We describe a large scale study of planners and their performance: 28 planners on 4726 benchmark problems. In the first part of the paper, we apply off-the-shelf machine learning techniques to learn models of the planners ’ performance from the data. In the evaluation of these models, we address the critical question of whether accurate models can be learned from easily extractable problem features. In the second part, we show how the models can be useful to furthering planner performance and understanding. We offer two contributions: 1) We demonstrate that accurate models of runtime and probability of success can be learned using off-the-shelf machine learning techniques, and 2) We show that the learned models can be leveraged to support a...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
The performance of a motion planning algorithm is intrinsically linked with applications that respec...
In the recent years the field of automated plan generation has significantly advanced and several po...
In recent work we showed that models constructed from plan-ner performance data over a large suite o...
Empirical performance models play an important role in the development of planning portfolios that m...
Empirical performance models play an important role in the development of planning portfolios that m...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
As classical planning is known to be computationally hard, no single planner is expected to work wel...
Recent trends in planning research have led to empirical comparison becoming com-monplace. The eld h...
This chapter is concerned with the enhancement of planning systems using techniques from Machine Lea...
Outlines an experimental machine learning implementation, called `FM', that applies both explanation...
In the last International Planning Competition (IPC 2011), the most efficient planners in the satisf...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
The performance of a motion planning algorithm is intrinsically linked with applications that respec...
In the recent years the field of automated plan generation has significantly advanced and several po...
In recent work we showed that models constructed from plan-ner performance data over a large suite o...
Empirical performance models play an important role in the development of planning portfolios that m...
Empirical performance models play an important role in the development of planning portfolios that m...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
As classical planning is known to be computationally hard, no single planner is expected to work wel...
Recent trends in planning research have led to empirical comparison becoming com-monplace. The eld h...
This chapter is concerned with the enhancement of planning systems using techniques from Machine Lea...
Outlines an experimental machine learning implementation, called `FM', that applies both explanation...
In the last International Planning Competition (IPC 2011), the most efficient planners in the satisf...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
The performance of a motion planning algorithm is intrinsically linked with applications that respec...
In the recent years the field of automated plan generation has significantly advanced and several po...