In our previous research, we investigated the properties of case-based plan recognition with incomplete plan libraries. Incremental construction of plan libraries along with retrieval based on similarities among planning situations (rather than on similarities among planning actions) enables recognition in light of novel planning actions. In this paper we investigate the recognition behavior in situations where the recognizer fails to find past situations that match the currently observed situation at any level of abstraction. Such recognition behavior is especially common in early recognition stages when the rate of new bin observations is large. To cope with newly observed situations, we employ a retrieval scheme that utilizes a similarit...
Abstract. We present a case-based reasoning technique based on con-ceptual neighborhoods of cases. T...
The topological characteristics of the state space graph for a planning problem are related to the i...
In this paper we address the problem of planning in rich domains, where knowledge representation is ...
We present a novel case-based plan recognition method that interprets observations of plan behavior ...
Case-Based planning can fruitfully exploit knowledge gained by solving a large number of problems, s...
Case-Based Planning (CBP) provides a way of scaling up domain-independent planning to solve large pr...
Case-Based Planning (CBP) provides a way of scaling up domain-independent planning to solve large pr...
Abstract. Case-Based Planning (CBP) is an effective technique for solving planning problems that has...
Abstract. We present SET-PR, a novel case-based plan recognition algorithm that is tolerant to missi...
The main focus of this research is to establish the techniques and prove feasibility of the case-bas...
Plan recognition is the task of inferring the plan of an agent, based on an incomplete sequence of ...
This paper describes a quantitative similarity metric and its contribution to achieve original plan ...
Case-based planning can take advantage of former problem-solving experiences by storing in a plan li...
State memoization is critical to the good performance of heuristic forward search planners, which re...
AbstractCase-based planning can take advantage of former problem-solving experiences by storing in a...
Abstract. We present a case-based reasoning technique based on con-ceptual neighborhoods of cases. T...
The topological characteristics of the state space graph for a planning problem are related to the i...
In this paper we address the problem of planning in rich domains, where knowledge representation is ...
We present a novel case-based plan recognition method that interprets observations of plan behavior ...
Case-Based planning can fruitfully exploit knowledge gained by solving a large number of problems, s...
Case-Based Planning (CBP) provides a way of scaling up domain-independent planning to solve large pr...
Case-Based Planning (CBP) provides a way of scaling up domain-independent planning to solve large pr...
Abstract. Case-Based Planning (CBP) is an effective technique for solving planning problems that has...
Abstract. We present SET-PR, a novel case-based plan recognition algorithm that is tolerant to missi...
The main focus of this research is to establish the techniques and prove feasibility of the case-bas...
Plan recognition is the task of inferring the plan of an agent, based on an incomplete sequence of ...
This paper describes a quantitative similarity metric and its contribution to achieve original plan ...
Case-based planning can take advantage of former problem-solving experiences by storing in a plan li...
State memoization is critical to the good performance of heuristic forward search planners, which re...
AbstractCase-based planning can take advantage of former problem-solving experiences by storing in a...
Abstract. We present a case-based reasoning technique based on con-ceptual neighborhoods of cases. T...
The topological characteristics of the state space graph for a planning problem are related to the i...
In this paper we address the problem of planning in rich domains, where knowledge representation is ...