Back to Search Start Over

On Learning Action Costs from Input Plans

Authors :
Morales, Marianela
Pozanco, Alberto
Canonaco, Giuseppe
Gopalakrishnan, Sriram
Borrajo, Daniel
Veloso, Manuela
Publication Year :
2024

Abstract

Most of the work on learning action models focus on learning the actions' dynamics from input plans. This allows us to specify the valid plans of a planning task. However, very little work focuses on learning action costs, which in turn allows us to rank the different plans. In this paper we introduce a new problem: that of learning the costs of a set of actions such that a set of input plans are optimal under the resulting planning model. To solve this problem we present $LACFIP^k$, an algorithm to learn action's costs from unlabeled input plans. We provide theoretical and empirical results showing how $LACFIP^k$ can successfully solve this task.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.10889
Document Type :
Working Paper