LGAIOct 22, 2021

Anti-Backdoor Learning: Training Clean Models on Poisoned Data

arXiv:2110.11571v3454 citationsHas Code
Originality Highly original
AI Analysis

This addresses a major security threat in deep learning by enabling robust training against backdoor attacks, offering a preventive solution rather than detection or erasure, though it is incremental as it builds on existing defense concepts.

The paper tackles the problem of training clean deep neural networks on backdoor-poisoned data by introducing anti-backdoor learning, which uses a two-stage gradient ascent mechanism to isolate backdoor examples and break their correlation with the target class, achieving performance equivalent to training on purely clean data across multiple datasets and attacks.

Backdoor attack has emerged as a major security threat to deep neural networks (DNNs). While existing defense methods have demonstrated promising results on detecting or erasing backdoors, it is still not clear whether robust training methods can be devised to prevent the backdoor triggers being injected into the trained model in the first place. In this paper, we introduce the concept of \emph{anti-backdoor learning}, aiming to train \emph{clean} models given backdoor-poisoned data. We frame the overall learning process as a dual-task of learning the \emph{clean} and the \emph{backdoor} portions of data. From this view, we identify two inherent characteristics of backdoor attacks as their weaknesses: 1) the models learn backdoored data much faster than learning with clean data, and the stronger the attack the faster the model converges on backdoored data; 2) the backdoor task is tied to a specific class (the backdoor target class). Based on these two weaknesses, we propose a general learning scheme, Anti-Backdoor Learning (ABL), to automatically prevent backdoor attacks during training. ABL introduces a two-stage \emph{gradient ascent} mechanism for standard training to 1) help isolate backdoor examples at an early training stage, and 2) break the correlation between backdoor examples and the target class at a later training stage. Through extensive experiments on multiple benchmark datasets against 10 state-of-the-art attacks, we empirically show that ABL-trained models on backdoor-poisoned data achieve the same performance as they were trained on purely clean data. Code is available at \url{https://github.com/bboylyg/ABL}.

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