QA Module 3 Test
an objective function is necessary in a maximization problem but is not required in a minimization problem
False
any linear programming problem can be solved using the graphical solution procedure
False
in some instances, an infeasible solution may be the optimum found by the corner point method
False
one of the assumptions of LP is "proportionality"
True
resources restrictions are called constraints
True
the set of solution points that satisfies all of linear programming problems constraints simultaneously is defined as the feasible region in graphical linear programming
True
typical resources of an organization include
all of the above
a constraint with zero slack or surplus is called a
binding constraint
an LP formulation typically requires finding the maximum value of an objective whole simultaneously maximizing usage of the resource constraints
false
in a linear program, the constraints must be linear, but the objective function may be nonlinear
false
a feasible solution to a linear programming problem
must satisfy all of the problems constraints simultaneously
a constraint with positive sack or surplus is called a
nonbinding constraint
the difference between the left-hand side and the right-hand side of a less-than-or-equal-to constraint is referred to as
slack
sensitivity analysis enables us to look at the effects of changing the coefficients in the objective function, one at a time
true
the shadow price is the same as the dual price in maximization problems
true