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Frustratingly Easy Edit-based Linguistic Steganography with a Masked Language Model

2021-04-20NAACL 2021Code Available1· sign in to hype

Honai Ueoka, Yugo Murawaki, Sadao Kurohashi

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Abstract

With advances in neural language models, the focus of linguistic steganography has shifted from edit-based approaches to generation-based ones. While the latter's payload capacity is impressive, generating genuine-looking texts remains challenging. In this paper, we revisit edit-based linguistic steganography, with the idea that a masked language model offers an off-the-shelf solution. The proposed method eliminates painstaking rule construction and has a high payload capacity for an edit-based model. It is also shown to be more secure against automatic detection than a generation-based method while offering better control of the security/payload capacity trade-off.

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