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Self-organizing Flows in Social Networks

机译:社交网络中的自组织流

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Social networks offer users new means of accessing information, essentially relying on "social filtering", i.e. propagation and filtering of information by social contacts. The sheer amount of data flowing in these networks, combined with the limited budget of attention of each user, makes it difficult to ensure that social filtering brings relevant content to interested users. Our motivation in this paper is to measure to what extent self-organization of a social network results in efficient social filtering. To this end we introduce flow games, a simple abstraction that models network formation under selfish user dynamics, featuring user-specific interests and budget of attention. In the context of homogeneous user interests, we show that selfish dynamics converge to a stable network structure (namely a pure Nash equilibrium) with close-to-optimal information dissemination. We show that, in contrast, for the more realistic case of heterogeneous interests, selfish dynamics may lead to information dissemination that can be arbitrarily inefficient, as captured by an unbounded "price of anarchy". Nevertheless the situation differs when user interests exhibit a particular structure, captured by a metric space with low doubling dimension. In that case, natural autonomous dynamics converge to a stable configuration. Moreover, users obtain all the information of interest to them in the corresponding dissemination, provided their budget of attention is logarithmic in the size of their interest set.
机译:社交网络为用户提供了一种新的访问信息的方法,基本上依靠“社交过滤”,即通过社交联系人传播和过滤信息。这些网络中流动的大量数据,加上每个用户的关注预算有限,使得难以确保社交过滤将相关内容带给感兴趣的用户。本文的动机是衡量社交网络的自组织在多大程度上导致有效的社交过滤。为此,我们介绍了流程游戏,它是一种简单的抽象模型,可以在自私的用户动态下模拟网络的形成,具有用户特定的兴趣和关注预算。在同质用户兴趣的上下文中,我们表明自私的动态收敛到具有接近最佳信息传播的稳定网络结构(即纯Nash平衡)。相反,我们表明,对于更为现实的异质利益而言,自私的动态可能会导致信息传播,而这种传播可能会被无限的“无政府状态的价格”所俘获,其效率可能是任意低下的。但是,当用户兴趣表现出特定的结构时,情况会有所不同,该结构由具有低倍维度的度量空间捕获。在这种情况下,自然的自主动力学收敛到稳定的配置。此外,用户在相应的传播中可以获得他们感兴趣的所有信息,但前提是他们的关注预算在他们所关注的范围内是对数的。

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