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Text Revealer: Private Text Reconstruction via Model Inversion Attacks against Transformers

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arxiv 2209.10505 v1 pith:FSJE46FE submitted 2022-09-21 cs.CL

Text Revealer: Private Text Reconstruction via Model Inversion Attacks against Transformers

classification cs.CL
keywords textmodelprivateattackstargettextsapplicationsclassification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Text classification has become widely used in various natural language processing applications like sentiment analysis. Current applications often use large transformer-based language models to classify input texts. However, there is a lack of systematic study on how much private information can be inverted when publishing models. In this paper, we formulate \emph{Text Revealer} -- the first model inversion attack for text reconstruction against text classification with transformers. Our attacks faithfully reconstruct private texts included in training data with access to the target model. We leverage an external dataset and GPT-2 to generate the target domain-like fluent text, and then perturb its hidden state optimally with the feedback from the target model. Our extensive experiments demonstrate that our attacks are effective for datasets with different text lengths and can reconstruct private texts with accuracy.

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Cited by 2 Pith papers

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    Proposes MC-GRA attack and MC-GPB defense for graph reconstruction from GNNs via Markov chain approximation of topology-dependent representations, showing improved attack fidelity and reduced leakage with minor accuracy cost.