|国家预印本平台
首页|Fragments to Facts: Partial-Information Fragment Inference from LLMs

Fragments to Facts: Partial-Information Fragment Inference from LLMs

Fragments to Facts: Partial-Information Fragment Inference from LLMs

来源:Arxiv_logoArxiv
英文摘要

Large language models (LLMs) can leak sensitive training data through memorization and membership inference attacks. Prior work has primarily focused on strong adversarial assumptions, including attacker access to entire samples or long, ordered prefixes, leaving open the question of how vulnerable LLMs are when adversaries have only partial, unordered sample information. For example, if an attacker knows a patient has "hypertension," under what conditions can they query a model fine-tuned on patient data to learn the patient also has "osteoarthritis?" In this paper, we introduce a more general threat model under this weaker assumption and show that fine-tuned LLMs are susceptible to these fragment-specific extraction attacks. To systematically investigate these attacks, we propose two data-blind methods: (1) a likelihood ratio attack inspired by methods from membership inference, and (2) a novel approach, PRISM, which regularizes the ratio by leveraging an external prior. Using examples from both medical and legal settings, we show that both methods are competitive with a data-aware baseline classifier that assumes access to labeled in-distribution data, underscoring their robustness.

Lucas Rosenblatt、Bin Han、Robert Wolfe、Bill Howe

计算技术、计算机技术法律

Lucas Rosenblatt,Bin Han,Robert Wolfe,Bill Howe.Fragments to Facts: Partial-Information Fragment Inference from LLMs[EB/OL].(2025-05-19)[2025-06-29].https://arxiv.org/abs/2505.13819.点此复制

评论