A Local Search Algorithm for Grammatical Inference
نویسنده
چکیده
In this paper, a heuristic algorithm for the inference of an arbitrary context-free grammar is presented. The input data consist of a finite set of representative words chosen from a (possibly infinite) context-free language and of a finite set of counterexamples—words which do not belong to the language. The time complexity of the algorithm is polynomially bounded.The experiments havebeen performed for adozen or so languages investigated by other researchers and our results are reported.
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