Litcius/Paper detail

Automated Algorithm Selection: from Feature-Based to Feature-Free Approaches

Mohamad Alissa, Kevin Sim, Emma Hart

2023Journal of Heuristics20 citationsDOIOpen Access PDF

Abstract

Abstract We propose a novel technique for algorithm-selection, applicable to optimisation domains in which there is implicit sequential information encapsulated in the data, e.g., in online bin-packing. Specifically we train two types of recurrent neural networks to predict a packing heuristic in online bin-packing, selecting from four well-known heuristics. As input, the RNN methods only use the sequence of item-sizes. This contrasts to typical approaches to algorithm-selection which require a model to be trained using domain-specific instance features that need to be first derived from the input data. The RNN approaches are shown to be capable of achieving within 5% of the oracle performance on between 80.88 and 97.63% of the instances, depending on the dataset. They are also shown to outperform classical machine learning models trained using derived features. Finally, we hypothesise that the proposed methods perform well when the instances exhibit some implicit structure that results in discriminatory performance with respect to a set of heuristics. We test this hypothesis by generating fourteen new datasets with increasing levels of structure, and show that there is a critical threshold of structure required before algorithm-selection delivers benefit.

Topics & Concepts

Computer scienceHeuristicsBin packing problemOracleArtificial intelligenceHeuristicSelection (genetic algorithm)Feature selectionAlgorithmSet (abstract data type)Feature (linguistics)Machine learningPattern recognition (psychology)Sequence (biology)BinOperating systemGeneticsLinguisticsSoftware engineeringProgramming languagePhilosophyBiologyOptimization and Packing ProblemsIndustrial Vision Systems and Defect DetectionMetaheuristic Optimization Algorithms Research