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Application of the Parametric Bootstrap to Models that Incorporate a Singular Value Decomposition

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  • Luis Milan
  • Joe Whittaker

Abstract

Simulation is a standard technique for investigating the sampling distribution of parameter estimators. The bootstrap is a distribution‐free method of assessing sampling variability based on resampling from the empirical distribution; the parametric bootstrap resamples from a fitted parametric model. However, if the parameters of the model are constrained, and the application of these constraints is a function of the realized sample, then the resampling distribution obtained from the parametric bootstrap may become badly biased and overdispersed. Here we discuss such problems in the context of estimating parameters from a bilinear model that incorporates the singular value decomposition (SVD) and in which the parameters are identified by the standard orthogonality relationships of the SVD. Possible effects of the SVD parameter identification are arbitrary changes in the sign of singular vectors, inversion of the order of singular values and rotation of the plotted co‐ordinates. This paper proposes inverse transformation or ‘filtering’ techniques to avoid these problems. The ideas are illustrated by assessing the variability of the location of points in a principal co‐ordinates diagram and in the marginal sampling distribution of singular values. An application to the analysis of a biological data set is described. In the discussion it is pointed out that several exploratory multivariate methods may benefit by using resampling with filtering.

Suggested Citation

  • Luis Milan & Joe Whittaker, 1995. "Application of the Parametric Bootstrap to Models that Incorporate a Singular Value Decomposition," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 44(1), pages 31-49, March.
  • Handle: RePEc:bla:jorssc:v:44:y:1995:i:1:p:31-49
    DOI: 10.2307/2986193
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    Cited by:

    1. Peres-Neto, Pedro R. & Jackson, Donald A. & Somers, Keith M., 2005. "How many principal components? stopping rules for determining the number of non-trivial axes revisited," Computational Statistics & Data Analysis, Elsevier, vol. 49(4), pages 974-997, June.
    2. Joost Ginkel & Pieter Kroonenberg, 2014. "Using Generalized Procrustes Analysis for Multiple Imputation in Principal Component Analysis," Journal of Classification, Springer;The Classification Society, vol. 31(2), pages 242-269, July.
    3. James Sharpe & Nick Fieller, 2016. "Uncertainty in functional principal component analysis," Journal of Applied Statistics, Taylor & Francis Journals, vol. 43(12), pages 2295-2309, September.
    4. Pierre-André Chiappori & Edoardo Ciscato & Carla Guerriero, 2020. "Analyzing Matching Patterns in Marriage: Theory and Application to Italian Data," Working Papers 2020-080, Human Capital and Economic Opportunity Working Group.
    5. Pierre-André Chiappori & Edoardo Ciscato & Carla Guerriero, 2021. "Analyzing Matching Patterns in Marriage:Theory and Application to Italian Data," CSEF Working Papers 613, Centre for Studies in Economics and Finance (CSEF), University of Naples, Italy.
    6. Miecznikowski Jeffrey C. & Gaile Daniel P. & Chen Xiwei & Tritchler David L., 2016. "Identification of consistent functional genetic modules," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 15(1), pages 1-18, March.
    7. Timmerman, Marieke E. & Ter Braak, Cajo J.F., 2008. "Bootstrap confidence intervals for principal response curves," Computational Statistics & Data Analysis, Elsevier, vol. 52(4), pages 1837-1849, January.
    8. Towe, Charles A. & Liu, Pengfei & Dang, Ruirui & Swallow, Stephen K., 2023. "Valuation of Water Quality Change in Environment and Economy Context: Ecosystem Services and Biological Conditions across Gradients of Degradation and Local Economic Interest," 2023 Annual Meeting, July 23-25, Washington D.C. 335992, Agricultural and Applied Economics Association.
    9. Aaron Fisher & Brian Caffo & Brian Schwartz & Vadim Zipunnikov, 2016. "Fast, Exact Bootstrap Principal Component Analysis for > 1 Million," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 111(514), pages 846-860, April.

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