SEAINov 19, 2025

Effective Code Membership Inference for Code Completion Models via Adversarial Prompts

arXiv:2511.15107v11 citationsASE
Originality Incremental advance
AI Analysis

This addresses privacy risks for users of code completion models, though it is an incremental improvement over existing methods.

The paper tackles the problem of membership inference attacks on code completion models by proposing AdvPrompt-MIA, which uses adversarial prompts to capture memorization patterns, achieving up to 102% AUC gains over baselines on models like Code Llama 7B.

Membership inference attacks (MIAs) on code completion models offer an effective way to assess privacy risks by inferring whether a given code snippet was part of the training data. Existing black- and gray-box MIAs rely on expensive surrogate models or manually crafted heuristic rules, which limit their ability to capture the nuanced memorization patterns exhibited by over-parameterized code language models. To address these challenges, we propose AdvPrompt-MIA, a method specifically designed for code completion models, combining code-specific adversarial perturbations with deep learning. The core novelty of our method lies in designing a series of adversarial prompts that induce variations in the victim code model's output. By comparing these outputs with the ground-truth completion, we construct feature vectors to train a classifier that automatically distinguishes member from non-member samples. This design allows our method to capture richer memorization patterns and accurately infer training set membership. We conduct comprehensive evaluations on widely adopted models, such as Code Llama 7B, over the APPS and HumanEval benchmarks. The results show that our approach consistently outperforms state-of-the-art baselines, with AUC gains of up to 102%. In addition, our method exhibits strong transferability across different models and datasets, underscoring its practical utility and generalizability.

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