Revista Colombiana de Estadística ()

Global Polynomial Kernel Hazard Estimation

  • MUNIR HIABU,
  • MARÍA DOLORES MARTÍNEZ-MIRANDA,
  • JENS PERCH NIELSEN,
  • JAAP SPREEUW,
  • CARSTEN TANGGAARD,
  • ANDRÉS M. VILLEGAS

DOI
https://doi.org/10.15446/rce.v38n2.51668
Journal volume & issue
Vol. 38, no. 2
pp. 399 – 411

Abstract

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This paper introduces a new bias reducing method for kernel hazard estimation. The method is called global polynomial adjustment (GPA). It is a global correction which is applicable to any kernel hazard estimator. The estimator works well from a theoretical point of view as it asymptotically reduces bias with unchanged variance. A simulation study investigates the finite-sample properties of GPA. The method is tested on local constant and local linear estimators. From the simulation experiment we conclude that the global estimator improves the goodness-of-fit. An especially encouraging result is that the bias-correction works well for small samples, where traditional bias reduction methods have a tendency to fail.

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