We study the problem of generalizing from a finite sample to a language taken from a predefined language class. The two language classes we consider are subsets of the regular languages and have significance in the specification of XML documents (the classes corresponding to so called chain regular expressions, Chares, and to single occurrence regular expressions, Sores). The previous literature gave a number of algorithms for generalizing to Sores providing a trade off between quality of the solution and speed. Furthermore, a fast but nonoptimal algorithm for generalizing to Chares is known. For each of the two language classes we give an efficient algorithm returning a minimal generalization from the given finite sample to an element of the fixed language class; such generalizations are called descriptive. In this sense, both our algorithms are optimal. Copyright 2013 ACM.
History
School
Science
Department
Computer Science
Published in
ACM International Conference Proceeding Series
Pages
45 - 56
Citation
FREYDENBERGER, D.D. and KÖTZING, T., 2013. Fast learning of restricted regular expressions and DTDs. ACM International Conference Proceeding Series, pp.45-56
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