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Original Articles

Computing maximum likelihood estimators of a log-concave density function

Pages 561-574 | Published online: 01 Aug 2007
 

Abstract

We consider the problem of estimating a density function that is assumed to be log-concave. This semi-parametric model includes many well-known parametric classes; such as Normal, Gamma, Laplace, Logistic, Beta or Extreme value distributions, for specific parameter ranges. It is known that the maximum likelihood estimator for the log-density is always a piecewise linear function with at most as many knots as observations, but typically much less. We show that this property can be exploited to design a linearly constrained optimization problem whose iteratively calculated solution yields the estimator. We compare several standard and one recently proposed algorithm regarding their performance on this problem.

Additional information

Notes on contributors

Kaspar Rufibach

Email: [email protected]

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