Learning probabilistic relational models

TitleLearning probabilistic relational models
Publication TypeJournal Articles
Year of Publication2000
AuthorsGetoor L
JournalAbstraction, Reformulation, and Approximation
Pagination322 - 323
Date Published2000///
Abstract

My work is on learning Probabilistic Relational Models (PRMs) from structured data (e.g., data in a relational database, an object-oriented database or a frame-based system). This work has as a starting point the framework of Probabilistic Relational Models, introduced in [5, 7]. We adapt and extend the machinery that has been developed over the years for learning Bayesian networks from data [1, 4, 6] to the task of learning PRMs from structured data. At the heart of this work is a search algorithm that explores the space of legal models using search operators that abstract or refine the model.

DOI10.1007/3-540-44914-0_25