Ch. 10 terms
Global optimum
a feasible solution if there are no other feasible points with a better objective function value in the entire feasible region. can either be global max or min.
Global maximum
a feasible solution if there are no other feasible points with a larger objective function value in the entire feasible region.
Global minimum
a feasible solution if there are no other feasible points with a smaller objective function value in the entire feasible region.
Local optimum
a feasible solution if there are no other feasible solutions with a better objective function value in the immediate neighborhood. can either be local max or local min.
Local Maximum
a feasible solution if there are no other feasible solutions with a larger objective function value in the immediate neighborhood
Local minimum
a feasible solution if there are no other feasible solutions with a smaller objective function value in the immediate neighborhood
concave function
a function that is bowl-shaped down
convex function
a function that is bowl-shaped up
quadratic function
a nonlinear function with term to the power two
Markowitz mean-variance portfolio model
a portfolio optimization model used to construct a portfolio that minimizes risk subject to a constraint requiring a minimum level of return
efficient frontier
a set of points defining the minimum possible risk for a set of return values
nonlinear optimization problem
an optimization problem that contains at least one nonlinear term in the objective function or a constraint
lagrangian multiplier
the shadow price for a constraint in a nonlinear problem that is the rate of change of the objective function with respect to the right hand side of a constraint
reduced gradient
value associated with a variable in a nonlinear model that is analogous to the reduced cost in a linear model