We study the learnability of symbolic finite state automata (SFA), a model shown useful in many applications in software verification. The state-of-the-art literature on this topic follows the query learning paradigm, and so far all obtained results are positive. We provide a necessary condition for efficient learnability of SFAs in this paradigm, from which we obtain the first negative result. The main focus of our work lies in the learnability of SFAs under the paradigm of identification in the limit using polynomial time and data, and its strengthening efficient identifiability, which are concerned with the existence of a systematic set of characteristic samples from which a learner can correctly infer the target language. We provide a n...
International audienceWe propose algorithms for checking language equivalence of finite automata ove...
In this paper, we establish the learnability of simple deterministic finite-memory automata via memb...
Automata learning has been successfully applied in the verification of hardware and software. The si...
We study the learnability of symbolic finite state automata, a model shown useful in many applicatio...
In this thesis, we study algorithms which can be used to extract, or learn, formal mathematical mode...
It is known that the class of deterministic finite automata is polynomial time learnable by using me...
Symbolic finite automata (SFAs) are generalizations of classical finite state automata. Whereas the ...
Inferring the input grammar accepted by a program is central for a variety of software engineering p...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
We proposes an algorithm to learn automata infinite alphabets, or at least too large to enumerate. W...
It is known that the class of deterministic finite automata is polynomial time learnable by using m...
The present paper establishes the learnability of simple deterministic finite-memory automata via me...
We present an efficient incremental algorithm for learning deterministic finite state automata (DFA)...
International audienceWe propose algorithms for checking language equivalence of finite automata ove...
In this paper, we establish the learnability of simple deterministic finite-memory automata via memb...
Automata learning has been successfully applied in the verification of hardware and software. The si...
We study the learnability of symbolic finite state automata, a model shown useful in many applicatio...
In this thesis, we study algorithms which can be used to extract, or learn, formal mathematical mode...
It is known that the class of deterministic finite automata is polynomial time learnable by using me...
Symbolic finite automata (SFAs) are generalizations of classical finite state automata. Whereas the ...
Inferring the input grammar accepted by a program is central for a variety of software engineering p...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
We proposes an algorithm to learn automata infinite alphabets, or at least too large to enumerate. W...
It is known that the class of deterministic finite automata is polynomial time learnable by using m...
The present paper establishes the learnability of simple deterministic finite-memory automata via me...
We present an efficient incremental algorithm for learning deterministic finite state automata (DFA)...
International audienceWe propose algorithms for checking language equivalence of finite automata ove...
In this paper, we establish the learnability of simple deterministic finite-memory automata via memb...
Automata learning has been successfully applied in the verification of hardware and software. The si...