Backdoors in Neural Models of Source Code
Ramakrishnan, Goutham, Albarghouthi, Aws
Deep neural networks are vulnerable to a range of adversaries. A particularly pernicious class of vulnerabilities are backdoors, where model predictions diverge in the presence of subtle triggers in inputs. An attacker can implant a backdoor by poisoning the training data to yield a desired target prediction on triggered inputs. We study backdoors in the context of deep-learning for source code.
Jun-11-2020
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