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Data Reduction for Network Forensics Using Manifold Learning

机译:使用多方面学习的网络取证数据减少

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In network forensic system, there are huge amount of data should be processed, and the data contains redundant and noisy features causing slow training and testing process, high resource consumption as well as poor detection rate. In this paper, a schema is proposed to reduce the data of the forensics using manifold learning. Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for this task are based on the idea that the dimensionality of many data sets is only artificially high. In this paper, we reduce the forensic data with manifold learning, and test the result of the reduced data.
机译:在网络取证系统中,应处理大量数据,数据包含冗余和嘈杂的功能,导致训练缓慢和测试过程,高资源消耗以及差的检测率。在本文中,建议使用多方面学习减少取证的数据。歧管学习是一种最近的非线性维度减少的方法。此任务的算法基于许多数据集的维度仅为人工高的想法。在本文中,我们减少了具有歧管学习的法医数据,并测试减少数据的结果。

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