LGNov 24, 2025

An Invariant Latent Space Perspective on Language Model Inversion

arXiv:2511.19569v1Has Code
Originality Incremental advance
AI Analysis

This addresses privacy and security risks for users and systems by improving prompt recovery from LLM outputs, though it is incremental as it builds on existing LMI methods.

The paper tackles the problem of language model inversion (LMI) as a threat to privacy and security by proposing the Invariant Latent Space Hypothesis and a method called Inv^2A, which outperforms baselines by an average of 4.77% BLEU score across 9 datasets while reducing reliance on large inverse corpora.

Language model inversion (LMI), i.e., recovering hidden prompts from outputs, emerges as a concrete threat to user privacy and system security. We recast LMI as reusing the LLM's own latent space and propose the Invariant Latent Space Hypothesis (ILSH): (1) diverse outputs from the same source prompt should preserve consistent semantics (source invariance), and (2) input<->output cyclic mappings should be self-consistent within a shared latent space (cyclic invariance). Accordingly, we present Inv^2A, which treats the LLM as an invariant decoder and learns only a lightweight inverse encoder that maps outputs to a denoised pseudo-representation. When multiple outputs are available, they are sparsely concatenated at the representation layer to increase information density. Training proceeds in two stages: contrastive alignment (source invariance) and supervised reinforcement (cyclic invariance). An optional training-free neighborhood search can refine local performance. Across 9 datasets covering user and system prompt scenarios, Inv^2A outperforms baselines by an average of 4.77% BLEU score while reducing dependence on large inverse corpora. Our analysis further shows that prevalent defenses provide limited protection, underscoring the need for stronger strategies. The source code and data involved in this paper can be found in https://github.com/yyy01/Invariant_Attacker.

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