When concerned about efficient grammatical inference two issues are relevant: the first one is to determine the quality of the result, and the second is to try to use polynomial time and space. A typical idea to deal with the first point is to say that an algorithm performs well if it identifies in the limit the correct language. The second point has led to debate about how to define polynomial time: the main definitions of polynomial inference have been proposed by Pitt and Angluin. We return in this paper to another definition proposed by Gold that requires a characteristic set of strings to exist for each grammar, and this set to be polynomial in the size of the grammar or automaton that is to be learnt, where the size of the sample is t...
International audienceThis paper formalises the idea of substitutability introduced by Zellig Harris...
AbstractWe consider the problem of learning a context-free grammar from its structural descriptions....
In this paper we study the learning of graph languages. We extend the well-known classes of k-testab...
AbstractWe study the order in Grammatical Inference algorithms, and its influence on the polynomial ...
[EN] We study the order in Grammatical Inference algorithms, and its influence on the polynomial (wi...
Abstract. This paper formalisms the idea of substitutability introduced by Zellig Harris in the 1950...
Learnability of languages is a challenging problem in the domain of formal language identification. ...
This paper introduces the notion of characteristic examples for languages and shows that the notion ...
This paper introduces the notion of characteristic examples for languages and shows that the notion ...
We apply a complexity theoretic notion of feasible learnability called polynomial learnability to ...
We present an efficient incremental algorithm for learning regular grammars from labeled examples an...
AbstractThe class of very simple grammars is known to be polynomial-time identifiable in the limit f...
AbstractWe show that simple deterministic languages are polynomial time learnable via membership que...
We apply a complexity theoretic notion of feasible learnability called polynomial learnability to ...
In this paper we study the learning of graph languages. We extend the well-known classes of k-testab...
International audienceThis paper formalises the idea of substitutability introduced by Zellig Harris...
AbstractWe consider the problem of learning a context-free grammar from its structural descriptions....
In this paper we study the learning of graph languages. We extend the well-known classes of k-testab...
AbstractWe study the order in Grammatical Inference algorithms, and its influence on the polynomial ...
[EN] We study the order in Grammatical Inference algorithms, and its influence on the polynomial (wi...
Abstract. This paper formalisms the idea of substitutability introduced by Zellig Harris in the 1950...
Learnability of languages is a challenging problem in the domain of formal language identification. ...
This paper introduces the notion of characteristic examples for languages and shows that the notion ...
This paper introduces the notion of characteristic examples for languages and shows that the notion ...
We apply a complexity theoretic notion of feasible learnability called polynomial learnability to ...
We present an efficient incremental algorithm for learning regular grammars from labeled examples an...
AbstractThe class of very simple grammars is known to be polynomial-time identifiable in the limit f...
AbstractWe show that simple deterministic languages are polynomial time learnable via membership que...
We apply a complexity theoretic notion of feasible learnability called polynomial learnability to ...
In this paper we study the learning of graph languages. We extend the well-known classes of k-testab...
International audienceThis paper formalises the idea of substitutability introduced by Zellig Harris...
AbstractWe consider the problem of learning a context-free grammar from its structural descriptions....
In this paper we study the learning of graph languages. We extend the well-known classes of k-testab...