In human-aware planning systems, a planning agent might need to explain its plan to a human user when that plan appears to be non-feasible or sub-optimal. A popular approach, called model reconciliation, has been proposed as a way to bring the model of the human user closer to the agent’s model. To do so, the agent provides an explanation that can be used to update the model of human such that the agent’s plan is feasible or optimal to the human user. Existing approaches to solve this problem have been based on automated planning methods and have been limited to classical planning problems only. In this paper, we approach the model reconciliation problem from a different perspective, that of knowledge representation and reasoning, and demon...
In this paper we examine the general problem of generating preferred explanations for observed behav...
In order to engender trust in AI, humans must understand what an AI system is trying to achieve, and...
This report illustrates how new methods and techniques from the area of knowledge representation and...
Human users who execute an automatically generated plan want to understand the rationale behind it. ...
In human-aware planning, a planning agent may need to provide an explanation to a human user on why ...
Model reconciliation has been proposed as a way for an agent to explain its decisions to a human who...
The fast progress in artificial intelligence (AI), combined with the constantly widening scope of it...
Humans exhibit a significant ability to answer a wide range of questions about previously unencounte...
In automated planning, the need for explanations arises when there is a mismatch between a proposed ...
In this work, we present a new planning formalism called Expectation-Aware planning for decision mak...
An important type of question that arises in Explainable Planning is a contrastive question, of the ...
This chapter describes a model and an underlying theoretical framework for hybrid planning. Modern p...
Planning is the task of finding a set of operators whose executive transforms the current world stat...
. Expert systems are typically expected to be able to justify their decisions to the user. This pape...
This work lays fundamental groundwork for the development of so-called Companion Systems - cognitive...
In this paper we examine the general problem of generating preferred explanations for observed behav...
In order to engender trust in AI, humans must understand what an AI system is trying to achieve, and...
This report illustrates how new methods and techniques from the area of knowledge representation and...
Human users who execute an automatically generated plan want to understand the rationale behind it. ...
In human-aware planning, a planning agent may need to provide an explanation to a human user on why ...
Model reconciliation has been proposed as a way for an agent to explain its decisions to a human who...
The fast progress in artificial intelligence (AI), combined with the constantly widening scope of it...
Humans exhibit a significant ability to answer a wide range of questions about previously unencounte...
In automated planning, the need for explanations arises when there is a mismatch between a proposed ...
In this work, we present a new planning formalism called Expectation-Aware planning for decision mak...
An important type of question that arises in Explainable Planning is a contrastive question, of the ...
This chapter describes a model and an underlying theoretical framework for hybrid planning. Modern p...
Planning is the task of finding a set of operators whose executive transforms the current world stat...
. Expert systems are typically expected to be able to justify their decisions to the user. This pape...
This work lays fundamental groundwork for the development of so-called Companion Systems - cognitive...
In this paper we examine the general problem of generating preferred explanations for observed behav...
In order to engender trust in AI, humans must understand what an AI system is trying to achieve, and...
This report illustrates how new methods and techniques from the area of knowledge representation and...