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A Deep Walk-Based Approach to Defend Profile Injection Attack in Recommendation System

机译:基于深度漫游的防御推荐系统中的配置文件注入攻击的方法

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In the open social networks, the analysis of user data after the injection attack has a great impact on the recommendation system. K-Nearest Neighbor-based collaborative filtering algorithms are very vulnerable to this attack. Another recommendation algorithm based on probabilistic latent semantic analysis has relatively accurate recommendation, but it is not very stable and robust against attacks on the overall user data of the recommendation system. Here is used to DeepWalk the user network processing, while taking advantage of the user profile feature time series to consider the user's behavior over time, the algorithm also analyzes the stability and robustness of DeepWalk and user profile. The results show that especially the DeepWalk-based approach can achieve comparable recommendation accuracy.
机译:在开放的社交网络中,注入攻击后的用户数据分析对推荐系统有很大的影响。基于K-Nearest Neighbor的协作过滤算法非常容易受到此攻击。另一个基于概率潜在语义分析的推荐算法具有相对准确的推荐,但是对于推荐系统的整体用户数据的攻击而言,它不是非常稳定和健壮。这里用于DeepWalk用户网络处理,同时利用用户配置文件特征时间序列来考虑用户随时间的行为,该算法还分析了DeepWalk和用户配置文件的稳定性和鲁棒性。结果表明,尤其是基于DeepWalk的方法可以达到可比的推荐准确性。

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