• Title of article

    A classifier ensemble approach for the missing feature problem

  • Author/Authors

    Nanni، نويسنده , , Loris and Lumini، نويسنده , , Alessandra and Brahnam، نويسنده , , Sheryl، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2012
  • Pages
    14
  • From page
    37
  • To page
    50
  • Abstract
    Objectives lassification problems must deal with data that contains missing values. In such cases data imputation is critical. This paper evaluates the performance of several statistical and machine learning imputation methods, including our novel multiple imputation ensemble approach, using different datasets. als and methods l state-of-the-art approaches are compared using different datasets. Some state-of-the-art classifiers (including support vector machines and input decimated ensembles) are tested with several imputation methods. The novel approach proposed in this work is a multiple imputation method based on random subspace, where each missing value is calculated considering a different cluster of the data. We have used a fuzzy clustering approach for the clustering algorithm. s periments have shown that the proposed multiple imputation approach based on clustering and a random subspace classifier outperforms several other state-of-the-art approaches. Using the Wilcoxon signed-rank test (reject the null hypothesis, level of significance 0.05) we have shown that the proposed best approach is outperformed by the classifier trained using the original data (i.e., without missing values) only when >20% of the data are missed. Moreover, we have shown that coupling an imputation method with our cluster based imputation we outperform the base method (level of significance ∼0.05). sion ng from the assumptions that the feature set must be partially redundant and that the redundancy is distributed randomly over the feature set, we have proposed a method that works quite well even when a large percentage of the features is missing (≥30%). Our best approach is available (MATLAB code) at bias.csr.unibo.it/nanni/MI.rar.
  • Keywords
    Missing Values , imputation methods , Support vector machine , Fuzzy clustering , Equipment malfunctions , Data corruption
  • Journal title
    Artificial Intelligence In Medicine
  • Serial Year
    2012
  • Journal title
    Artificial Intelligence In Medicine
  • Record number

    1837129