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Frugal Algorithm Selection (Short Paper)

Kuş, Erdem, Akgün, Özgür, Dang, Nguyen, Miguel, Ian

2024Dagstuhl Research Online Publication Server63 citationsDOIOpen Access PDF

Abstract

When solving decision and optimisation problems, many competing algorithms (model and solver choices) have complementary strengths. Typically, there is no single algorithm that works well for all instances of a problem. Automated algorithm selection has been shown to work very well for choosing a suitable algorithm for a given instance. However, the cost of training can be prohibitively large due to running candidate algorithms on a representative set of training instances. In this work, we explore reducing this cost by choosing a subset of the training instances on which to train. We approach this problem in three ways: using active learning to decide based on prediction uncertainty, augmenting the algorithm predictors with a timeout predictor, and collecting training data using a progressively increasing timeout. We evaluate combinations of these approaches on six datasets from ASLib and present the reduction in labelling cost achieved by each option.

Topics & Concepts

Computer sciencePython (programming language)Modular designDocumentationModalWorkflowMIT LicenseProgramming languageSoftware engineeringUnit testingUsabilityExtensibilityHuman–computer interactionSoftwareDatabasePolymer chemistryChemistryMachine Learning and AlgorithmsComputational Physics and Python ApplicationsParallel Computing and Optimization Techniques
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