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AcademicArticle

Query-driven Qualitative Constraint Acquisition

Mohamed-Bachir Belaid, Nassim Belmecheri, Arnaud Gotlieb, Nadjib Lazaar, Helge Spieker

Many planning, scheduling or multi-dimensional packing problems involve the design of subtle logical combinations of temporal or spatial constraints. Recently, we introduced GEQCA-I, which stands for Generic Qualitative Constraint Acquisition, as a new active constraint acquisition method for learning qualitative constraints using qualitative queries. In this paper, we revise and extend GEQCA-I to GEQCA-II with a new type of query, universal query, for qualitative constraint acquisition, with a deeper query-driven acquisition algorithm. Our extended experimental evaluation shows the efficiency and usefulness of the concept of universal query in learning randomly-generated qualitative networks, including both temporal networks based on Allen’s algebra and spatial networks based on region connection calculus. We also show the effectiveness of GEQCA-II in learning the qualitative part of real scheduling problems.

Publikasjonsdetaljer

Tidsskrift: The journal of artificial intelligence research, vol. 79, p. 241-271, 2024

Internasjonalt standardnummer:
Skriv ut: 1076-9757
Online: 1943-5037

AcademicArticle

År: 2024

Vitenskapelig verdi: LevelTwo

Språk: Engelsk

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