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Main Authors: Li, Xuan, Yin, Zhe, Gu, Xiaodong, Shen, Beijun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.01273
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author Li, Xuan
Yin, Zhe
Gu, Xiaodong
Shen, Beijun
author_facet Li, Xuan
Yin, Zhe
Gu, Xiaodong
Shen, Beijun
contents With the widespread use of LLMs, preserving privacy in user prompts has become crucial, as prompts risk exposing privacy and sensitive data to the cloud LLMs. Traditional techniques like homomorphic encryption, secure multi-party computation, and federated learning face challenges due to heavy computational costs and user participation requirements, limiting their applicability in LLM scenarios. In this paper, we propose PromptObfus, a novel method for desensitizing LLM prompts. The core idea of PromptObfus is "anti-adversarial" learning, which perturbs privacy words in the prompt to obscure sensitive information while retaining the stability of model predictions. Specifically, PromptObfus frames prompt desensitization as a masked language modeling task, replacing privacy-sensitive terms with a [MASK] token. A desensitization model is trained to generate candidate replacements for each masked position. These candidates are subsequently selected based on gradient feedback from a surrogate model, ensuring minimal disruption to the task output. We demonstrate the effectiveness of our approach on three NLP tasks. Results show that PromptObfus effectively prevents privacy inference from remote LLMs while preserving task performance.
format Preprint
id arxiv_https___arxiv_org_abs_2505_01273
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publishDate 2025
record_format arxiv
spellingShingle Anti-adversarial Learning: Desensitizing Prompts for Large Language Models
Li, Xuan
Yin, Zhe
Gu, Xiaodong
Shen, Beijun
Computation and Language
Artificial Intelligence
With the widespread use of LLMs, preserving privacy in user prompts has become crucial, as prompts risk exposing privacy and sensitive data to the cloud LLMs. Traditional techniques like homomorphic encryption, secure multi-party computation, and federated learning face challenges due to heavy computational costs and user participation requirements, limiting their applicability in LLM scenarios. In this paper, we propose PromptObfus, a novel method for desensitizing LLM prompts. The core idea of PromptObfus is "anti-adversarial" learning, which perturbs privacy words in the prompt to obscure sensitive information while retaining the stability of model predictions. Specifically, PromptObfus frames prompt desensitization as a masked language modeling task, replacing privacy-sensitive terms with a [MASK] token. A desensitization model is trained to generate candidate replacements for each masked position. These candidates are subsequently selected based on gradient feedback from a surrogate model, ensuring minimal disruption to the task output. We demonstrate the effectiveness of our approach on three NLP tasks. Results show that PromptObfus effectively prevents privacy inference from remote LLMs while preserving task performance.
title Anti-adversarial Learning: Desensitizing Prompts for Large Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2505.01273