Regular inference as vertex coloring

Authors
Publication date 2012
Host editors
  • N.H. Bshouty
  • G. Stolz
  • N. Vayatis
  • T. Zeugmann
Book title Algorithmic Learning Theory
Book subtitle 23rd International Conference, ALT 2012, Lyon, France, October 29-31 2012: proceedings
ISBN
  • 9783642341052
ISBN (electronic)
  • 9783642341069
Series Lecture Notes in Computer Science
Event Algorithmic learning theory: 23rd International Conference, ALT 2012
Pages (from-to) 81-95
Publisher Heidelberg: Springer
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
This paper is concerned with the problem of supervised learning of deterministic finite state automata, in the technical sense of identification in the limit from complete data, by finding a minimal DFA consistent with the data (regular inference).
We solve this problem by translating it in its entirety to a vertex coloring problem. Essentially, such a problem consists of two types of constraints that restrict the hypothesis space: inequality and equality constraints.
Inequality constraints translate to the vertex coloring problem in a very natural way. Equality constraints however greatly complicate the translation to vertex coloring. In previous coloring-based translations, these were therefore encoded either dynamically by modifying the vertex coloring instance on-the-fly, or by encoding them as satisfiability problems. We provide the first translation that encodes both types of constraints together in a pure vertex coloring instance. This offers many opportunities for applying insights from combinatorial optimization and graph theory to regular inference. We immediately obtain new complexity bounds, as well as a family of new learning algorithms which can be used to obtain both exact hypotheses, as well as fast approximations.
Document type Conference contribution
Language English
Published at https://doi.org/10.1007/978-3-642-34106-9_10
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