Title of article :
Citation-based bootstrapping for large-scale author disambiguation
Author/Authors :
Michael Levin1، نويسنده , ,
Stefan Krawczyk1، نويسنده , ,
Steven Bethard2، نويسنده , ,
Dan Jurafsky3، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2012
Abstract :
We present a new, two-stage, self-supervised algorithm for author disambiguation in large bibliographic databases. In the first “bootstrap” stage, a collection of high-precision features is used to bootstrap a training set with positive and negative examples of coreferring authors. A supervised feature-based classifier is then trained on the bootstrap clusters and used to cluster the authors in a larger unlabeled dataset. Our self-supervised approach shares the advantages of unsupervised approaches (no need for expensive hand labels) as well as supervised approaches (a rich set of features that can be discriminatively trained). The algorithm disambiguates 54,000,000 author instances in Thomson Reutersʹ Web of Knowledge with B3 F1 of.807. We analyze parameters and features, particularly those from citation networks, which have not been deeply investigated in author disambiguation. The most important citation feature is self-citation, which can be approximated without expensive extraction of the full network. For the supervised stage, the minor improvement due to other citation features (increasing F1 from.748 to.767) suggests they may not be worth the trouble of extracting from databases that donʹt already have them. A lean feature set without expensive abstract and title features performs 130 times faster with about equal F1.
Keywords :
automatic extracting , machine aided indexing , disambiguation
Journal title :
Journal of the American Society for Information Science and Technology
Journal title :
Journal of the American Society for Information Science and Technology