• Title of article

    An RKHS framework for functional data analysis

  • Author/Authors

    Kupresanin، نويسنده , , Ana and Shin، نويسنده , , Hyejin and King، نويسنده , , David and Eubank، نويسنده , , R.L.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2010
  • Pages
    11
  • From page
    3627
  • To page
    3637
  • Abstract
    Linear combinations of random variables play a crucial role in multivariate analysis. Two extension of this concept are considered for functional data and shown to coincide using the Loève–Parzen reproducing kernel Hilbert space representation of a stochastic process. This theory is then used to provide an extension of the multivariate concept of canonical correlation. A solution to the regression problem of best linear unbiased prediction is obtained from this abstract canonical correlation formulation. The classical identities of Lawley and Rao that lead to canonical factor analysis are also generalized to the functional data setting. Finally, the relationship between Fisherʹs linear discriminant analysis and canonical correlation analysis for random vectors is extended to include situations with function-valued random elements. This allows for classification using the canonical Y scores and related distance measures.
  • Keywords
    Best linear prediction , Discriminant analysis , Classification , Factor Analysis , H-valued random variable
  • Journal title
    Journal of Statistical Planning and Inference
  • Serial Year
    2010
  • Journal title
    Journal of Statistical Planning and Inference
  • Record number

    2221017