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Lagrange Multipliers

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Title: Lagrange Multipliers


1
Lagrange Multipliers
2
Lagrange Multipliers
  • The method of Lagrange multipliers gives a set of
    necessary conditions to identify optimal points
    of equality constrained optimization problems.
  • This is done by converting a constrained problem
    to an equivalent unconstrained problem with the
    help of certain unspecified parameters known as
    Lagrange multipliers.
  • The classical problem formulation
  • minimize f(x1, x2, ..., xn)
  • Subject to h1(x1, x2, ..., xn) 0
  • can be converted to
  • minimize L(x, l) f(x) - l h1(x)
  • where
  • L(x, v) is the Lagrangian function
  • l is an unspecified positive or negative constant
    called the Lagrangian Multiplier

3
Finding an Optimum using Lagrange Multipliers
  • New problem is minimize L(x, l) f(x) - l
    h1(x)
  • Suppose that we fix l l and the unconstrained
    minimum of L(x l) occurs at x x and x
    satisfies h1(x) 0, then x minimizes f(x)
    subject to h1(x) 0.
  • Trick is to find appropriate value for Lagrangian
    multiplier l.
  • This can be done by treating l as a variable,
    finding the unconstrained minimum of L(x, l) and
    adjusting l so that h1(x) 0 is satisfied.

4
Method
  • Original problem is rewritten as minimize
    L(x, l) f(x) - l h1(x)
  • Take derivatives of L(x, l) with respect to xi
    and set them equal to zero.
  • If there are n variables (i.e., x1, ..., xn) then
    you will get n equations with n 1 unknowns
    (i.e., n variables xi and one Lagrangian
    multiplier l)
  • Express all xi in terms of Langrangian multiplier
    l
  • Plug x in terms of l in constraint h1(x) 0 and
    solve l.
  • Calculate x by using the just found value for l.
  • Note that the n derivatives and one constraint
    equation result in n1 equations for n1
    variables!
  • (See example 5.3)

5
Multiple constraints
  • The Lagrangian multiplier method can be used for
    any number of equality constraints.
  • Suppose we have a classical problem formulation
    with k equality constraints
  • minimize f(x1, x2, ..., xn)
  • Subject to h1(x1, x2, ..., xn) 0
  • ......
  • hk(x1, x2, ..., xn) 0
  • This can be converted in
  • minimize L(x, l) f(x) - lT h(x)
  • where
  • lT is the transpose vector of Lagrangian
    multpliers and has length k

6
In closing
  • Lagrangian multipliers are very useful in
    sensitivity analyses (see Section 5.3)
  • Setting the derivatives of L to zero may result
    in finding a saddle point. Additional checks are
    always useful.
  • Lagrangian multipliers require equalities. So a
    conversion of inequalities is necessary.
  • Kuhn and Tucker extended the Lagrangian theory to
    include the general classical single-objective
    nonlinear programming problem
  • minimize f(x)
  • Subject to gj(x) ? 0 for j 1, 2, ..., J
  • hk(x) 0 for k 1, 2, ..., K
  • x (x1, x2, ..., xN)
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