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Analysis of Profile Injection Attacks against Recommendation Algorithms on Bipartite Networks

机译:二分网络上针对推荐算法的配置文件注入攻击分析

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Despite their great adoption in e-commerce sites, recommender systems are still vulnerable to unscrupulous producers who try to promote their products by shilling the systems. In the past decade, network based recommendation approaches have been demonstrated to be both more efficient and of lower computational complexity than collaborative filtering methods, however as far as we know, there is rare research on the robustness of network based recommendation approaches. In this paper, we conducted a serious of experiments to examine the robustness of five typical network based recommendation algorithms. The empirical results obtained from the movielens dataset show that all the two limited knowledge shilling attacks are successful against the network based algorithms, and the bandwagon attack affects very strongly against most network based recommendation algorithms, especially the algorithms considering the preferential diffusion at the last step. One way to relieve the attack impact is to assign the algorithm a heterogeneous initial resource configuration.
机译:尽管推荐系统在电子商务站点中得到了广泛采用,但仍然容易受到不道德的生产者的攻击,他们试图通过先令系统来推广其产品。在过去的十年中,基于网络的推荐方法已被证明比协作过滤方法更有效且计算复杂度更低,但是据我们所知,关于基于网络的推荐方法的鲁棒性的研究很少。在本文中,我们进行了认真的实验,以检验五种基于网络的推荐算法的鲁棒性。从movielens数据集获得的经验结果表明,这两种有限的知识先令攻击都成功地对抗了基于网络的算法,而bandwagon攻击对大多数基于网络的推荐算法(尤其是在最后一步考虑优先扩散的算法)的影响很大。减轻攻击影响的一种方法是为算法分配异构的初始资源配置。

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