Journal of Computer and Communications

Volume 9, Issue 12 (December 2021)

ISSN Print: 2327-5219   ISSN Online: 2327-5227

Google-based Impact Factor: 1.12  Citations  

An Anti-Poisoning Attack Method for Distributed AI System

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DOI: 10.4236/jcc.2021.912007    191 Downloads   655 Views  

ABSTRACT

In distributed AI system, the models trained on data from potentially unreliable sources can be attacked by manipulating the training data distribution by inserting carefully crafted samples into the training set, which is known as Data Poisoning. Poisoning will to change the model behavior and reduce model performance. This paper proposes an algorithm that gives an improvement of both efficiency and security for data poisoning in a distributed AI system. The past methods of active defense often have a large number of invalid checks, which slows down the operation efficiency of the whole system. While passive defense also has problems of missing data and slow detection of error source. The proposed algorithm establishes the suspect hypothesis level to test and extend the verification of data packets and estimates the risk of terminal data. It can enhance the health degree of a distributed AI system by preventing the occurrence of poisoning attack and ensuring the efficiency and safety of the system operation.

Share and Cite:

Xin, X. , Bai, Y. , Wang, H. , Mou, Y. and Tan, J. (2021) An Anti-Poisoning Attack Method for Distributed AI System. Journal of Computer and Communications, 9, 99-105. doi: 10.4236/jcc.2021.912007.

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