Publications

Collective entity resolution in familial networks

Abstract

Entity resolution in settings with rich relational structure often introduces complex dependencies between co-references. Exploiting these dependencies is challenging - it requires seamlessly combining statistical, relational, and logical dependencies. One task of particular interest is entity resolution in familial networks. In this setting, multiple partial representations of a family tree are provided, from the perspective of different family members, and the challenge is to reconstruct a family tree from these multiple, noisy, partial views. This reconstruction is crucial for applications such as understanding genetic inheritance, tracking disease contagion, and performing census surveys. Here, we design a model that incorporates statistical signals, such as name similarity, relational information, such as sibling overlap, and logical constraints, such as transitivity and bijective matching, in a collective model. We show how to …

Date
2017
Authors
Pigi Kouki, Jay Pujara, Christopher Marcum, Laura Koehly, Lise Getoor
Conference
2017 IEEE International Conference on Data Mining (ICDM)
Pages
227-236
Publisher
IEEE