• Title of article

    Clustering and classification based on the L1 data depth

  • Author/Authors

    Jِrnsten، نويسنده , , Rebecka، نويسنده ,

  • Issue Information
    دوفصلنامه با شماره پیاپی سال 2004
  • Pages
    23
  • From page
    67
  • To page
    89
  • Abstract
    Clustering and classification are important tasks for the analysis of microarray gene expression data. Classification of tissue samples can be a valuable diagnostic tool for diseases such as cancer. Clustering samples or experiments may lead to the discovery of subclasses of diseases. Clustering genes can help identify groups of genes that respond similarly to a set of experimental conditions. We also need validation tools for clustering and classification. Here, we focus on the identification of outliers—units that may have been misallocated, or mislabeled, or are not representative of the classes or clusters. sent two new methods: DDclust and DDclass, for clustering and classification. These non-parametric methods are based on the intuitively simple concept of data depth. We apply the methods to several gene expression and simulated data sets. We also discuss a convenient visualization and validation tool—the relative data depth plot.
  • Keywords
    Clustering , Classification , Relative data depth , data depth
  • Journal title
    Journal of Multivariate Analysis
  • Serial Year
    2004
  • Journal title
    Journal of Multivariate Analysis
  • Record number

    1557984