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dc.contributor.authorLane, P.C.R.
dc.contributor.authorGobet, F.
dc.date.accessioned2010-08-10T07:40:23Z
dc.date.available2010-08-10T07:40:23Z
dc.date.issued2005
dc.identifier.citationIn: Proceedings of the ICML-2005 Workshop on Meta-learning.en
dc.identifier.urihttp://hdl.handle.net/2299/4728
dc.description.abstractExploring multiple classes of learning algorithms for those algorithms which perform best in multiple tasks is a complex problem of multiple-criteria optimisation. We use a genetic algorithm to locate sets of models which are not outperformed on all of the tasks. The genetic algorithm develops a population of multiple types of learning algorithms, with competition between individuals of different types. We find that inherent differences in the convergence time and performance levels of the different algorithms leads to misleading population effects. We explore the role that the algorithm representation and initial population has on task performance. Our findings suggest that separating the representation of different algorithms is beneficial in enhancing performance. Also, initial seeding is required to avoid premature convergence to non-optimal classes of algorithms.en
dc.format.extent136903 bytes
dc.format.mimetypeapplication/pdf
dc.language.isoenen
dc.publisherICMLen
dc.subjectlearningen
dc.subjectmodelen
dc.subjectCHRESTen
dc.subjectgenetic algorithmsen
dc.subjectoptimisationen
dc.subjectmulti-objectiveen
dc.titleMulti-task learning and transfer: The effect of algorithm representationen
dc.typeConference paperen
herts.preservation.rarelyaccessedtrue


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