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Detecting group shilling attacks in recommender systems based on maximum dense subtensor mining

机译:基于最大密集的细节挖掘的推荐系统检测组先令攻击

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Existing group shilling attack detection methods mainly depend on human feature engineering to extract group attack behavior features, which requires a high knowledge cost. To address this problem, we propose a group shilling attack detection method based on maximum density subtensor mining. First, the rating time series of each item is divided into time windows and the item tensor groups are generated by establishing the user-rating-time window data models of three-dimensional tensor. Second, the M-Zoom model is applied to mine the maximum dense subtensor of each item, and the subtensor groups with high consistency of behaviors are selected as candidate groups. Finally, a dual-input convolutional neural network model is designed to automatically extract features for the classification of real users and group attack users. The experimental results on the Amazon and Netflix datasets show the effectiveness of the proposed method.
机译:现有组先令攻击检测方法主要取决于人体特征工程,提取组攻击行为特征,这需要高知识成本。 为了解决这个问题,我们提出了一种基于最大密度较小挖掘的先令先令攻击检测方法。 首先,通过建立三维张量的用户评级时间窗口数据模型,将每个项目的评级时间序列分为时间窗口,并且通过建立三维张量的用户额定时间窗口数据模型来生成项目张量组。 其次,将M-ZOOM模型应用于挖掘每个项目的最大密集的子传感器,并且选择具有高一致性的副传感组作为候选组。 最后,双输入卷积神经网络模型旨在自动提取真实用户和组攻击用户分类的功能。 亚马逊和Netflix数据集上的实验结果表明了该方法的有效性。

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