This paper presents a novel approach for learning strips action models from examples that compiles this inductive learning task into a classical planning task. Interestingly, the compilation approach is flexible to different amounts of available input knowledge; the learning examples can range from a set of plans (with their corresponding initial and final states) to just a pair of initial and final states (no intermediate action or state is given). Moreover, the compilation accepts partially specified action models and it can be used to validate whether the observation of a plan execution follows a given strips action model, even if this model is not fully specified
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...
The work described in this paper addresses learning planning operators by observing expert agents an...
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...
The problem of specifying high-level knowledge bases for planning becomes a hard task in realistic e...
Given a partially observed plan execution, and a set of pos-sible planning models (models that share...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
AbstractAI planning requires the definition of action models using a formal action and plan descript...
AbstractAutomated planning requires action models described using languages such as the Planning Dom...
This thesis is mainly about classical planning for artificial intelligence (AI). In planning, we dea...
Abstract This paper introduces two new frameworks for learning action models for planning. In the mi...
Generalized planning is concerned with the computation of plans that solve not one but multiple inst...
In this paper, we describe an approach for learning planning domain models directly from natural lan...
Comunicació presentada a la Twenty-Sixth International Joint Conference on Artificial Intelligence (...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...
The work described in this paper addresses learning planning operators by observing expert agents an...
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...
The problem of specifying high-level knowledge bases for planning becomes a hard task in realistic e...
Given a partially observed plan execution, and a set of pos-sible planning models (models that share...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
AbstractAI planning requires the definition of action models using a formal action and plan descript...
AbstractAutomated planning requires action models described using languages such as the Planning Dom...
This thesis is mainly about classical planning for artificial intelligence (AI). In planning, we dea...
Abstract This paper introduces two new frameworks for learning action models for planning. In the mi...
Generalized planning is concerned with the computation of plans that solve not one but multiple inst...
In this paper, we describe an approach for learning planning domain models directly from natural lan...
Comunicació presentada a la Twenty-Sixth International Joint Conference on Artificial Intelligence (...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...
The work described in this paper addresses learning planning operators by observing expert agents an...
Abstract:- STRIPS planning is a problem of finding of a set of actions that transform given initial ...