We proposes an algorithm to learn automata infinite alphabets, or at least too large to enumerate. We apply it to define a generic model intended for regression, with transitions constrained by intervals over the alphabet. The algorithm is based on the Red \& Blue framework for learning from an input sample. We show two small case studies where the alphabets are respectively the natural and real numbers, and show how nice properties of automata models like interpretability and graphical representation transfer to regression where typical models are hard to interpret.R-AGR-0685-11-
Unsupervised learning of finite automata has been proven to be NP-hard. However, there are many real...
We provide a survey of methods for inferring the structure of a finite automaton from passive observ...
This paper shows how factored finite-state representations of subregular lan-guage classes are ident...
We proposes an algorithm to learn automata infinite alphabets, or at least too large to enumerate. W...
This paper describes new and efficient algorithms for learning deterministic finite automata. Our ap...
Abstract—We present a new algorithm IDS for incremental learning of deterministic finite automata (D...
The present paper establishes the learnability of simple deterministic finite-memory automata via me...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
AbstractA model of computation dealing with infinite alphabets is proposed. This model is based on r...
The RPNI algorithm (Oncina, Garcia 1992) constructs deterministic finite automata from finite sets o...
The present paper establishes the learnability of simple deterministic finitememory automata via mem...
In this paper, we establish the learnability of simple deterministic finite-memory automata via memb...
We consider the problem of learning a finite automaton with recurrent neural networks, given a train...
Unsupervised learning of finite automata has been proven to be NP-hard. However, there are many real...
We provide a survey of methods for inferring the structure of a finite automaton from passive observ...
This paper shows how factored finite-state representations of subregular lan-guage classes are ident...
We proposes an algorithm to learn automata infinite alphabets, or at least too large to enumerate. W...
This paper describes new and efficient algorithms for learning deterministic finite automata. Our ap...
Abstract—We present a new algorithm IDS for incremental learning of deterministic finite automata (D...
The present paper establishes the learnability of simple deterministic finite-memory automata via me...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
Learning regular languages is a branch of machine learning, which has been proved useful in many are...
AbstractA model of computation dealing with infinite alphabets is proposed. This model is based on r...
The RPNI algorithm (Oncina, Garcia 1992) constructs deterministic finite automata from finite sets o...
The present paper establishes the learnability of simple deterministic finitememory automata via mem...
In this paper, we establish the learnability of simple deterministic finite-memory automata via memb...
We consider the problem of learning a finite automaton with recurrent neural networks, given a train...
Unsupervised learning of finite automata has been proven to be NP-hard. However, there are many real...
We provide a survey of methods for inferring the structure of a finite automaton from passive observ...
This paper shows how factored finite-state representations of subregular lan-guage classes are ident...