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Zero-shot Generative Linguistic Steganography

2024-03-16Code Available0· sign in to hype

Ke Lin, Yiyang Luo, Zijian Zhang, Ping Luo

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Abstract

Generative linguistic steganography attempts to hide secret messages into covertext. Previous studies have generally focused on the statistical differences between the covertext and stegotext, however, ill-formed stegotext can readily be identified by humans. In this paper, we propose a novel zero-shot approach based on in-context learning for linguistic steganography to achieve better perceptual and statistical imperceptibility. We also design several new metrics and reproducible language evaluations to measure the imperceptibility of the stegotext. Our experimental results indicate that our method produces 1.926 more innocent and intelligible stegotext than any other method.

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