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Network Traffic Prediction Models for Near- and Long-Term Predictions

机译:用于近期和长期预测的网络流量预测模型

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The large quantity of data flowing through network equipment demands that effective and efficient models be built to identify whether sessions are healthy or malicious. These models can be complex to build, and may rely on manually-labeled data. As a result, it is desirable to update or rebuild these models as rarely as possible without impairing classification performance. In this work, we consider the Kyoto dataset, training models on a single day's worth of data and testing these models under two circumstances: using 12 datasets gathered between six and twelve months after the training date, and using 9 datasets gathered between 18 and 19 months after the training date. In all cases, we apply three feature rankers (in addition to no feature ranking) and consider four classification models. We find that the results for the "near-term" 12 datasets are similar to those from the "long-term" 9 datasets, demonstrating that once a model has been built, it can potentially be used for over a year afterwards.
机译:流经网络设备的大量数据要求建立有效且高效的模型来识别会话是健康的还是恶意的。这些模型的构建可能很复杂,并且可能依赖于手动标记的数据。结果,期望在不损害分类性能的情况下尽可能少地更新或重建这些模型。在这项工作中,我们考虑了京都数据集,在一天的数据量上训练模型,并在两种情况下测试这些模型:使用训练日期后六个月至十二个月之间收集的12个数据集,以及使用18到19之间收集的9个数据集培训日期后的几个月。在所有情况下,我们都应用三个特征等级(除了没有特征等级外),并考虑四个分类模型。我们发现,“近期” 12个数据集的结果与“长期” 9个数据集的结果相似,这表明一旦建立了模型,该模型便有可能在一年后使用。

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