Effective Data Generation and Feature Selection in Learning for Planning.

Mingyu Hao, Dillon Z. Chen, Felipe W. Trevizan, Sylvie Thiébaux

Research output: Chapter in Book/Report/Conference proceedingConference Paperpeer-review

Abstract

Previous studies have shown that leveraging data beyond optimal training plans improves the learning of search guidance for planning. Specifically, state ranking information can be extracted from states on optimal plan traces and their siblings. In this paper, we generalise this approach by extracting additional rankings from the A⋆ search tree for generating optimal training plans. As in the previous approach, we incur no additional search effort and negligible computational overhead for data extraction. However, extracting more data in this way may introduce many redundant features and states which slows down training. We formalise the problem of sound, redundant feature pruning and show that it is NP-complete to solve. Furthermore, we introduce several algorithms and approximations for redundant feature pruning. Experiments show that rankings learned by extracting more data from search trees for generating optimal training plans improve planner coverage. However, pairing with unsound pruning methods often results in diminishing performance, while our sound feature pruning methods provide consistent improvements across tested domains.
Original languageEnglish
Title of host publicationECAI
Pages4969-4976
Number of pages8
DOIs
Publication statusPublished - 2025

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