Since the seminal work by Angluin, active learning of automata, by membership and equivalence queries, has been extensively studied and several generalisations have been developed to learn various extensions of automata. For weighted automata, restricted cases have been tackled in the literature and in this paper we chart the boundaries of the Angluin approach (using a class of hypothesis automata constructed from membership and equivalence queries) applied to learning weighted automata over a general semiring. We show precisely the theoretical limitations of this approach and classify functions with respect to how guessable they are (corresponding to the existence and abundance of solutions of certain systems of equations). We provide a sy...
This thesis focuses on weighted-automaton learning and minimization, matrix factorization, and the ...
Weighted automata are a generalization of nondeterministic automata thatassociate a weight drawn fro...
Abstract. In this paper, we give an overview on some algorithms for learning automata. Starting with...
We present three pumping lemmas for three classes of functions definable by fragments of weighted au...
This paper studies the problem of learning weighted automata from a finite sample of strings with re...
Weighted automata map input words to numerical values. Ap- plications of weighted automata include f...
In the paper, we generalize an algorithm and some related results by Mohri [25] for deter-minization...
Weighted finite automata (WFA) are finite automata whose transitions and states are augmented with s...
Weighted automata generalize a number of concepts found in discrete event dynamics systems of variou...
We introduce the definition of language recognition with weighted automata, a generalization of the ...
Abstract: We investigate weighted finite automata over strings and strong bimonoids. Such algebraic ...
Abstract: We investigate weighted finite automata over strings and strong bimonoids. Such algebraic ...
AbstractWeighted automata are used to describe quantitative properties in various areas such as prob...
Abstract. Weighted automata are used to describe quantitative prop-erties in various areas such as p...
This thesis focuses on weighted-automaton learning and minimization, matrix factorization, and the ...
This thesis focuses on weighted-automaton learning and minimization, matrix factorization, and the ...
Weighted automata are a generalization of nondeterministic automata thatassociate a weight drawn fro...
Abstract. In this paper, we give an overview on some algorithms for learning automata. Starting with...
We present three pumping lemmas for three classes of functions definable by fragments of weighted au...
This paper studies the problem of learning weighted automata from a finite sample of strings with re...
Weighted automata map input words to numerical values. Ap- plications of weighted automata include f...
In the paper, we generalize an algorithm and some related results by Mohri [25] for deter-minization...
Weighted finite automata (WFA) are finite automata whose transitions and states are augmented with s...
Weighted automata generalize a number of concepts found in discrete event dynamics systems of variou...
We introduce the definition of language recognition with weighted automata, a generalization of the ...
Abstract: We investigate weighted finite automata over strings and strong bimonoids. Such algebraic ...
Abstract: We investigate weighted finite automata over strings and strong bimonoids. Such algebraic ...
AbstractWeighted automata are used to describe quantitative properties in various areas such as prob...
Abstract. Weighted automata are used to describe quantitative prop-erties in various areas such as p...
This thesis focuses on weighted-automaton learning and minimization, matrix factorization, and the ...
This thesis focuses on weighted-automaton learning and minimization, matrix factorization, and the ...
Weighted automata are a generalization of nondeterministic automata thatassociate a weight drawn fro...
Abstract. In this paper, we give an overview on some algorithms for learning automata. Starting with...