Linear Optimization Flashcards
Alternative optimal solutions
The case in which more than one solution provides the optimal value for the objective function.
binding constraint
A constraint that holds as an equality at the optimal solution.
Constraints
Restrictions that limit the settings of the decision variables.
Decision variable
A controllable input for a linear programming model.
Extreme point
Graphically speaking, these are the feasible solution points occurring at the vertices, or “corners,” of the feasible region. With two-variable problems, these points are determined by the intersection of the constraint lines.
Feasible region
the set of all feasible solutions
Feasible solution
A solution that satisfies all the constraints simultaneously.
Infeasibility
The situation in which no solution to the linear programming problem satisfies all the constraints.
Linear function
A mathematical function in which each variable appears in a separate term and is raised to the first power.
Linear program
A mathematical model with a linear objective function, a set of linear constraints, and nonnegative variables.
Mathematical Model
A representation of a problem in which the objective and all constraint conditions are described by mathematical expressions.
Nonnegativity constraints
A set of constraints that requires all variables to be nonnegative.
Objective function
The function being maximized or minimized in Linear Programming
Objective function coefficient allowable increase (decrease)
The allowable increase/decrease of an objective function coefficient is the amount the coefficient may increase (decrease) without causing any change in the values of the decision variables in the optimal solution. The allowable increase/decrease for the objective function coefficients can be used to calculate the range of optimality.
Problem formulation or modeling
process of translating a verbal statement of a problem into a mathematical model