Litcius/Paper detail

Classifier-based constraint acquisition

Steven Prestwich, Eugene C. Freuder, Barry O’Sullivan, David Browne

2021Annals of Mathematics and Artificial Intelligence15 citationsDOIOpen Access PDF

Abstract

Abstract Modeling a combinatorial problem is a hard and error-prone task requiring significant expertise. Constraint acquisition methods attempt to automate this process by learning constraints from examples of solutions and (usually) non-solutions. Active methods query an oracle while passive methods do not. We propose a known but not widely-used application of machine learning to constraint acquisition: training a classifier to discriminate between solutions and non-solutions, then deriving a constraint model from the trained classifier. We discuss a wide range of possible new acquisition methods with useful properties inherited from classifiers. We also show the potential of this approach using a Naive Bayes classifier, obtaining a new passive acquisition algorithm that is considerably faster than existing methods, scalable to large constraint sets, and robust under errors.

Topics & Concepts

Computer scienceArtificial intelligenceClassifier (UML)Machine learningOracleNaive Bayes classifierConstraint (computer-aided design)ScalabilityConstraint satisfactionConstraint learningPattern recognition (psychology)Support vector machineLocal consistencyMathematicsProbabilistic logicSoftware engineeringDatabaseGeometryConstraint Satisfaction and OptimizationAI-based Problem Solving and PlanningMachine Learning and Algorithms