LGAICVNov 25, 2023

Effective Backdoor Mitigation in Vision-Language Models Depends on the Pre-training Objective

NVIDIAUW
arXiv:2311.14948v43 citationsh-index: 22
Originality Incremental advance
AI Analysis

This highlights a critical vulnerability for ML practitioners using large-scale web-curated data, as backdoor mitigation may fail with advanced pre-training methods.

The study found that the effectiveness of CleanCLIP in removing backdoors from vision-language models depends on the pre-training objective, with stronger objectives correlating with harder-to-remove backdoors, making CleanCLIP ineffective in such cases.

Despite the advanced capabilities of contemporary machine learning (ML) models, they remain vulnerable to adversarial and backdoor attacks. This vulnerability is particularly concerning in real-world deployments, where compromised models may exhibit unpredictable behavior in critical scenarios. Such risks are heightened by the prevalent practice of collecting massive, internet-sourced datasets for training multimodal models, as these datasets may harbor backdoors. Various techniques have been proposed to mitigate the effects of backdooring in multimodal models, such as CleanCLIP, which is the current state-of-the-art approach. In this work, we demonstrate that the efficacy of CleanCLIP in mitigating backdoors is highly dependent on the particular objective used during model pre-training. We observe that stronger pre-training objectives that lead to higher zero-shot classification performance correlate with harder to remove backdoors behaviors. We show this by training multimodal models on two large datasets consisting of 3 million (CC3M) and 6 million (CC6M) datapoints, under various pre-training objectives, followed by poison removal using CleanCLIP. We find that CleanCLIP, even with extensive hyperparameter tuning, is ineffective in poison removal when stronger pre-training objectives are used. Our findings underscore critical considerations for ML practitioners who train models using large-scale web-curated data and are concerned about potential backdoor threats.

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