Combinatorial optimisation problems are ubiquitous in artificial intelligence. Designing the underlying models, however, requires substantial expertise, which is a limiting factor in practice. The models typically consist of hard and soft constraints, or combine hard constraints with an objective function. We introduce a novel setting for learning combinatorial optimisation problems from contextual examples. These positive and negative examples show – in a particular context – whether the solutions are good enough or not. We develop our framework using the MAX-SAT formalism as it is a simple yet powerful setting having these features. We study the learnability of MAX-SAT models. Our theoretical results show that high-quality MAX-SAT models can be learned from contextual examples in the realisable and agnostic settings, as long as the data satisfies an intuitive “representativeness” condition. We also contribute two implementations based on our theoretical results: one leverages ideas from syntax-guided synthesis while the other makes use of stochastic local search techniques. The two implementations are evaluated by recovering synthetic and benchmark models from contextual examples. The experimental results support our theoretical analysis, showing that MAX-SAT models can be learned from contextual examples. Among the two implementations, the stochastic local search learner scales much better than the syntax-guided implementation while providing comparable or better models.

Learning MAX-SAT from contextual examples for combinatorial optimisation / Kumar, Mohit; Kolb, Samuel; Teso, Stefano; De Raedt, Luc. - In: ARTIFICIAL INTELLIGENCE. - ISSN 0004-3702. - STAMPA. - 314:(2023), pp. 10379401-10379425. [10.1016/j.artint.2022.103794]

Learning MAX-SAT from contextual examples for combinatorial optimisation

Kolb, Samuel;Teso, Stefano;
2023-01-01

Abstract

Combinatorial optimisation problems are ubiquitous in artificial intelligence. Designing the underlying models, however, requires substantial expertise, which is a limiting factor in practice. The models typically consist of hard and soft constraints, or combine hard constraints with an objective function. We introduce a novel setting for learning combinatorial optimisation problems from contextual examples. These positive and negative examples show – in a particular context – whether the solutions are good enough or not. We develop our framework using the MAX-SAT formalism as it is a simple yet powerful setting having these features. We study the learnability of MAX-SAT models. Our theoretical results show that high-quality MAX-SAT models can be learned from contextual examples in the realisable and agnostic settings, as long as the data satisfies an intuitive “representativeness” condition. We also contribute two implementations based on our theoretical results: one leverages ideas from syntax-guided synthesis while the other makes use of stochastic local search techniques. The two implementations are evaluated by recovering synthetic and benchmark models from contextual examples. The experimental results support our theoretical analysis, showing that MAX-SAT models can be learned from contextual examples. Among the two implementations, the stochastic local search learner scales much better than the syntax-guided implementation while providing comparable or better models.
2023
Kumar, Mohit; Kolb, Samuel; Teso, Stefano; De Raedt, Luc
Learning MAX-SAT from contextual examples for combinatorial optimisation / Kumar, Mohit; Kolb, Samuel; Teso, Stefano; De Raedt, Luc. - In: ARTIFICIAL INTELLIGENCE. - ISSN 0004-3702. - STAMPA. - 314:(2023), pp. 10379401-10379425. [10.1016/j.artint.2022.103794]
File in questo prodotto:
File Dimensione Formato  
1-s2.0-S0004370222001345-main.pdf

Solo gestori archivio

Tipologia: Versione editoriale (Publisher’s layout)
Licenza: Tutti i diritti riservati (All rights reserved)
Dimensione 718.86 kB
Formato Adobe PDF
718.86 kB Adobe PDF   Visualizza/Apri
2202.03888.pdf

accesso aperto

Tipologia: Pre-print non referato (Non-refereed preprint)
Licenza: Tutti i diritti riservati (All rights reserved)
Dimensione 743.31 kB
Formato Adobe PDF
743.31 kB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/364709
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 2
  • ???jsp.display-item.citation.isi??? 0
  • OpenAlex ND
social impact