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Computing all roots of the likelihood equations of seemingly unrelated regressions

Published: 01 February 2006 Publication History

Abstract

Seemingly unrelated regressions are statistical regression models based on the Gaussian distribution. They are popular in econometrics but also arise in graphical modeling of multivariate dependencies. In maximum likelihood estimation, the parameters of the model are estimated by maximizing the likelihood function, which maps the parameters to the likelihood of observing the given data. By transforming this optimization problem into a polynomial optimization problem, it was recently shown that the likelihood function of a simple bivariate seemingly unrelated regressions model may have several stationary points. Thus local maxima may complicate maximum likelihood estimation. In this paper, we study several more complicated seemingly unrelated regression models, and show how all stationary points of the likelihood function can be computed using algebraic geometry.

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Information

Published In

cover image Journal of Symbolic Computation
Journal of Symbolic Computation  Volume 41, Issue 2
February, 2006
133 pages

Publisher

Academic Press, Inc.

United States

Publication History

Published: 01 February 2006

Author Tags

  1. Algebraic statistics
  2. Gröbner basis
  3. Maximum likelihood estimation
  4. Multivariate statistics
  5. Seemingly unrelated regressions

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