Literature DB >> 26512156

Wavelet-Based Scalar-on-Function Finite Mixture Regression Models.

Adam Ciarleglio1, R Todd Ogden2.   

Abstract

Classical finite mixture regression is useful for modeling the relationship between scalar predictors and scalar responses arising from subpopulations defined by the di ering associations between those predictors and responses. The classical finite mixture regression model is extended to incorporate functional predictors by taking a wavelet-based approach in which both the functional predictors and the component-specific coefficient functions are represented in terms of an appropriate wavelet basis. By using the wavelet representation of the model, the coefficients corresponding to the functional covariates become the predictors. In this setting, there are typically many more predictors than observations. Hence a lasso-type penalization is employed to simultaneously perform feature selection and estimation. Specification of the model is discussed and a fitting algorithm is provided. The wavelet-based approach is evaluated on synthetic data as well as applied to a real data set from a study of the relationship between cognitive ability and di usion tensor imaging measures in subjects with multiple sclerosis.

Entities:  

Keywords:  EM algorithm; Functional data analysis; Lasso; Wavelets

Year:  2014        PMID: 26512156      PMCID: PMC4620087          DOI: 10.1016/j.csda.2014.11.017

Source DB:  PubMed          Journal:  Comput Stat Data Anal        ISSN: 0167-9473            Impact factor:   1.681


  7 in total

1.  Functional mixture regression.

Authors:  Fang Yao; Yuejiao Fu; Thomas C M Lee
Journal:  Biostatistics       Date:  2010-10-27       Impact factor: 5.899

2.  Wavelet-based functional linear mixed models: an application to measurement error-corrected distributed lag models.

Authors:  Elizabeth J Malloy; Jeffrey S Morris; Sara D Adar; Helen Suh; Diane R Gold; Brent A Coull
Journal:  Biostatistics       Date:  2010-02-15       Impact factor: 5.899

3.  Wavelet-based LASSO in functional linear regression.

Authors:  Yihong Zhao; R Todd Ogden; Philip T Reiss
Journal:  J Comput Graph Stat       Date:  2012-07-01       Impact factor: 2.302

4.  Regularization Paths for Generalized Linear Models via Coordinate Descent.

Authors:  Jerome Friedman; Trevor Hastie; Rob Tibshirani
Journal:  J Stat Softw       Date:  2010       Impact factor: 6.440

5.  The PASAT performance among patients with multiple sclerosis: analyses of responding patterns using different scoring methods.

Authors:  E Rosti; P Hämäläinen; K Koivisto; L Hokkanen
Journal:  Mult Scler       Date:  2006-10       Impact factor: 6.312

6.  Longitudinal Penalized Functional Regression for Cognitive Outcomes on Neuronal Tract Measurements.

Authors:  Jeff Goldsmith; Ciprian M Crainiceanu; Brian Caffo; Daniel Reich
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2012-01-05       Impact factor: 1.864

7.  Automated vs. conventional tractography in multiple sclerosis: variability and correlation with disability.

Authors:  Daniel S Reich; Arzu Ozturk; Peter A Calabresi; Susumu Mori
Journal:  Neuroimage       Date:  2009-11-26       Impact factor: 6.556

  7 in total
  3 in total

1.  Methods for scalar-on-function regression.

Authors:  Philip T Reiss; Jeff Goldsmith; Han Lin Shang; R Todd Ogden
Journal:  Int Stat Rev       Date:  2016-02-23       Impact factor: 2.217

2.  Classification of ADNI PET Images via Regularized 3D Functional Data Analysis.

Authors:  Xuejing Wang; Bin Nan; Ji Zhu; Robert Koeppe; Kirk Frey
Journal:  Biostat Epidemiol       Date:  2017-03-13

3.  Matrix decomposition for modeling lesion development processes in multiple sclerosis.

Authors:  Menghan Hu; Ciprian Crainiceanu; Matthew K Schindler; Blake Dewey; Daniel S Reich; Russell T Shinohara; Ani Eloyan
Journal:  Biostatistics       Date:  2022-01-13       Impact factor: 5.279

  3 in total

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