论文标题

潜在的收益作为中心度度量

Potential gain as a centrality measure

论文作者

De Meo, Pasquale, Levene, Mark, Provetti, Alessandro

论文摘要

导航性是与人工或天然系统相关的图形的独特特征,其主要目标是信息或商品的运输。我们说,当代理能够通过本地路由决策有效地达到$ \ Mathcal {G} $中的任何目标节点时,图形$ \ MATHCAL {G} $是可导航的。在社交网络中,可通道可以转化为通过个人接触来接触个人的能力。图形导航性经过了良好的研究,但是一个基本的问题仍然是开放的:为什么有些人比其他人更有可能通过简短的,朋友的沟通链来联系?在本文中,我们通过提出一种称为“潜在增益的新型中心度度量”来回答以上问题,从非正式的意义上讲,该指标可以量化达到目标节点的轻松性。我们定义了潜在增益的两个变体,称为几何和指数势增益,并呈现快速算法来计算它们。几何和潜在增益是新型复合中心度指标的第一个实例,即集中度指标,将节点在$ \ Mathcal {g} $中的流行与与所有其他节点相似。如先前的研究所示,受欢迎程度和相似性是两个主要标准,这些标准调节了人类在Wikipedia等大型网络中寻求信息的方式。我们给出一个正式的证据,表明节点的潜在增益始终等于其学位中心性(捕获受欢迎程度)及其Katz中心性(捕获相似性)的产物。

Navigability is a distinctive features of graphs associated with artificial or natural systems whose primary goal is the transportation of information or goods. We say that a graph $\mathcal{G}$ is navigable when an agent is able to efficiently reach any target node in $\mathcal{G}$ by means of local routing decisions. In a social network navigability translates to the ability of reaching an individual through personal contacts. Graph navigability is well-studied, but a fundamental question is still open: why are some individuals more likely than others to be reached via short, friend-of-a-friend, communication chains? In this article we answer the question above by proposing a novel centrality metric called the potential gain, which, in an informal sense, quantifies the easiness at which a target node can be reached. We define two variants of the potential gain, called the geometric and the exponential potential gain, and present fast algorithms to compute them. The geometric and the potential gain are the first instances of a novel class of composite centrality metrics, i.e., centrality metrics which combine the popularity of a node in $\mathcal{G}$ with its similarity to all other nodes. As shown in previous studies, popularity and similarity are two main criteria which regulate the way humans seek for information in large networks such as Wikipedia. We give a formal proof that the potential gain of a node is always equivalent to the product of its degree centrality (which captures popularity) and its Katz centrality (which captures similarity).

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