• Title of article

    Outlier-resistant L 1 orthogonal regression via the reformulation- linearization technique

  • Author/Authors

    brooks, j.p. department of statistical sciences and operations research,virginia commonwealth university,1015 floyd avenue,richmond, United States , boone, e.l. department of statistical sciences and operations research,virginia commonwealth university,1015 floyd avenue,richmond, United States

  • Abstract
    Assessing the linear relationship between a set of continuous predictors and a continuous response is a well-studied problem in statistics and data mining. L 2 -based methods such as ordinary least squares and orthogonal regression can be used to determine this relationship. However,both of these methods become impaired when influential values are present. This problem becomes compounded when outliers confound standard diagnostics. This work proposes an L 1 -norm orthogonal regression method (L 1 OR) formulated as a nonconvex optimization problem. Solution strategies for finding globally optimal solutions are presented. Simulation studies are conducted to assess the resistance of the method to outliers and the consistency of the method. The method is also applied to real-world data arising from an environmental science application. © 2011 J. Paul Brooks and Edward L. Boone.
  • Journal title
    Advances in operations research
  • Journal title
    Advances in operations research
  • Record number

    2628841