Canonical Horn representations and query learning

Other authors

Universitat Politècnica de Catalunya. Departament de Llenguatges i Sistemes Informàtics

Universitat Politècnica de Catalunya. LARCA - Laboratori d'Algorísmia Relacional, Complexitat i Aprenentatge

Publication date

2009-05

Abstract

We describe an alternative construction of an existing canonical representation for definite Horn theories, the emph{Guigues-Duquenne} basis (or GD basis), which minimizes a natural notion of implicational size. We extend the canonical representation to general Horn, by providing a reduction from definite to general Horn CNF. We show how this representation relates to two topics in query learning theory: first, we show that a well-known algorithm by Angluin, Frazier and Pitt that learns Horn CNF always outputs the GD basis independently of the counterexamples it receives; second, we build strong polynomial certificates for Horn CNF directly from the GD basis.


Postprint (published version)

Document Type

External research report

Language

English

Related items

LSI-09-18-R

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Rights

Open Access

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E-prints [72987]