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Algorithmic Learning for Steganography: Proper Learning of k-term DNF Formulas from Positive Samples

机译:隐写术的算法学习:正确学习k术语DNF公式的正样品

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Proper learning from positive samples is a basic ingredient for designing secure steganographic systems for unknown covertext channels. In addition, security requirements imply that the hypothesis should not contain false positives. We present such a learner for k-term DNF formulas for the uniform distribution and a generalization to q-bounded distributions. We briefly also describe how these results can be used to design a secure stegosystem.
机译:阳性样本的适当学习是用于设计用于未知隐蔽频道的安全隐写系统的基本成分。此外,安全要求意味着假设不应包含误报。我们为K型DNF公式提供了这样的学习者,用于均匀分布和Q界分布的概括。我们简要介绍了这些结果如何用于设计安全的标记系统。

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