AbstractWe consider the problem of learning deterministic even linear languages from positive examples. We show that, for any nonnegative integer k, the class of LR(k) even linear languages is not learnable from positive examples while there is a subclass called LRS(k), which is a natural subclass of LR(k) in the strong sense, learnable from positive examples. Our learning algorithm identifies this subclass in the limit with almost linear time in updating conjectures. As a corollary, in terms of even linear grammars, we have a learning algorithm for k-reversible languages that is more efficient than the one proposed by Angluin
AbstractThis paper studies a novel paradigm for learning formal languages from positive and negative...
Left deterministic linear languages are a subclass of context free languages that includes all regul...
AbstractA model for learning in the limit is defined where a (so-called iterative) learner gets all ...
AbstractWe consider the problem of learning deterministic even linear languages from positive exampl...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
AbstractIn this note, we consider the problem of learning approximately regular languages in the lim...
Abstract. Linearity and determinism seem to be two essential conditions for polynomial language lear...
Abstract. Left deteministic linear languages are a subclass of the context free languages that inclu...
AbstractIn this note, we consider the problem of learning approximately regular languages in the lim...
Learning from positive data constitutes an important topic in Grammatical Inference since it is beli...
AbstractRecently Clark and Eyraud (2007) [10] have shown that substitutable context-free languages, ...
Several notions of deterministic linear languages are considered and compared with respect to their ...
AbstractSemilinear sets play an important role in parallel computation models such as matrix grammar...
We propose new efficient learning algorithms for certain subclasses of regular and even linear langu...
A model for learning in the limit is defined where a (so-called iterative) learner gets all positive...
AbstractThis paper studies a novel paradigm for learning formal languages from positive and negative...
Left deterministic linear languages are a subclass of context free languages that includes all regul...
AbstractA model for learning in the limit is defined where a (so-called iterative) learner gets all ...
AbstractWe consider the problem of learning deterministic even linear languages from positive exampl...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
AbstractIn this note, we consider the problem of learning approximately regular languages in the lim...
Abstract. Linearity and determinism seem to be two essential conditions for polynomial language lear...
Abstract. Left deteministic linear languages are a subclass of the context free languages that inclu...
AbstractIn this note, we consider the problem of learning approximately regular languages in the lim...
Learning from positive data constitutes an important topic in Grammatical Inference since it is beli...
AbstractRecently Clark and Eyraud (2007) [10] have shown that substitutable context-free languages, ...
Several notions of deterministic linear languages are considered and compared with respect to their ...
AbstractSemilinear sets play an important role in parallel computation models such as matrix grammar...
We propose new efficient learning algorithms for certain subclasses of regular and even linear langu...
A model for learning in the limit is defined where a (so-called iterative) learner gets all positive...
AbstractThis paper studies a novel paradigm for learning formal languages from positive and negative...
Left deterministic linear languages are a subclass of context free languages that includes all regul...
AbstractA model for learning in the limit is defined where a (so-called iterative) learner gets all ...