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Learning Probabilistic Relational Models
Lise Getoor,
Nir Friedman,
Daphne Koller,
and Avi Pfeffer.
In Saso Dzeroski
and Nada Lavrac, editors, Relational Data Mining,
pages 307--335. Springer-Verlag, September 2001. More behind this link.
Abstract
Probabilistic relational models (PRMs) are a language for describing
statistical models over typed relational domains. A PRM models the
uncertainty over the attributes of objects in the domain and uncertainty over
the relations between the objects. The model specifies, for each attribute of
an object, its (probabilistic) dependence on other attributes of that object
and on attributes of related objects. The dependence model is defined at the
level of classes of objects. The class dependence model is instantiated for
any object in the class, as appropriate to the particular context of the
object (i.e., the relations between this objects and others). PRMs can also
represent uncertainty over the relational structure itself, e.g., by
specifying a (class-level) probability that two objects will be related to
each other. PRMs provide a foundation for dealing with the noise and
uncertainty encountered in most real-world domains. In this chapter, we show
that the compact and natural representation of PRMs allows them to be learned
directly from an existing relational database using well-founded statistical
techniques. We give an introduction to PRMs and an overview of methods for
learning them. We show that PRMs provide a new framework for relational data
mining, and offer new challenges for the endeavor of learning relational
models for real-world domains.
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