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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:从正样本中正确学习k项DNF公式

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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:从阳性样本中正确学习是为未知covertext通道设计安全隐写系统的基本要素。另外,安全性要求暗示该假设不应包含误报。我们为k项DNF公式的均匀分布和q界分布的泛化提供了这样的学习器。我们还将简要描述如何将这些结果用于设计安全的隐身系统。

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