• Title of article

    Encoding dissimilarity data for statistical model building

  • Author/Authors

    Wahba، نويسنده , , Grace، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2010
  • Pages
    17
  • From page
    3580
  • To page
    3596
  • Abstract
    We summarize, review and comment upon three papers which discuss the use of discrete, noisy, incomplete, scattered pairwise dissimilarity data in statistical model building. Convex cone optimization codes are used to embed the objects into a Euclidean space which respects the dissimilarity information while controlling the dimension of the space. A “newbie” algorithm is provided for embedding new objects into this space. This allows the dissimilarity information to be incorporated into a smoothing spline ANOVA penalized likelihood model, a support vector machine, or any model that will admit reproducing kernel Hilbert space components, for nonparametric regression, supervised learning, or semisupervised learning. Future work and open questions are discussed. The papers are: , F., Keles, S., Wright, S., Wahba, G., 2005a. A framework for kernel regularization with application to protein clustering. Proc. Natl. Acad. Sci. 102, 12332–12337. rrada Bravo, G., Wahba, G., Lee, K., Klein, B., Klein, R., Iyengar, S., 2009. Examining the relative influence of familial, genetic and environmental covariate information in flexible risk models. Proc. Natl. Acad. Sci. 106, 8128–8133. , F., Lin, Y., Wahba, G., 2005b. Robust manifold unfolding with kernel regularization. Technical Report 1008, Department of Statistics, University of Wisconsin-Madison.
  • Keywords
    Dissimilarity data , reproducing kernel Hilbert spaces , Regularized kernel estimation , Regularization manifold unfolding , Penalized likelihood , radial basis functions , Support Vector Machines
  • Journal title
    Journal of Statistical Planning and Inference
  • Serial Year
    2010
  • Journal title
    Journal of Statistical Planning and Inference
  • Record number

    2221008