertifyDataPoisoning.

Topics & Concepts

MNIST databaseComputer scienceRobustness (evolution)Machine learningEnsemble learningArtificial intelligenceBounded functionRandom forestBase (topology)Training setCertificationDeep learningMathematicsPolitical scienceChemistryMathematical analysisBiochemistryGeneLawAdversarial Robustness in Machine LearningAdvanced Malware Detection TechniquesAnomaly Detection Techniques and Applications