Adaptive lifting for nonparametric regression

Nunes, Matthew A. and Knight, Marina I. and Nason, Guy P. (2006) Adaptive lifting for nonparametric regression. Statistics and Computing, 16 (2). pp. 143-159. ISSN 0960-3174

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Abstract

Many wavelet shrinkage methods assume that the data are observed on an equally spaced grid of length of the form 2(J) for some J. These methods require serious modification or preprocessed data to cope with irregularly spaced data. The lifting scheme is a recent mathematical innovation that obtains a multiscale analysis for irregularly spaced data. A key lifting component is the "predict" step where a prediction of a data point is made. The residual from the prediction is stored and can be thought of as a wavelet coefficient. This article exploits the flexibility of lifting by adaptively choosing the kind of prediction according to a criterion. In this way the smoothness of the underlying 'wavelet' can be adapted to the local properties of the function. Multiple observations at a point can readily be handled by lifting through a suitable choice of prediction. We adapt existing shrinkage rules to work with our adaptive lifting methods. We use simulation to demonstrate the improved sparsity of our techniques and improved regression performance when compared to both wavelet and non-wavelet methods suitable for irregular data. We also exhibit the benefits of our adaptive lifting on the real inductance plethysmography and motorcycle data.

Item Type:
Journal Article
Journal or Publication Title:
Statistics and Computing
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1800/1804
Subjects:
?? CURVE ESTIMATIONLIFTINGNONPARAMETRIC REGRESSIONWAVELETSWAVELET SHRINKAGESMOOTHNESSTRANSFORMSSCHEMESSAMPLESDESIGNCOMPUTATIONAL THEORY AND MATHEMATICSTHEORETICAL COMPUTER SCIENCESTATISTICS AND PROBABILITYSTATISTICS, PROBABILITY AND UNCERTAINTY ??
ID Code:
71245
Deposited By:
Deposited On:
14 Oct 2014 16:01
Refereed?:
Yes
Published?:
Published
Last Modified:
18 Sep 2023 00:49