Please use this identifier to cite or link to this item: http://hdl.handle.net/1893/30670
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dc.contributor.advisorBrownlee, Alexander-
dc.contributor.advisorCairns, David-
dc.contributor.advisorSmith, Leslie-
dc.contributor.authorGraham, Kevin-
dc.date.accessioned2020-01-23T10:09:57Z-
dc.date.available2020-01-23T10:09:57Z-
dc.date.issued2019-11-01-
dc.identifier.urihttp://hdl.handle.net/1893/30670-
dc.description.abstractThe problem of algorithm selection is of great importance to the optimisation community, with a number of publications present in the Body-of-Knowledge. This importance stems from the consequences of the No-Free-Lunch Theorem which states that there cannot exist a single algorithm capable of solving all possible problems. However, despite this importance, the algorithm selection problem has of yet failed to gain widespread attention . In particular, little to no work in this area has been carried out with a focus on large-scale optimisation; a field quickly gaining momentum in line with advancements and influence of big data processing. As such, it is not as yet clear as to what factors, if any, influence the selection of algorithms for very high-dimensional problems (> 1000) - and it is entirely possible that algorithms that may not work well in lower dimensions may in fact work well in much higher dimensional spaces and vice-versa. This work therefore aims to begin addressing this knowledge gap by investigating some of these influencing factors for some common metaheuristic variants. To this end, typical parameters native to several metaheuristic algorithms are firstly tuned using the state-of-the-art automatic parameter tuner, SMAC. Tuning produces separate parameter configurations of each metaheuristic for each of a set of continuous benchmark functions; specifically, for every algorithm-function pairing, configurations are found for each dimensionality of the function from a geometrically increasing scale (from 2 to 1500 dimensions). The nature of this tuning is therefore highly computationally expensive necessitating the use of SMAC. Using these sets of parameter configurations, a vast amount of performance data relating to the large-scale optimisation of our benchmark suite by each metaheuristic was subsequently generated. From the generated data and its analysis, several behaviours presented by the metaheuristics as applied to large-scale optimisation have been identified and discussed. Further, this thesis provides a concise review of the relevant literature for the consumption of other researchers looking to progress in this area in addition to the large volume of data produced, relevant to the large-scale optimisation of our benchmark suite by the applied set of common metaheuristics. All work presented in this thesis was funded by EPSRC grant: EP/J017515/1 through the DAASE project.en_GB
dc.language.isoenen_GB
dc.publisherUniversity of Stirlingen_GB
dc.subjectlarge-scale optimisationen_GB
dc.subjectmetaheuristicsen_GB
dc.subjectalgorithm selectionen_GB
dc.subjectautomatic parameter tuningen_GB
dc.subjectparameter tuningen_GB
dc.subjectalgorithm configurationen_GB
dc.subjectcontinuous optimisationen_GB
dc.subjectoptimisationen_GB
dc.subjectoptimizationen_GB
dc.subjectoptimisation benchmarken_GB
dc.subjectgenetic algorithmen_GB
dc.subjectparticle swarm optimisationen_GB
dc.subjectdifferential evolutionen_GB
dc.subjectcovarience matrix adaptation evolutionary strategyen_GB
dc.subjectsimulated annealingen_GB
dc.subjecthill climbingen_GB
dc.subjectsearch-based optimisationen_GB
dc.subjectmetaheuristic searchen_GB
dc.subjectmetaheuristic scalabilityen_GB
dc.subject.lcshMetaheuristicsen_GB
dc.subject.lcshAlgorithmen_GB
dc.subject.lcshOptimisationen_GB
dc.subject.lcshSimulated annealing (Mathematics)en_GB
dc.titleAn Investigation of Factors Influencing Algorithm Selection for High Dimensional Continuous Optimisation Problemsen_GB
dc.typeThesis or Dissertationen_GB
dc.type.qualificationlevelDoctoralen_GB
dc.type.qualificationnameDoctor of Philosophyen_GB
dc.contributor.funderEPSRC grant: EP/J017515/1en_GB
dc.author.emailkgr15061986@gmail.comen_GB
Appears in Collections:Computing Science and Mathematics eTheses

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