Title of article :
Estimating and depicting the structure of a distribution of random functions
Author/Authors :
Hall، Peter نويسنده , , E.Heckman، Nancy نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
We suggest a nonparametric approach to making inference about the structure of distributions in a potentially infinite-dimensional space, for example a function space, and displaying information about that structure.It is suggested that the simplest way of presenting the structure is through modes and density ascent lines, the latter being the projections into the sample space of the curves of steepest ascent up the surface of a functional-data density. Modes are always points in the sample space, and ascent lines are always one-parameter structures, even when the sample space is determined by an infinite number of parameters. They are therefore relatively easily depicted. Our methodology is based on a functional form of an iterative datasharpening algorithm.
Keywords :
Mode , Nonparametric density estimation , cluster analysis , Functional data analysis , Bandwidth , Karhunen–Loeve expansion , Generalised Fourier expansion , Kernel methods , Line of steepest ascent , Gaussian process , Tree diagram
Journal title :
Biometrika
Journal title :
Biometrika