Geometric programming

A geometric program (GP) is an optimization problem of the form

Minimize subject to
where are posynomials and are monomials.

In the context of geometric programming (unlike all other disciplines), a monomial is defined as a function defined as

where and .

GPs have numerous application, such as components sizing in IC design[1] and parameter estimation via logistic regression in statistics. The maximum likelihood estimator in logistic regression is a GP.

Convex form

Geometric programs are not (in general) convex optimization problems, but they can be transformed to convex problems by a change of variables and a transformation of the objective and constraint functions. In particular, defining , the monomial , where . Similarly, if is the posynomial

then , where and . After the change of variables, a posynomial becomes a sum of exponentials of affine functions.

See also

Footnotes

References

  • Richard J. Duffin; Elmor L. Peterson; Clarence Zener (1967). Geometric Programming. John Wiley and Sons. p. 278. ISBN 0-471-22370-0. 

External links