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More is Simpler: Effectively and Efficiently Assessing Node-Pair Similarities Based on Hyperlinks

机译:更简单:基于超链接有效而高效地评估节点对相似性

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Similarity assessment is one of the core tasks in hyperlink analysis. Recently, with the proliferation of applications, e.g., web search and collaborative filtering, SimRank has been a well-studied measure of similarity between two nodes in a graph. It recursively follows the philosophy that "two nodes are similar if they are referenced (have incoming edges) from similar nodes", which can be viewed as an aggregation of similarities based on incoming paths. Despite its popularity, SimRank has an undesirable property, i.e., "zero-similarity": It only accommodates paths with equal length from a common "center" node. Thus, a large portion of other paths are fully ignored. This paper attempts to remedy this issue. (1) We propose and rigorously justify SimRank~*, a revised version of SimRank, which resolves such counter-intuitive "zero-similarity" issues while inheriting merits of the basic SimRank philosophy. (2) We show that the series form of SimRank~* can be reduced to a fairly succinct and elegant closed form, which looks even simpler than SimRank, yet enriches semantics without suffering from increased computational cost. This leads to a fixed-point iterative paradigm of SimRank~* in O(Knm) time on a graph of n nodes and m edges for K iterations, which is comparable to SimRank. (3) To further optimize SimRank* computation, we leverage a novel clustering strategy via edge concentration. Due to its NP-hardness, we devise an efficient and effective heuristic to speed up SimRank~* computation to O(Knm) time, where m is generally much smaller than m. (4) Using real and synthetic data, we empirically verify the rich semantics of SimRank~*, and demonstrate its high computation efficiency.
机译:相似性评估是超链接分析的核心任务之一。近来,随着诸如网络搜索和协作过滤之类的应用的激增,SimRank已经成为研究图形中两个节点之间相似性的一种经过充分研究的度量。它递归地遵循这样的哲学:“如果两个节点从相似节点被引用(具有进入边缘),则它们是相似的”,这可以看作是基于传入路径的相似性的集合。尽管SimRank受欢迎,但它具有不希望的特性,即“零相似性”:它仅容纳从公共“中心”节点开始具有相等长度的路径。因此,其他路径的很大一部分将被完全忽略。本文试图解决此问题。 (1)我们提出并严格证明SimRank〜*是SimRank的修订版,它在继承了SimRank基本原理的优点的同时,解决了这种反直觉的“零相似”问题。 (2)我们证明了SimRank〜*的序列形式可以简化为简洁简洁的封闭形式,它看起来比SimRank更简单,但是在不增加计算成本的情况下丰富了语义。这导致在n个节点和m个边的图上进行O个(Knm)时间的SimRank〜*的定点迭代范式,进行K次迭代,这与SimRank相当。 (3)为了进一步优化SimRank *计算,我们通过边缘集中利用了一种新颖的聚类策略。由于其NP硬度,我们设计了一种有效的启发式方法来将SimRank〜*计算速度加快到O(Knm)时间,其中m通常小于m。 (4)利用实数和合成数据,通过经验验证了SimRank〜*的丰富语义,并证明了SimRank〜*的高计算效率。

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