• DocumentCode
    3426155
  • Title

    Ensemble member selection using multi-objective optimization

  • Author

    Löfström, Tuve ; Johansson, Ulf ; Boström, Henrik

  • Author_Institution
    Sch. of Bus. & Inf., Univ. of Boras, Boras
  • fYear
    2009
  • fDate
    March 30 2009-April 2 2009
  • Firstpage
    245
  • Lastpage
    251
  • Abstract
    Both theory and a wealth of empirical studies have established that ensembles are more accurate than single predictive models. Unfortunately, the problem of how to maximize ensemble accuracy is, especially for classification, far from solved. In essence, the key problem is to find a suitable criterion, typically based on training or selection set performance, highly correlated with ensemble accuracy on novel data. Several studies have, however, shown that it is difficult to come up with a single measure, such as ensemble or base classifier selection set accuracy, or some measure based on diversity, that is a good general predictor for ensemble test accuracy. This paper presents a novel technique that for each learning task searches for the most effective combination of given atomic measures, by means of a genetic algorithm. Ensembles built from either neural networks or random forests were empirically evaluated on 30 UCI datasets. The experimental results show that when using the generated combined optimization criteria to rank candidate ensembles, a higher test set accuracy for the top ranked ensemble was achieved, compared to using ensemble accuracy on selection data alone. Furthermore, when creating ensembles from a pool of neural networks, the use of the generated combined criteria was shown to generally outperform the use of estimated ensemble accuracy as the single optimization criterion.
  • Keywords
    genetic algorithms; neural nets; classifier selection set accuracy; ensemble member selection; genetic algorithm; multi-objective optimization; neural networks; Atomic measurements; Difference equations; Diversity reception; Genetic algorithms; Informatics; Neural networks; Optimization methods; Predictive models; Testing; Weight measurement;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computational Intelligence and Data Mining, 2009. CIDM '09. IEEE Symposium on
  • Conference_Location
    Nashville, TN
  • Print_ISBN
    978-1-4244-2765-9
  • Type

    conf

  • DOI
    10.1109/CIDM.2009.4938656
  • Filename
    4938656