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On consistent vertex nomination schemes

15 November 2017
V. Lyzinski
Keith D. Levin
Carey E. Priebe
ArXiv (abs)PDFHTML
Abstract

Given a vertex of interest in a network G1G_1G1​, the vertex nomination problem seeks to find the corresponding vertex of interest (if it exists) in a second network G2G_2G2​. A vertex nomination scheme produces a list of the vertices in G2G_2G2​, ranked according to how likely they are judged to be the corresponding vertex of interest in G2G_2G2​. The vertex nomination problem and related information retrieval tasks have attracted much attention in the machine learning literature, with numerous applications to social and biological networks. However, the current framework has often been confined to a comparatively small class of network models, and the concept of statistically consistent vertex nomination schemes has been only shallowly explored. In this paper, we extend the vertex nomination problem to a very general statistical model of graphs. Further, drawing inspiration from the long-established classification framework in the pattern recognition literature, we provide definitions for the key notions of Bayes optimality and consistency in our extended vertex nomination framework, including a derivation of the Bayes optimal vertex nomination scheme. In addition, we prove that no universally consistent vertex nomination schemes exist. Illustrative examples are provided throughout.

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