Litcius/Paper detail

Text Embeddings Reveal (Almost) As Much As Text

John X. Morris, Volodymyr Kuleshov, Vitaly Shmatikov, Alexander M. Rush

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Abstract

How much private information do text embeddings reveal about the original text? We investigate the problem of embedding inversion, reconstructing the full text represented in dense text embeddings. We frame the problem as controlled generation: generating text that, when reembedded, is close to a fixed point in latent space. We find that although a naive model conditioned on the embedding performs poorly, a multi-step method that iteratively corrects and re-embeds text is able to recover 92% of 32-token text inputs exactly. We train our model to decode text embeddings from two state-of-the-art embedding models, and also show that our model can recover important personal information (full names) from a dataset of clinical notes.

Topics & Concepts

EmbeddingComputer scienceSecurity tokenPoint (geometry)Frame (networking)Artificial intelligenceInversion (geology)Space (punctuation)Theoretical computer scienceNatural language processingMathematicsPaleontologyGeometryComputer securityBiologyTelecommunicationsStructural basinOperating systemTopic ModelingPrivacy-Preserving Technologies in DataMachine Learning in Healthcare