Majority illusion occurs in a social network when the majority of the network nodes belong to a certain type but each node's neighbours mostly belong to a different type, therefore creating the wrong perception, i.e., the illusion, that the majority type is different from the actual one. From a system engineering point of view, we want to devise algorithms to detect and, crucially, correct this undesirable phenomenon. In this paper we initiate the computational study of majority illusion in social networks, providing complexity results for its occurrence and avoidance. Namely, we show that identifying whether a network can be labelled such that majority illusion is present, as well as the problem of removing an illusion by adding or deleting edges of the network, are NP-complete problems.
翻译:当大多数网络节点属于某种类型,但每个节点的邻居大多属于不同类型时,社会网络中就会出现多数错觉,因此产生错误的印象,即错觉,即多数类型与实际不同。从系统工程的观点看,我们想设计算法来检测和从根本上纠正这种不受欢迎的现象。在本文中,我们开始计算社会网络中的多数错觉,为产生和避免这种错觉提供复杂的结果。也就是说,我们表明,确定一个网络是否可以被贴上多数错觉的标签,以及通过增加或删除网络的边缘来消除一种错觉的问题,都是NP问题。