How to extract frequent links with frequent itemsets in social networks?

Erick Stattner, M. Collard
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引用次数: 2

Abstract

In the area of the link mining, frequent pattern discovery tasks generally consist in the search for subgraphs frequently found in a network or a set of networks. Very recently, new axes of this problem has been proposed through the search for frequent links. Unlike traditional approaches that focus solely on structural regularities, frequent link mining methods exploit both the network structure and the attributes of nodes for extracting regularities in the links existing between node groups that share common characteristics. However, extracting frequent links is still a particularly challenging and computationally intensive issue since it is much dependent on the number of links. In this study, we propose a solution that is able to reduce the computing time by reducing the search to only a subset of of nodes. Experiments were conducted to understand the effects of different thresholds of the subset size on the loss of patterns and the gain in terms of computation time. Our solution proves to be efficient for a rather wide range of thresholds.
如何在社交网络中提取带有频繁项集的频繁链接?
在链接挖掘领域,频繁的模式发现任务通常包括搜索在一个网络或一组网络中经常出现的子图。最近,通过搜索频繁链接,提出了这个问题的新轴。与仅关注结构规律的传统方法不同,频繁链接挖掘方法利用网络结构和节点属性,从具有共同特征的节点组之间存在的链接中提取规律。然而,提取频繁链接仍然是一个特别具有挑战性和计算密集型的问题,因为它非常依赖于链接的数量。在本研究中,我们提出了一种解决方案,通过将搜索减少到节点的子集来减少计算时间。通过实验了解了不同子集大小阈值对模式损失和计算时间增益的影响。我们的解决方案被证明对于相当大范围的阈值是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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