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Publication
ICML 1989
Conference paper
DECLARATIVE BIAS FOR STRUCTURAL DOMAINS
Abstract
We present a formal solution to the problem of situation identification in learning of structural concepts. Structural concepts are characterized by the interrelationships and attributes of their parts, rather than by just their own direct attributes. Our solution extends the declarative approach to bias of (Russell and Grosof, 1987) by formalizing the beliefs about relevancy in a more complex form that expresses the preservation of properties under mappings, using second-order logic to express the existence of isomorphisms. Concept learning, including prediction, analogical inference and single-instance generalization, then emerges as deduction from such isomorphic determinations plus instance data.