Abstract. In probabilistic grammatical inference, a usual goal is to infer a good approximation of an unknown distribution P called a stochastic language. The estimate of P stands in some class of probabilistic models such as probabilistic automata (PA). In this paper, we focus on probabilistic models based on multiplicity automata (MA). The stochastic languages generated by MA are called rational stochastic languages; they strictly include stochastic languages generated by PA; they also admit a very concise canonical representation. Despite the fact that this class is not recursively enumerable, it is efficiently identifiable in the limit by using the algorithm DEES, introduced by the authors in a previous paper. However, the identificatio...
A mathematical formulation of probabilistic grammars, as well as the random languages generated by p...
Probabilistic ω-automata are variants of nondeterministic automata over infinite words where all cho...
AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalisti...
International audienceIn probabilistic grammatical inference, a usual goal is to infer a good approx...
35 pagesThe goal of the present paper is to provide a systematic and comprehensive study of rational...
International audienceWe consider the problem of learning stochastic tree languages from a sample of...
We introduce a new class of probabilistic automata: Probabilistic Residual Finite State Automata. W...
We focus on the classical problem in grammatical inference of learning stochas-tic tree languages fr...
The relevance of grammatical inference techniques to the semiautomatic construction from empirical d...
Abstract. A probabilistic Büchi automaton PBA is defined. The probabilistic language (L; p) as defin...
Abstract. We consider probabilistic automata over finite words. Such an au-tomaton defines the langu...
International audienceRecently, an algorithm, DEES, was proposed for learning rational stochastic tr...
Probabilistic (or quantitative) verification is a branch of formal methods dealing with stochastic m...
It is quite natural to assign probabilities (or frequencies) to the sentences of a language to try t...
This article presents an overview of Probabilistic Automata (PA) and discrete Hidden Markov Models (...
A mathematical formulation of probabilistic grammars, as well as the random languages generated by p...
Probabilistic ω-automata are variants of nondeterministic automata over infinite words where all cho...
AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalisti...
International audienceIn probabilistic grammatical inference, a usual goal is to infer a good approx...
35 pagesThe goal of the present paper is to provide a systematic and comprehensive study of rational...
International audienceWe consider the problem of learning stochastic tree languages from a sample of...
We introduce a new class of probabilistic automata: Probabilistic Residual Finite State Automata. W...
We focus on the classical problem in grammatical inference of learning stochas-tic tree languages fr...
The relevance of grammatical inference techniques to the semiautomatic construction from empirical d...
Abstract. A probabilistic Büchi automaton PBA is defined. The probabilistic language (L; p) as defin...
Abstract. We consider probabilistic automata over finite words. Such an au-tomaton defines the langu...
International audienceRecently, an algorithm, DEES, was proposed for learning rational stochastic tr...
Probabilistic (or quantitative) verification is a branch of formal methods dealing with stochastic m...
It is quite natural to assign probabilities (or frequencies) to the sentences of a language to try t...
This article presents an overview of Probabilistic Automata (PA) and discrete Hidden Markov Models (...
A mathematical formulation of probabilistic grammars, as well as the random languages generated by p...
Probabilistic ω-automata are variants of nondeterministic automata over infinite words where all cho...
AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalisti...