PROPERTIES OF NONPARAMETRIC ESTIMATORS OF AUTOCOVARIANCE FOR STATIONARY RANDOM-FIELDS
成果类型:
Article
署名作者:
HALL, P; PATIL, P
署名单位:
Australian National University
刊物名称:
PROBABILITY THEORY AND RELATED FIELDS
ISSN/ISSBN:
0178-8051
DOI:
10.1007/BF01199899
发表日期:
1994
页码:
399-424
关键词:
covariance
摘要:
We introduce nonparametric estimators of the autocovariance of a stationary random field. One of our estimators has the property that it is itself an autocovariance. This feature enables the estimator to be used as the basis of simulation studies such as those which are necessary when constructing bootstrap confidence intervals for unknown parameters. Unlike estimators proposed recently by other authors, our own do not require assumptions such as isotropy or monotonicity. Indeed, like nonparametric function estimators considered more widely in the context of curve estimation, our approach demands only smoothness and tail conditions on the underlying curve or surface (here, the autocovariance), and moment and mixing conditions on the random field. We show that by imposing the condition that the estimator be a covariance function we actually reduce the numerical value of integrated squared error.