| Literature DB >> 24976675 |
Mian Huang1, Runze Li2, Hansheng Wang3, Weixin Yao4.
Abstract
When the functional data are not homogeneous, e.g., there exist multiple classes of functional curves in the dataset, traditional estimation methods may fail. In this paper, we propose a new estimation procedure for the Mixture of Gaussian Processes, to incorporate both functional and inhomogeneous properties of the data. Our method can be viewed as a natural extension of high-dimensional normal mixtures. However, the key difference is that smoothed structures are imposed for both the mean and covariance functions. The model is shown to be identifiable, and can be estimated efficiently by a combination of the ideas from EM algorithm, kernel regression, and functional principal component analysis. Our methodology is empirically justified by Monte Carlo simulations and illustrated by an analysis of a supermarket dataset.Entities:
Keywords: EM algorithm; Functional principal component analysis; Gaussian process; Identifiability; Kernel regression
Year: 2014 PMID: 24976675 PMCID: PMC4068740 DOI: 10.1080/07350015.2013.868084
Source DB: PubMed Journal: J Bus Econ Stat ISSN: 0735-0015 Impact factor: 6.565