Abstract. We propose a new automaton model, called quantified data automata over words, that can model quantified invariants over linear data structures, and build poly-time active learning algorithms for them, where the learner is allowed to query the teacher with membership and equivalence queries. In order to express invariants in decidable logics, we invent a decidable subclass of QDAs, called elastic QDAs, and prove that every QDA has a unique minimally-over-approximating elastic QDA. We then give an application of these theoretically sound and efficient active learning algorithms in a passive learning framework and show that we can efficiently learn quantified linear data structure invariants from samples obtained from dynamic runs fo...
. The problem of learning universally quantified function free first order Horn expressions is studi...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
Model-based testing allows the creation of test cases from a model of the system under test. Often, ...
We consider the following classes of quantified formulas. Fix a set of basic relations called a basi...
We introduce a new paradigm for using black-box learning to synthesize invariants called ICE-learnin...
Abstract. We introduce ICE, a robust learning paradigm for synthesizing invari-ants, that learns usi...
Automata learning has been successfully applied in the verification of hardware and software. The si...
The problem of synthesizing adequate inductive invariants to prove a program correct lies at the he...
In this paper we study the learning complexity of a vast class of quantifed formulas called Relative...
AbstractWe describe algorithms that directly infer very simple forms of 1-unambiguous regular expres...
We are motivated by the following question: which data languages admit an active learning algorithm?...
We present a new algorithm for efficient learning of regular languages from examples and queries. A ...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
This paper shows how factored finite-state representations of subregular lan-guage classes are ident...
. The problem of learning universally quantified function free first order Horn expressions is studi...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
Model-based testing allows the creation of test cases from a model of the system under test. Often, ...
We consider the following classes of quantified formulas. Fix a set of basic relations called a basi...
We introduce a new paradigm for using black-box learning to synthesize invariants called ICE-learnin...
Abstract. We introduce ICE, a robust learning paradigm for synthesizing invari-ants, that learns usi...
Automata learning has been successfully applied in the verification of hardware and software. The si...
The problem of synthesizing adequate inductive invariants to prove a program correct lies at the he...
In this paper we study the learning complexity of a vast class of quantifed formulas called Relative...
AbstractWe describe algorithms that directly infer very simple forms of 1-unambiguous regular expres...
We are motivated by the following question: which data languages admit an active learning algorithm?...
We present a new algorithm for efficient learning of regular languages from examples and queries. A ...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
This paper shows how factored finite-state representations of subregular lan-guage classes are ident...
. The problem of learning universally quantified function free first order Horn expressions is studi...
. This paper deals with the polynomial-time learnability of a language class in the limit from posit...
Model-based testing allows the creation of test cases from a model of the system under test. Often, ...