We study the problem of score and rank monotonicity for spectral ranking methods, such as eigenvector centrality and PageRank, in the case of undirected networks. Score monotonicity means that adding an edge increases the score at both ends of the edge. Rank monotonicity means that adding an edge improves the relative position of both ends of the edge with respect to the remaining nodes. It is known that common spectral rankings are both score and rank monotone on directed, strongly connected graphs. We show that, surprisingly, the situation is very different for undirected graphs, and in particular that PageRank is neither score nor rank monotone.
翻译:在非定向网络中,我们研究了光谱排序方法的评分和排位单一性问题,如光谱分中央和PageRank。计分单性意味着加分会增加边缘两端的得分。一阶性意味着加分会改善边缘两端相对于其余节点的相对位置。众所周知,普通光谱排位既包括分数,也包括直线、紧密相连的图形单调。我们发现,令人惊讶的是,非定向图形的情况非常不同,特别是PageRank既不是分数,也不是单调的。