EMO shines a light on the holes of complexity space

Núria Maciá, Albert Orriols-Puig, Ester Bernadó-Mansilla

    Producció científica: Capítol de llibreContribució a congrés/conferènciaAvaluat per experts

    1 Citació (Scopus)

    Resum

    Typical domains used in machine learning analyses only cover the complexity space partially, remaining a large proportion of problem difficulties that are not tested. Since the acquisition of new real-world problems is costly, the machine learning community has started giving importance to the automatic generation of learning domains with bounded difficulty. This paper proposes the use of an evolutionary multi-objective technique to generate artificial data sets that meet specific characteristics and fill these holes. The results show that the multi-objective evolutionary algorithm is able to create data sets of different complexities, covering most of the solution space where we had no real-world problem representatives. The proposed method is the starting point to study data complexity estimates and steps forward in the gap between data and learners.

    Idioma originalAnglès
    Títol de la publicacióProceedings of the 11th Annual Genetic and Evolutionary Computation Conference, GECCO-2009
    Pàgines1907-1908
    Nombre de pàgines2
    DOIs
    Estat de la publicacióPublicada - 2009
    Esdeveniment11th Annual Genetic and Evolutionary Computation Conference, GECCO-2009 - Montreal, QC, Canada
    Durada: 8 de jul. 200912 de jul. 2009

    Sèrie de publicacions

    NomProceedings of the 11th Annual Genetic and Evolutionary Computation Conference, GECCO-2009

    Conferència

    Conferència11th Annual Genetic and Evolutionary Computation Conference, GECCO-2009
    País/TerritoriCanada
    CiutatMontreal, QC
    Període8/07/0912/07/09

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