Papers
arxiv:2602.07090

Concept-Aware Privacy Mechanisms for Defending Embedding Inversion Attacks

Published on Feb 6
· Submitted by
Yu-Che Tsai
on Feb 10
Authors:
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Abstract

SPARSE is a user-centric framework that protects text embeddings from privacy leaks by selectively perturbing sensitive dimensions using differentiable masking and Mahalanobis noise calibration.

AI-generated summary

Text embeddings enable numerous NLP applications but face severe privacy risks from embedding inversion attacks, which can expose sensitive attributes or reconstruct raw text. Existing differential privacy defenses assume uniform sensitivity across embedding dimensions, leading to excessive noise and degraded utility. We propose SPARSE, a user-centric framework for concept-specific privacy protection in text embeddings. SPARSE combines (1) differentiable mask learning to identify privacy-sensitive dimensions for user-defined concepts, and (2) the Mahalanobis mechanism that applies elliptical noise calibrated by dimension sensitivity. Unlike traditional spherical noise injection, SPARSE selectively perturbs privacy-sensitive dimensions while preserving non-sensitive semantics. Evaluated across six datasets with three embedding models and attack scenarios, SPARSE consistently reduces privacy leakage while achieving superior downstream performance compared to state-of-the-art DP methods.

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Paper submitter

This work proposes a concept-aware privacy mechanism (SPARSE) to defend against embedding inversion attacks, selectively perturbing concept-sensitive dimensions while preserving downstream utility.

Relevant to: embedding privacy, inversion attacks, representation learning, security & AI.

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