AbstractAI planning requires the definition of action models using a formal action and plan description language, such as the standard Planning Domain Definition Language (PDDL), as input. However, building action models from scratch is a difficult and time-consuming task, even for experts. In this paper, we develop an algorithm called ARMS (action-relation modelling system) for automatically discovering action models from a set of successful observed plans. Unlike the previous work in action-model learning, we do not assume complete knowledge of states in the middle of observed plans. In fact, our approach works when no or partial intermediate states are given. These example plans are obtained by an observation agent who does not know the ...
There is increasing awareness in the planning com-munity that the burden of specifying complete do-m...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
Applying learning techniques to acquire action models is an area of intense research interest. Most ...
AbstractAI planning requires the definition of action models using a formal action and plan descript...
International audienceThis paper presents an approach to learn the agents' action model (action blue...
AbstractAutomated planning requires action models described using languages such as the Planning Dom...
The problem of specifying high-level knowledge bases for planning becomes a hard task in realistic e...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
Abstract This paper introduces two new frameworks for learning action models for planning. In the mi...
AI planning techniques often require a given set of action models provided as input. Creating action...
International audienceAutomated planners often require a model of the acting agent's actions, given ...
Generalized planning is concerned with the computation of plans that solve not one but multiple inst...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Powerful domain-independent planners have been developed to solve various types of planning problems...
This paper presents a novel approach for learning strips action models from examples that compiles t...
There is increasing awareness in the planning com-munity that the burden of specifying complete do-m...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
Applying learning techniques to acquire action models is an area of intense research interest. Most ...
AbstractAI planning requires the definition of action models using a formal action and plan descript...
International audienceThis paper presents an approach to learn the agents' action model (action blue...
AbstractAutomated planning requires action models described using languages such as the Planning Dom...
The problem of specifying high-level knowledge bases for planning becomes a hard task in realistic e...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
Abstract This paper introduces two new frameworks for learning action models for planning. In the mi...
AI planning techniques often require a given set of action models provided as input. Creating action...
International audienceAutomated planners often require a model of the acting agent's actions, given ...
Generalized planning is concerned with the computation of plans that solve not one but multiple inst...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Powerful domain-independent planners have been developed to solve various types of planning problems...
This paper presents a novel approach for learning strips action models from examples that compiles t...
There is increasing awareness in the planning com-munity that the burden of specifying complete do-m...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
Applying learning techniques to acquire action models is an area of intense research interest. Most ...