
LINQS
STATISTICAL RELATIONAL LEARNING GROUP @ UMD
Relationship Identification for Social Network Discovery
AAAI '07: Proceedings of the 22nd National Conference on Artificial Intelligence - July 2007
In recent years, informal, online communication has transformed
the ways in which we connect and collaborate with friends and
colleagues. With millions of individuals communicating online
each day, we have a unique opportunity to observe the formation
and evolution of roles and relationships in networked groups and
organizations. Yet a number of challenges arise when attempting
to infer the underlying social network from data that is often
ambiguous, incomplete and context-dependent. In this paper, we
consider the problem of collaborative network discovery from
domains such as intelligence analysis and litigation support where
the analyst is attempting to construct a validated representation
of the social network. We specifically address the challenge of
relationship identification where the objective is to identify
relevant communications that substantiate a given social
relationship type. We propose a supervised ranking approach to
the problem and assess its performance on a manager-subordinate
relationship identification task using the Enron email corpus. By
exploiting message content, the ranker routinely cues the analyst
to relevant communications relationships and message traffic that
are indicative of the social relationship.
BibTex references
@InProceedings{diehl:aaai07,
author = "Diehl, Christopher and Namata, Galileo Mark and Getoor, Lise",
title = "Relationship Identification for Social Network Discovery",
booktitle = "AAAI '07: Proceedings of the 22nd National Conference on Artificial Intelligence",
month = "July",
year = "2007",
}
![diehl-aaai07.pdf [142Ko]](/basilic/web/Publications/images/pdf.png)

