International audienceAbstract Linear temporal logic (LTL) is a specification language for finite sequences (called traces) widely used in program verification, motion planning in robotics, process mining, and many other areas. We consider the problem of learning formulas in fragments of LTL without the $$\mathbf {U}$$ U -operator for classifying traces; despite a growing interest of the research community, existing solutions suffer from two limitations: they do not scale beyond small formulas, and they may exhaust computational resources without returning any result. We introduce a new algorithm addressing both issues: our algorithm is able to construct formulas an order of magnitude larger than previous methods, and it is anytime, meaning...
The aim of this thesis is to explore the potential of resolution-based methods for linear temporal r...
AbstractA basic result concerning LTL, the propositional temporal logic of linear time, is that it i...
We study two fundamental questions in neuro-symbolic computing: can deep learning tackle challenging...
International audienceAbstract Linear temporal logic (LTL) is a specification language for finite se...
We present two novel algorithms for learning formulas in Linear Temporal Logic (LTL) from examples. ...
SCARLET is an artifact for the TACAS22 Contribution "Scalable Anytime Algorithms for Learning Formul...
We present an algorithm for efficiently testing Linear Temporal Logic (LTL) formulae on finite execu...
Learning linear temporal logic on finite traces (LTLf) formulae aims to learn a target formula that ...
We propose a measure and a metric on the sets of infinite traces generated by a set of atomic propos...
Abstract. A fragment of linear time temporal logic (LTL) is presented. It is proved that the satis¯a...
Abstract—We propose a novel algorithm for the satisfiability problem for Linear Temporal Logic (LTL)...
The complexity of LTrL, a global linear time temporal logic over traces is investigated. The logic i...
The original publication is available at ieeexplore.ieee.org.International audienceThis paper presen...
The problem of testing a linear temporal logic (LTL) formula on a finite execution trace of events, ...
The realizability problem is to decide whether there exists a pro-gram that implements a given speci...
The aim of this thesis is to explore the potential of resolution-based methods for linear temporal r...
AbstractA basic result concerning LTL, the propositional temporal logic of linear time, is that it i...
We study two fundamental questions in neuro-symbolic computing: can deep learning tackle challenging...
International audienceAbstract Linear temporal logic (LTL) is a specification language for finite se...
We present two novel algorithms for learning formulas in Linear Temporal Logic (LTL) from examples. ...
SCARLET is an artifact for the TACAS22 Contribution "Scalable Anytime Algorithms for Learning Formul...
We present an algorithm for efficiently testing Linear Temporal Logic (LTL) formulae on finite execu...
Learning linear temporal logic on finite traces (LTLf) formulae aims to learn a target formula that ...
We propose a measure and a metric on the sets of infinite traces generated by a set of atomic propos...
Abstract. A fragment of linear time temporal logic (LTL) is presented. It is proved that the satis¯a...
Abstract—We propose a novel algorithm for the satisfiability problem for Linear Temporal Logic (LTL)...
The complexity of LTrL, a global linear time temporal logic over traces is investigated. The logic i...
The original publication is available at ieeexplore.ieee.org.International audienceThis paper presen...
The problem of testing a linear temporal logic (LTL) formula on a finite execution trace of events, ...
The realizability problem is to decide whether there exists a pro-gram that implements a given speci...
The aim of this thesis is to explore the potential of resolution-based methods for linear temporal r...
AbstractA basic result concerning LTL, the propositional temporal logic of linear time, is that it i...
We study two fundamental questions in neuro-symbolic computing: can deep learning tackle challenging...