One current research goal of Artificial Intelligence and Machine Learning is to improve the problem-solving performance of systems with their own experience or from external teaching. The work presented in this paper concentrates on the learning of decomposition rules, also called d-rules, i.e., given some examples learn rules that guide the planning process, in new problems, by determining what operators are to be included in the solution plan. Also a planning algorithm is presented that uses the learned d-rules in order to obtain the desired plan. The learning algorithm includes a value function approximation, which gives each learned rule an associated function. If the planner finds more than one applicable d-rule, it discriminates am...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
The work described in this paper addresses learning planning operators by observing expert agents an...
We consider techniques for learning to plan in deterministic and stochastic Artificial Intelligence ...
Two central problems of creating artificial intelligent agents that can operate in the human world a...
Graduation date: 1999Arti cial Intelligence (AI) planning techniques have been central to automating...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Many environments involve following rules and tasks; for example, a chef cooking a dish follows a re...
This paper discusses learning in hybrid models that goes beyond simple classification rule extractio...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
Planning is the branch of Artificial Intelligence (AI) that seeks to automate reasoning about plans,...
This thesis is mainly about classical planning for artificial intelligence (AI). In planning, we dea...
Recent discoveries in automated planning are broadening the scope of planners, from toy problems to ...
This chapter is concerned with the enhancement of planning systems using techniques from Machine Lea...
AbstractIn this paper we discuss techniques for representing and organizing knowledge that enable a ...
Acquiring knowledge from experts for planning systems is a rather difficult knowledge engineering ta...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
The work described in this paper addresses learning planning operators by observing expert agents an...
We consider techniques for learning to plan in deterministic and stochastic Artificial Intelligence ...
Two central problems of creating artificial intelligent agents that can operate in the human world a...
Graduation date: 1999Arti cial Intelligence (AI) planning techniques have been central to automating...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Many environments involve following rules and tasks; for example, a chef cooking a dish follows a re...
This paper discusses learning in hybrid models that goes beyond simple classification rule extractio...
Sequential decision making, commonly formalized as optimization of a Markov Decision Process, is a k...
Planning is the branch of Artificial Intelligence (AI) that seeks to automate reasoning about plans,...
This thesis is mainly about classical planning for artificial intelligence (AI). In planning, we dea...
Recent discoveries in automated planning are broadening the scope of planners, from toy problems to ...
This chapter is concerned with the enhancement of planning systems using techniques from Machine Lea...
AbstractIn this paper we discuss techniques for representing and organizing knowledge that enable a ...
Acquiring knowledge from experts for planning systems is a rather difficult knowledge engineering ta...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
The work described in this paper addresses learning planning operators by observing expert agents an...
We consider techniques for learning to plan in deterministic and stochastic Artificial Intelligence ...