Abstract

With the rapid development of the internet and social media, linguistic steganography can be easily abused in social networks to make considerable damage to varied aspects like personal privacy, network virus and national defense. Currently, considerable linguistic steganalysis methods are proposed to detect harmful steganographic carriers. However, almost all the existing methods fail in real social networks, since they are only devoted to the linguistic features that are extreme insufficient owing to the extreme sparsity and extreme fragmentation challenges of real social networks. In this paper, we attempt to fill the long-standing gap that the datasets and effective methods are absent for hunting steganographic texts in social network scenarios. Concretely, we construct a dataset called Stego-Sandbox to simulate the real social network scenarios, which contains texts and their relation. And we propose an effective linguistic steganalysis framework integrating linguistic features contained in texts and context features represented by these connections. Extensive experimental results demonstrate owing to the captured context features, our proposed framework can effectively compensate for shortcomings of these existing methods and tremendously improve their detection ability in real social network scenarios.

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