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Beyond rankings: comparing directed acyclic graphs

机译:超越排名:比较有向无环图

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摘要

Defining appropriate distance measures among rankings is a classic area of study which has led to many useful applications. In this paper, we propose a more general abstraction of preference data, namely directed acyclic graphs (DAGs), and introduce a measure for comparing DAGs, given that a vertex correspondence between the DAGs is known. We study the properties of this measure and use it to aggregate and cluster a set of DAGs. We show that these problems are -hard and present efficient methods to obtain solutions with approximation guarantees. In addition to preference data, these methods turn out to have other interesting applications, such as the analysis of a collection of information cascades in a network. We test the methods on synthetic and real-world datasets, showing that the methods can be used to, e.g., find a set of influential individuals related to a set of topics in a network or to discover meaningful and occasionally surprising clustering structure.
机译:在排名中定义合适的距离度量是一个经典的研究领域,已导致许多有用的应用程序。在本文中,我们提出了一种更通用的偏好数据抽象,即有向无环图(DAG),并提出了一种比较DAG的方法,前提是已知DAG之间的顶点对应关系。我们研究了此度量的属性,并将其用于聚合和聚类一组DAG。我们证明这些问题是困难的,并给出了获得具有近似保证的解的有效方法。除了首选项数据外,这些方法还具有其他有趣的应用程序,例如分析网络中信息级联的集合。我们在合成数据集和现实世界数据集上测试了这些方法,表明该方法可用于例如查找与网络中的一组主题相关的有影响力的个人或发现有意义且有时令人惊讶的聚类结构。

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