ASYMPTOTIC THEORY WITH HIERARCHICAL AUTO CORRELATION: ORNSTEIN-UHLENBECK TREE MODELS

成果类型:
Article
署名作者:
Ho, Lam Si Tung; Ane, Cecile
署名单位:
University of Wisconsin System; University of Wisconsin Madison; University of Wisconsin System; University of Wisconsin Madison
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/13-AOS1105
发表日期:
2013
页码:
957-981
关键词:
spatial prediction EVOLUTION covariance patterns mammals
摘要:
Hierarchical autocorrelation in the error term of linear models arises when sampling units are related to each other according to a tree. The residual covariance is parametrized using the tree-distance between sampling units. When observations are modeled using an Ornstein-Uhlenbeck (OU) process along the tree, the autocorrelation between two tips decreases exponentially with their tree distance. These models are most often applied in evolutionary biology, when tips represent biological species and the OU process parameters represent the strength and direction of natural selection. For these models, we show that the mean is not microergodic: no estimator can ever be consistent for this parameter and provide a lower bound for the variance of its MLE. For covariance parameters, we give a general sufficient condition ensuring microergodicity. This condition suggests that some parameters may not be estimated at the same rate as others. We show that, indeed, maximum likelihood estimators of the autocorrelation parameter converge at a slower rate than that of generally microergodic parameters. We showed this theoretically in a symmetric tree asymptotic framework and through simulations on a large real tree comprising 4507 mammal species.