In dynamic epistemic logic, actions are described using action models. In this paper we introduce a framework for studying learnability of action models from observations. We present first results concerning propositional action models. First we check two basic learnability criteria: finite identifiability (conclusively inferring the appropriate action model in finite time) and identifiability in the limit (inconclusive convergence to the right action model). We show that deterministic actions are finitely identifiable, while non-deterministic actions require more learning power—they are identifiable in the limit. We then move on to a particular learning method, which proceeds via restriction of a space of events within a learning-specific ...
The knowability paradox is usually formulated as a problem about the static propositions which expre...
We study an epistemic logic where knowledge is built from what the agents observe (including higher-...
AbstractWe give an algorithm for “before-after” reasoning about action. The algorithm decides satisf...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
Formal learning theory constitutes an attempt to describe and explain the phenomenon of learning, in...
This paper discusses the possibility of modelling inductive inference (Gold 1967) in dynamic epistem...
By action model, we understand any logic-based representation of effects and executability pre-condi...
Abstract. This work provides a comparison of learning by erasing [1] and iterated epistemic update [...
We present a reasoning about actions framework based on a sum of epistemic logic S5 and propositiona...
International audienceWe present a reasoning about actions framework based on a sum of epistemic log...
We formalize a model for supervised learning of action strategies in dynamic stochastic domains and ...
In this dissertation, we study various perspectives on learning and its relation to knowledge and be...
AbstractFormal learning theory constitutes an attempt to describe and explain the phenomenon of lear...
From the perspective of DEL, learning is updating an epistemic situation with new informa-tion, and ...
© 2021 Timo EckhardtIn this thesis I investigate the idea of modeling epistemic updates as static mo...
The knowability paradox is usually formulated as a problem about the static propositions which expre...
We study an epistemic logic where knowledge is built from what the agents observe (including higher-...
AbstractWe give an algorithm for “before-after” reasoning about action. The algorithm decides satisf...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
Formal learning theory constitutes an attempt to describe and explain the phenomenon of learning, in...
This paper discusses the possibility of modelling inductive inference (Gold 1967) in dynamic epistem...
By action model, we understand any logic-based representation of effects and executability pre-condi...
Abstract. This work provides a comparison of learning by erasing [1] and iterated epistemic update [...
We present a reasoning about actions framework based on a sum of epistemic logic S5 and propositiona...
International audienceWe present a reasoning about actions framework based on a sum of epistemic log...
We formalize a model for supervised learning of action strategies in dynamic stochastic domains and ...
In this dissertation, we study various perspectives on learning and its relation to knowledge and be...
AbstractFormal learning theory constitutes an attempt to describe and explain the phenomenon of lear...
From the perspective of DEL, learning is updating an epistemic situation with new informa-tion, and ...
© 2021 Timo EckhardtIn this thesis I investigate the idea of modeling epistemic updates as static mo...
The knowability paradox is usually formulated as a problem about the static propositions which expre...
We study an epistemic logic where knowledge is built from what the agents observe (including higher-...
AbstractWe give an algorithm for “before-after” reasoning about action. The algorithm decides satisf...