Empirical performance models play an important role in the development of planning portfolios that make a per-domain or per-problem configuration of its search components. Even though such portfolios have shown their power when compared to other systems in current benchmarks, there is no clear evidence that they are capable to differentiate problems (instances) having similar input properties (in terms of objects, goals, etc.) but fairly different runtime for a given planner. In this paper we present a study of empirical performance models that are trained using problems having the same configuration, with the objective of guiding the models to recognize the underlying differences existing among homogeneous problems. In addition we propose ...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Different solvers for computationally difficult problems such as satisfiability (SAT) perform best o...
Empirical performance models play an important role in the development of planning portfolios that m...
We describe a large scale study of planners and their performance: 28 planners on 4726 benchmark pro...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
In recent work we showed that models constructed from plan-ner performance data over a large suite o...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
In the recent years the field of automated plan generation has significantly advanced and several po...
Sequential planning portfolios are very powerful in exploiting the complementary strength of differe...
A planning system’s performance is biased due to many factors related to its design. For example, th...
The acquisition and use of macro actions has been shown to be effective in improving the speed of AI...
The performance of a motion planning algorithm is intrinsically linked with applications that respec...
Recent trends in planning research have led to empirical comparison becoming com-monplace. The eld h...
In recent years the concept of sequential portfolio has be-come an important topic to improve the pe...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Different solvers for computationally difficult problems such as satisfiability (SAT) perform best o...
Empirical performance models play an important role in the development of planning portfolios that m...
We describe a large scale study of planners and their performance: 28 planners on 4726 benchmark pro...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
In recent work we showed that models constructed from plan-ner performance data over a large suite o...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
In the recent years the field of automated plan generation has significantly advanced and several po...
Sequential planning portfolios are very powerful in exploiting the complementary strength of differe...
A planning system’s performance is biased due to many factors related to its design. For example, th...
The acquisition and use of macro actions has been shown to be effective in improving the speed of AI...
The performance of a motion planning algorithm is intrinsically linked with applications that respec...
Recent trends in planning research have led to empirical comparison becoming com-monplace. The eld h...
In recent years the concept of sequential portfolio has be-come an important topic to improve the pe...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
We investigate learning heuristics for domainspecific planning. Prior work framed learning a heurist...
Different solvers for computationally difficult problems such as satisfiability (SAT) perform best o...