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Regression for non-Euclidean data using distance matrices

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  • Julian J. Faraway

Abstract

Regression methods for common data types such as measured, count and categorical variables are well understood but increasingly statisticians need ways to model relationships between variable types such as shapes, curves, trees, correlation matrices and images that do not fit into the standard framework. Data types that lie in metric spaces but not in vector spaces are difficult to use within the usual regression setting, either as the response and/or a predictor. We represent the information in these variables using distance matrices which requires only the specification of a distance function. A low-dimensional representation of such distance matrices can be obtained using methods such as multidimensional scaling. Once these variables have been represented as scores, an internal model linking the predictors and the responses can be developed using standard methods. We call scoring as the transformation from a new observation to a score, whereas backscoring is a method to represent a score as an observation in the data space. Both methods are essential for prediction and explanation. We illustrate the methodology for shape data, unregistered curve data and correlation matrices using motion capture data from an experiment to study the motion of children with cleft lip.

Suggested Citation

  • Julian J. Faraway, 2014. "Regression for non-Euclidean data using distance matrices," Journal of Applied Statistics, Taylor & Francis Journals, vol. 41(11), pages 2342-2357, November.
  • Handle: RePEc:taf:japsta:v:41:y:2014:i:11:p:2342-2357
    DOI: 10.1080/02664763.2014.909794
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    References listed on IDEAS

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    1. Michael J. Daniels, 2002. "Bayesian analysis of covariance matrices and dynamic models for longitudinal data," Biometrika, Biometrika Trust, vol. 89(3), pages 553-566, August.
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