In this paper, we investigate a graph-theoretical model of social networks. The dot product model assumes that two individuals are connected in the social network if their attributes or opinions are similar. In the model, a d -dimensional vector View the MathML source represents the extent to which individual v has each of a set of d attributes or opinions. Then two individuals u and v are assumed to be friends, that is, they are connected in the graph model, if and only if View the MathML source, for some fixed, positive threshold t. The resulting graph is called a d-dot product graph.ududWe consider diversity and clustering in social networks by using a d-dot product graph model for the network. Diversity is considered through the size of the largest independent set of the graph, and clustering through the size of the largest clique. We present both positive and negative results on the potential of this model. We obtain a tight result for the diversity problem, namely that it is polynomial-time solvable for d = 2, but NP-hard for d ≥ 3. We show that the clustering problem is polynomial-time solvable for d = 2. To our knowledge, these results are also the first on the computational complexity of combinatorial optimization problems on dot product graphs. We also give new insights into the structure of dot product graphs.ududWe also consider the situation when two individuals u and v are connected if and only if their preferences are not antithetical, that is, if and only if View the MathML source, and the situation when two individuals u and v are connected if and only if their preferences are neither antithetical nor “orthogonal”, that is, if and only if View the MathML source. For these two cases we prove that the diversity problem is polynomial-time solvable for any fixed d and that the clustering problem is polynomial-time solvable for d ≤ 3.
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机译:在本文中,我们研究了社交网络的图论模型。点积模型假设两个人的属性或观点相似,则他们在社交网络中相互连接。在模型中,d维向量表示个体v具有d个属性或观点集的程度。然后假定两个个人u和v是朋友,也就是说,当且仅当对于某个固定的正阈值t而言,他们在图模型中相互连接。结果图称为d点产品图。 ud ud我们通过使用网络的d点产品图模型来考虑社交网络中的多样性和聚类。通过图的最大独立集的大小来考虑多样性,并通过最大派系的大小来聚类。我们对这种模型的潜力提出了正面和负面的结果。对于分集问题,我们得到了严格的结果,即对于d = 2,它是多项式时间可解的,但是对于d≥3,它是NP-hard的。我们证明,对于d = 2,聚类问题是多项式时间的。众所周知,这些结果也是点积图上组合优化问题的计算复杂度的第一个结果。我们还对点积图的结构提供了新的见解。 ud ud我们还考虑了两个个体u和v连接的情况,当且仅当他们的偏好不是相对的,即且仅当,以及当且仅当两个人u和v的偏好既不是对立的也不是“正交的”(即且仅当)时,这种情况。对于这两种情况,我们证明对于任何固定的d,分集问题都是多项式时间可解的,对于d≤3,聚类问题是多项式时间可解的。
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