Learning Statistical Models from Relational DataAAAI 2000 Workshop |
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| General
AAAI Workshop
Pointers
Contact Information
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The AAAI
2000 Workshop on Learning Statististical Models from Relational Data
was held on July 31, 2000 in Austin, Texas. The Workshop brought together
researchers from diverse research areas, including machine learning, inductive
logic programming, statistics, and databases. The workshop included nine
paper presentations and two invited talks. The workshop closed with a roundtable
discussion of potential application domains. Additional details on the
schedule
are given below. The collected papers from the workshop are available as
a AAAI
Press technical report.
The bulk of the research presented at the workshop shared a common motivation: to uncover patterns and make predictions from structured data. However, there are multiple paths toward the common goal of statistical relational learning (SRL). One path begins with machine learning and statistical methods for "flat" or attribute-value representations, and expands these approaches to incorporate relational structure. However, a key assumption of many existing learning techniques -- independent and identically distributed instances -- may no longer hold, so the naive approach of flattening structured data may introduce important statistical errors. A second path extends techniques for relational learning in nonprobabilistic domains, especially inductive logic programming, to incorporate stochastic models. This is an active research area and several new languages and learning algorithms have been proposed. There was general consensus that a longer workshop should be held in the near future, allowing more time for discussion and synthesis of the many different approaches and applications. Workshop Co-chairs
Workshop Committee
Schedule and Papers
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