Volume 38, Issue 3

A Method for Bayesian Monotonic Multiple Regression

OLLI SAARELA

Department of Chronic Disease Prevention, National Institute for Health and Welfare

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ELJA ARJAS

Department of Mathematics and Statistics, University of Helsinki and National Institute for Health and Welfare

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First published: 02 December 2010
Citations: 4
Olli Saarela, Department of Chronic Disease Prevention, National Institute for Health and Welfare, P.O. Box 30 (Mannerheimintie 166), 00271 Helsinki, Finland.
E‐mail: olli.saarela@thl.fi

Abstract

Abstract. When applicable, an assumed monotonicity property of the regression function w.r.t. covariates has a strong stabilizing effect on the estimates. Because of this, other parametric or structural assumptions may not be needed at all. Although monotonic regression in one dimension is well studied, the question remains whether one can find computationally feasible generalizations to multiple dimensions. Here, we propose a non‐parametric monotonic regression model for one or more covariates and a Bayesian estimation procedure. The monotonic construction is based on marked point processes, where the random point locations and the associated marks (function levels) together form piecewise constant realizations of the regression surfaces. The actual inference is based on model‐averaged results over the realizations. The monotonicity of the construction is enforced by partial ordering constraints, which allows it to asymptotically, with increasing density of support points, approximate the family of all monotonic bounded continuous functions.

Number of times cited according to CrossRef: 4

  • Partially linear monotone methods with automatic variable selection and monotonicity direction discovery, Statistics in Medicine, 10.1002/sim.8680, 39, 25, (3549-3568), (2020).
  • Plateau: a new method for ecologically plausible climate envelopes for species distribution modelling, Methods in Ecology and Evolution, 10.1111/2041-210X.12609, 7, 12, (1489-1502), (2016).
  • Predictive Bayesian inference and dynamic treatment regimes, Biometrical Journal, 10.1002/bimj.201400153, 57, 6, (941-958), (2015).
  • Non‐parametric Bayesian Hazard Regression for Chronic Disease Risk Assessment, Scandinavian Journal of Statistics, 10.1111/sjos.12125, 42, 2, (609-626), (2014).

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