LGCRApr 15, 2025

How to Enhance Downstream Adversarial Robustness (almost) without Touching the Pre-Trained Foundation Model?

arXiv:2504.10850v11 citations
Originality Incremental advance
AI Analysis

This addresses the problem of computational inefficiency in adversarial training for downstream users of foundation models, though it is incremental as it builds on existing robustness inheritance concepts.

The paper tackles the challenge of improving adversarial robustness in downstream tasks without modifying pre-trained foundation models, by proposing a robust auto-encoder for data pre-processing that achieves enhanced robustness as demonstrated through extensive experiments.

With the rise of powerful foundation models, a pre-training-fine-tuning paradigm becomes increasingly popular these days: A foundation model is pre-trained using a huge amount of data from various sources, and then the downstream users only need to fine-tune and adapt it to specific downstream tasks. However, due to the high computation complexity of adversarial training, it is not feasible to fine-tune the foundation model to improve its robustness on the downstream task. Observing the above challenge, we want to improve the downstream robustness without updating/accessing the weights in the foundation model. Inspired from existing literature in robustness inheritance (Kim et al., 2020), through theoretical investigation, we identify a close relationship between robust contrastive learning with the adversarial robustness of supervised learning. To further validate and utilize this theoretical insight, we design a simple-yet-effective robust auto-encoder as a data pre-processing method before feeding the data into the foundation model. The proposed approach has zero access to the foundation model when training the robust auto-encoder. Extensive experiments demonstrate the effectiveness of the proposed method in improving the robustness of downstream tasks, verifying the connection between the feature robustness (implied by small adversarial contrastive loss) and the robustness of the downstream task.

Foundations

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