
LINQS
STATISTICAL RELATIONAL LEARNING GROUP @ UMD
Learning Probabilistic Models of Link Structure
Most real-world data is heterogeneous and richly interconnected. Examples include the Web,
hypertext, bibliometric data and social networks. In contrast, most statistical learning methods
work with "flat" data representations, forcing us to convert our data into a form that loses much of
the link structure. The recently introduced framework of probabilistic relational models (PRMs)
embraces the object-relational nature of structured data by capturing probabilistic interactions between
attributes of related entities. In this paper, we extend this framework by modeling interactions
between the attributes and the link structure itself. An advantage of our approach is a unified generative
model for both content and relational structure. We propose two mechanisms for representing
a probabilistic distribution over link structures: reference uncertainty and existence uncertainty.
We describe the appropriate conditions for using each model and present learning algorithms for
each. We present experimental results showing that the learned models can be used to predict link
structure and, moreover, the observed link structure can be used to provide better predictions for
the attributes in the model.
BibTex references
@Article{getoor:jmlr02,
author = "Getoor, Lise and Friedman, Nir and Koller, Daphne and Taskar, Benjamin",
title = "Learning Probabilistic Models of Link Structure",
journal = "Journal of Machine Learning Research",
volume = "3",
pages = "679- -707",
year = "2002",
}
![jmlr02.pdf [514Ko]](/basilic/web/Publications/images/pdf.png)

