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Classification encryption via compressed permuted measurement matrices

机译:通过压缩排列的测量矩阵进行分类加密

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In this paper we present an efficient encryption system based on Compressive Sensing for topic detection and classification in Twitter. The proposed method first employs Joint Complexity to perform topic detection. Then based on the spatial nature of the data, we apply the theory of Compressive Sensing to perform classification from a small number of random sample measurements. The breakthrough of the method is the encryption based on the permutation of measurements which are generated when solving the classification optimization problem. The experimental evaluation with real data from Twitter presents the robustness of the encryption accuracy, without using a specific cryptographic layer, while maintaining a low computational complexity.
机译:在本文中,我们提出了一种基于压缩感知的有效加密系统,用于Twitter中的主题检测和分类。所提出的方法首先利用联合复杂度来执行主题检测。然后,基于数据的空间性质,我们应用压缩感测理论从少量随机样本测量结果中进行分类。该方法的突破之处在于,基于解决分类优化问题时生成的测量值的排列进行加密。使用来自Twitter的真实数据进行的实验评估显示了加密准确性的稳健性,而无需使用特定的加密层,同时保持了较低的计算复杂性。

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