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“Can you really trust that seed?”: Reducing the impact of seed noise in personalized PageRank

机译:“您真的可以相信种子吗?”:减少个性化PageRank中种子噪声的影响

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Network based recommendation systems leverage the topology of the underlying graph and the current user context to rank objects in the database. Random-walk based techniques, such as PageRank, encode the structure of the graph in the form of a transition matrix of a stochastic process from which the significances of the nodes in the graph are inferred. Personalized PageRank (PPR) techniques complement this with a seed node set which serves as the personalization context. In this paper, we note (and experimentally show) that PPR algorithms that do not differentiate among the seed nodes may not properly rank nodes in situations where the seed set is incomplete and/or noisy. To tackle this problem, we propose alternative robust personalized PageRank (RPR) strategies, which are insensitive to noise in the set of seed nodes and in which the rankings are not overly biased towards the seed nodes. In particular, we show that novel teleportation discounting and seed-set maximal PPR techniques help eliminate harmful bias of individual seed nodes and provide effective seed differentiation to lead to more accurate rankings.
机译:基于网络的推荐系统利用基础图的拓扑和当前用户上下文对数据库中的对象进行排名。基于随机游走的技术(例如PageRank)以随机过程的转移矩阵的形式对图形的结构进行编码,从中可以推断出图形中节点的重要性。个性化PageRank(PPR)技术对此进行了补充,该种子节点集用作个性化上下文。在本文中,我们注意到(并通过实验证明),在种子集不完整和/或嘈杂的情况下,无法在种子节点之间进行区分的PPR算法可能无法正确地对节点进行排名。为解决此问题,我们提出了其他健壮的个性化PageRank(RPR)策略,该策略对种子节点集中的噪声不敏感,并且排名不会过度偏向种子节点。特别是,我们显示出新颖的隐形传态折扣和种子集最大PPR技术有助于消除单个种子节点的有害偏见,并提供有效的种子分化,从而导致更准确的排名。

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