In human-aware planning, a planning agent may need to provide an explanation to a human user on why its plan is optimal. A popular approach to do this is called model reconciliation, where the agent tries to reconcile the differences in its model and the human's model such that the plan is also optimal in the human's model. In this paper, we present a logic-based framework for model reconciliation that extends beyond the realm of planning. More specifically, given a knowledge base KB1 entailing a formula phi and a second knowledge base KB2 not entailing it, model reconciliation seeks an explanation, in the form of a cardinality-minimal subset of KB1, whose integration into KB2 makes the entailment possible. Our approach, based on ideas orig...
AbstractThe typical AI problem is that of making a plan of the actions to be performed by a robot so...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
Designing a planning domain is a difficult task in AI planning. Assisting tools are thus required if...
In human-aware planning, a planning agent may need to provide an explanation to a human user on why ...
In human-aware planning systems, a planning agent might need to explain its plan to a human user whe...
Model reconciliation has been proposed as a way for an agent to explain its decisions to a human who...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
The study of formal nonmonotonic reasoning has been motivated to a large degree by the need to solve...
A planning problem mainly consists of a description of an initial world, a set of formulas which dec...
Despite a big progress in solving planning problems, more complex problems still remain hard and cha...
The ideas of intelligent backtracking (IB) and explanation-based learning (EBL) have developed indep...
It has been shown recently that planning problems are easier to solve when they are cast as model fi...
This paper describes a novel approach to linear planning. The presented algorithm is based on a cons...
AbstractThe ideas of intelligent backtracking (IB) and explanation-based learning (EBL) have develop...
In this work, we present a new planning formalism called Expectation-Aware planning for decision mak...
AbstractThe typical AI problem is that of making a plan of the actions to be performed by a robot so...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
Designing a planning domain is a difficult task in AI planning. Assisting tools are thus required if...
In human-aware planning, a planning agent may need to provide an explanation to a human user on why ...
In human-aware planning systems, a planning agent might need to explain its plan to a human user whe...
Model reconciliation has been proposed as a way for an agent to explain its decisions to a human who...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
The study of formal nonmonotonic reasoning has been motivated to a large degree by the need to solve...
A planning problem mainly consists of a description of an initial world, a set of formulas which dec...
Despite a big progress in solving planning problems, more complex problems still remain hard and cha...
The ideas of intelligent backtracking (IB) and explanation-based learning (EBL) have developed indep...
It has been shown recently that planning problems are easier to solve when they are cast as model fi...
This paper describes a novel approach to linear planning. The presented algorithm is based on a cons...
AbstractThe ideas of intelligent backtracking (IB) and explanation-based learning (EBL) have develop...
In this work, we present a new planning formalism called Expectation-Aware planning for decision mak...
AbstractThe typical AI problem is that of making a plan of the actions to be performed by a robot so...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
Designing a planning domain is a difficult task in AI planning. Assisting tools are thus required if...