DEFINING PROBABILITY DENSITY FOR A DISTRIBUTION OF RANDOM FUNCTIONS
成果类型:
Article
署名作者:
Delaigle, Aurore; Hall, Peter
署名单位:
University of Melbourne; University of Bristol; University of California System; University of California San Diego
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/09-AOS741
发表日期:
2010
页码:
1171-1193
关键词:
principal-components
nonparametric model
scale-space
time-series
number
regression
rules
摘要:
The notion of probability density for a random function is not as straightforward as in finite-dimensional cases. While a probability density function generally does not exist for functional data, we show that it is possible to develop the notion of density when functional data are considered in the space determined by the eigenfunctions of principal component analysis. This leads to a transparent and meaningful surrogate for density defined in terms of the average value of the logarithms of the densities of the distributions of principal components for a given dimension. This density approximation is estimable readily from data. It accurately represents, in a monotone way, key features of small-ball approximations to density. Our results on estimators of the densities of principal component scores are also of independent interest; they reveal interesting shape differences that have not previously been considered. The statistical implications of these results and properties are identified and discussed, and practical ramifications are illustrated in numerical work.