论文标题

使用Edge扩展减少网络中的访问差异

Reducing Access Disparities in Networks using Edge Augmentation

论文作者

Bashardoust, Ashkan, Friedler, Sorelle A., Scheidegger, Carlos E., Sullivan, Blair D., Venkatasubramanian, Suresh

论文摘要

在社交网络中,节点的位置是\ it {社会资本}的一种形式。设置更好的成员不仅受益于(更快)访问各种信息,而且对信息传播的潜在影响更大。结构偏见通常是由网络形成引起的,并且可能导致基于位置的信息访问差异。此外,诸如链接建议之类的过程可以通过依靠网络结构来增强连接性来加剧这种不平等。 我们认为,人们可以通过网络中信息流的视角理解和量化这一社会资本。我们考虑所有节点可能是不同信息来源的设置,并且节点的优势认为其能够访问网络上可用的所有信息。我们介绍了三个新的优势度量(广播,影响力和控制),它们使用\ it {access Signatures} - 代表节点共享信息能力的向量来量化网络中的位置。然后,我们考虑通过做出干预措施来增加最小优势节点的访问的问题。我们认为,Edge扩大最适合减轻网络结构中的偏差,并构成预算的干预问题,以最大程度地提高最低限度的成对访问。 最后,我们提出了启发式策略,以选择优势增强,并经验评估其在现实世界社交网络语料库上的表现。我们证明,少数干预措施显着提高了最小值节点的访问量度(比随机节点多5倍以上),并改善了最小影响。其他分析表明,这些干预措施还可以显着缩小节点之间的优势差距(超过\%82),并减少其访问签名之间的差异。

In social networks, a node's position is a form of \it{social capital}. Better-positioned members not only benefit from (faster) access to diverse information, but innately have more potential influence on information spread. Structural biases often arise from network formation, and can lead to significant disparities in information access based on position. Further, processes such as link recommendation can exacerbate this inequality by relying on network structure to augment connectivity. We argue that one can understand and quantify this social capital through the lens of information flow in the network. We consider the setting where all nodes may be sources of distinct information, and a node's (dis)advantage deems its ability to access all information available on the network. We introduce three new measures of advantage (broadcast, influence, and control), which are quantified in terms of position in the network using \it{access signatures} -- vectors that represent a node's ability to share information. We then consider the problem of improving equity by making interventions to increase the access of the least-advantaged nodes. We argue that edge augmentation is most appropriate for mitigating bias in the network structure, and frame a budgeted intervention problem for maximizing minimum pairwise access. Finally, we propose heuristic strategies for selecting edge augmentations and empirically evaluate their performance on a corpus of real-world social networks. We demonstrate that a small number of interventions significantly increase the broadcast measure of access for the least-advantaged nodes (over 5 times more than random), and also improve the minimum influence. Additional analysis shows that these interventions can also dramatically shrink the gap in advantage between nodes (over \%82) and reduce disparities between their access signatures.

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