Title :
Inference of regular languages using model simplicity
Author :
Hingston, Philip
Abstract :
We describe an approach that is related to a number of existing algorithms for the inference of a regular language from a set of positive (and optionally also negative) examples. Variations on this approach provide a family of algorithms that attempt to minimise the complexity of a description of the example data in terms of a finite state automaton model. Experiments using a standard set of small problems show that this approach produces satisfactory results when positive examples only are given, and can be helpful when only a limited number of negative examples is available. The results also suggest that improved algorithms will be needed in order to tackle more challenging problems, such as data mining and exploratory sequential analysis applications
Keywords :
computational complexity; finite state machines; formal languages; type theory; Minimum Message Length principle; data mining; example data; exploratory sequential analysis applications; finite state automaton model; grammatical inference; model simplicity; regular language inference; Artificial intelligence; Automata; Convergence; Data mining; Heuristic algorithms; Inference algorithms; Pattern recognition; Sequential analysis;
Conference_Titel :
Computer Science Conference, 2001. ACSC 2001. Proceedings. 24th Australasian
Conference_Location :
Gold Coast, Qld.
Print_ISBN :
0-7695-0963-0
DOI :
10.1109/ACSC.2001.906625