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MAT 540 Week 11 Final Exam
1. Which of the following could be a linear programming objective function? (Points : 5)
Z = 1A + 2BC + 3D
Z = 1A + 2B + 3C + 4D
Z = 1A + 2B / C + 3D
Z = 1A + 2B2 + 3D
all of the above
2. Which of the following could not be a linear programming problem constraint? (Points : 5)
1A + 2B
1A + 2B = 3
1A + 2B LTOREQ 3
1A + 2B GTOREQ 3
3. Types of integer programming models are _____________. (Points : 5)
total
0 - 1
mixed
all of the above
4. The production manager for Beer etc. produces 2 kinds of beer: light (L) and dark (D). Two resources
used to produce beer are malt and wheat. He can obtain at most 4800 oz of malt per week and at most
3200 oz of wheat per week respectively. Each bottle of light beer requires 12 oz of malt and 4 oz of
wheat, while a bottle of dark beer uses 8 oz of malt and 8 oz of wheat. Profits for light beer are $2 per
bottle, and profits for dark beer are $1 per bottle. If the production manager decides to produce of 0
bottles of light beer and 400 bottles of dark beer, it will result in slack of (Points : 5)
malt only
wheat only
both malt and wheat
neither malt nor wheat
5. The reduced cost (shadow price) for a positive decision variable is 0.
True
False
6. Decision variables (Points : 5)
measure the objective function
measure how much or how many items to produce, purchase, hire, etc.
always exist for each constraint
measure the values of each constrain
7. A plant manager is attempting to determine the production schedule of various products to maximize
profit. Assume that a machine hour constraint is binding. If the original amount of machine hours
available is 200 minutes., and the range of feasibility is from 130 minutes to 340 minutes, providing two
additional machine hours will result in the: (Points : 5)
same product mix, different total profit
different product mix, same total profit as before
same product mix, same total profit
different product mix, different total profit
8. Decision models are mathematical symbols representing levels of activity.
True
False
9. The integer programming model for a transportation problem has constraints for supply at each
source and demand at each destination.
True
False
10. In a transportation problem, items are allocated from sources to destinations (Points : 5)
at a maximum cost
at a minimum cost
at a minimum profit
at a minimum revenue
11. In a media selection problem, the estimated number of customers reached by a given media would
generally be specified in the _________________. Even if these media exposure estimates are correct,
using media exposure as a surrogate does not lead to maximization of ______________. (Points : 5)
problem constraints, sales
problem constraints, profits
objective function, profits
problem output, marginal revenue
problem statement, revenue
12. ____________ solutions are ones that satisfy all the constraints simultaneously. (Points : 5)
alternate
feasible
infeasible
optimal
unbounded
13. In a linear programming problem, a valid objective function can be represented as (Points : 5)
Max Z = 5xy
Max Z 5x2 + 2y2
Max 3x + 3y + 1/3z
Min (x1 + x2) / x3
14. The standard form for the computer solution of a linear programming problem requires all variables
to the right and all numerical values to the left of the inequality or equality sign
True
False
15. Constraints representing fractional relationships such as the production quantity of product 1 must
be at least twice as much as the production quantity of products 2, 3 and 4 combined cannot be input
into computer software packages because the left side of the inequality does not consist of consists of
pure numbers.
True
False
16. In a balanced transportation model where supply equals demand, (Points : 5)
all constraints are equalities
none of the constraints are equalities
all constraints are inequalities
all constraints are inequalities
17. The objective function is a linear relationship reflecting the objective of an operation.
True
False
18. The owner of Chips etc. produces 2 kinds of chips: Lime (L) and Vinegar (V). He has a limited amount
of the 3 ingredients used to produce these chips available for his next production run: 4800 ounces of
salt, 9600 ounces of flour, and 2000 ounces of herbs. A bag of Lime chips requires 2 ounces of salt, 6
ounces of flour, and 1 ounce of herbs to produce; while a bag of Vinegar chips requires 3 ounces of salt,
8 ounces of flour, and 2 ounces of herbs. Profits for a bag of Lime chips are $0.40, and for a bag of
Vinegar chips $0.50. Which of the following is not a feasible production combination? (Points : 5)
0L and 0V
0L and 1000V
1000L and 0V
0L and 1200V
19. The linear programming model for a transportation problem has constraints for supply at each
source and demand at each destination.
True
False
20. For a maximization problem, assume that a constraint is binding. If the original amount of a resource
is 4 lbs., and the range of feasibility (sensitivity range) for this constraint is from
3 lbs. to 6 lbs., increasing the amount of this resource by 1 lb. will result in the: (Points : 5)
same product mix, different total profit
different product mix, same total profit as before
same product mix, same total profit
different product mix, different total profit
21. In a total integer model, all decision variables have integer solution values.
True
False
22. Linear programming is a model consisting of linear relationships representing a firm's decisions given
an objective and resource constraints.
(Points : 5)
True
False
23. When using linear programming model to solve the "diet" problem, the objective is generally to
maximize profit.
True
False
24. In a balanced transportation model where supply equals demand, all constraints are equalities.
True
False
25. In a transportation problem, items are allocated from sources to destinations at a minimum cost.
True
False
26. Mallory Furniture buys 2 products for resale: big shelves (B) and medium shelves (M). Each big shelf
costs $500 and requires 100 cubic feet of storage space, and each medium shelf costs $300 and requires
90 cubic feet of storage space. The company has $75000 to invest in shelves this week, and the
warehouse has 18000 cubic feet available for storage. Profit for each big shelf is $300 and for each
medium shelf is $150. Which of the following is not a feasible purchase combination? (Points : 5)
0 big shelves and 200 medium shelves
0 big shelves and 0 medium shelves
150 big shelves and 0 medium shelves
100 big shelves and 100 medium shelves
27. In a mixed integer model, some solution values for decision variables are integer and others can be
non-integer.
True
False
28. In a 0 - 1 integer model, the solution values of the decision variables are 0 or 1.
True
False
29. Determining the production quantities of different products manufactured by a company based on
resource constraints is a product mix linear programming problem.
True
False
30. The dietician for the local hospital is trying to control the calorie intake of the heart surgery patients.
Tonight's dinner menu could consist of the following food items: chicken, lasagna, pudding, salad,
mashed potatoes and jello. The calories per serving for each of these items are as follows: chicken (600),
lasagna (700), pudding (300), salad (200), mashed potatoes with gravy (400) and jello (200). If the
maximum calorie intake has to be limited to 1200 calories. What is the dinner menu that would result in
the highest calorie in take without going over the total calorie limit of 1200. (Points : 5)
chicken, mashed potatoes and gravy, jello and salad
lasagna, mashed potatoes and gravy, and jello
chicken, mashed potatoes and gravy, and pudding
lasagna, mashed potatoes and gravy, and salad
chicken, mashed potatoes and gravy, and salad
31. When the right-hand sides of 2 constraints are both increased by 1 unit, the value of the objective
function will be adjusted by the sum of the constraints' prices.
True
False
32. The transportation method assumes that (Points : 5)
the number of rows is equal to the number of columns
there must be at least 2 rows and at least 2 columns
1 and 2
the product of rows minus 1 and columns minus 1 should not be less than the number of completed
cells
33. A constraint is a linear relationship representing a restriction on decision making.
True
False
34. When formulating a linear programming model on a spreadsheet, the measure of performance is
located in the target cell.
True
False
35. The linear programming model for a transportation problem has constraints for supply at each
________ and _________ at each destination.
destination / source
source / destination
demand / source
source / demand
36. The 3 types of integer programming models are total, 0 - 1, and mixed.
True
False
37. In using rounding of a linear programming model to obtain an integer solution, the solution is
always optimal and feasible
sometimes optimal and feasible
always optimal
always feasible
never optimal and feasible
38. If we use Excel to solve a linear programming problem instead of QM for Windows,
then the data input requirements are likely to be much less tedious and time consuming.
True
False
39. In a _______ integer model, some solution values for decision variables are integer and others can
be non-integer. (Points : 5)
total
0 - 1
mixed
all of the above
40. Which of the following is not an integer linear programming problem? (Points : 5)
pure integer
mixed integer
0-1integer
continuous

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Mat 540 wee k 11 final exam

  • 1. Click Here For The Answers MAT 540 Week 11 Final Exam 1. Which of the following could be a linear programming objective function? (Points : 5) Z = 1A + 2BC + 3D Z = 1A + 2B + 3C + 4D Z = 1A + 2B / C + 3D Z = 1A + 2B2 + 3D all of the above 2. Which of the following could not be a linear programming problem constraint? (Points : 5) 1A + 2B 1A + 2B = 3 1A + 2B LTOREQ 3 1A + 2B GTOREQ 3 3. Types of integer programming models are _____________. (Points : 5) total 0 - 1 mixed all of the above 4. The production manager for Beer etc. produces 2 kinds of beer: light (L) and dark (D). Two resources used to produce beer are malt and wheat. He can obtain at most 4800 oz of malt per week and at most 3200 oz of wheat per week respectively. Each bottle of light beer requires 12 oz of malt and 4 oz of wheat, while a bottle of dark beer uses 8 oz of malt and 8 oz of wheat. Profits for light beer are $2 per bottle, and profits for dark beer are $1 per bottle. If the production manager decides to produce of 0 bottles of light beer and 400 bottles of dark beer, it will result in slack of (Points : 5) malt only wheat only both malt and wheat
  • 2. neither malt nor wheat 5. The reduced cost (shadow price) for a positive decision variable is 0. True False 6. Decision variables (Points : 5) measure the objective function measure how much or how many items to produce, purchase, hire, etc. always exist for each constraint measure the values of each constrain 7. A plant manager is attempting to determine the production schedule of various products to maximize profit. Assume that a machine hour constraint is binding. If the original amount of machine hours available is 200 minutes., and the range of feasibility is from 130 minutes to 340 minutes, providing two additional machine hours will result in the: (Points : 5) same product mix, different total profit different product mix, same total profit as before same product mix, same total profit different product mix, different total profit 8. Decision models are mathematical symbols representing levels of activity. True False 9. The integer programming model for a transportation problem has constraints for supply at each source and demand at each destination. True
  • 3. False 10. In a transportation problem, items are allocated from sources to destinations (Points : 5) at a maximum cost at a minimum cost at a minimum profit at a minimum revenue 11. In a media selection problem, the estimated number of customers reached by a given media would generally be specified in the _________________. Even if these media exposure estimates are correct, using media exposure as a surrogate does not lead to maximization of ______________. (Points : 5) problem constraints, sales problem constraints, profits objective function, profits problem output, marginal revenue problem statement, revenue 12. ____________ solutions are ones that satisfy all the constraints simultaneously. (Points : 5) alternate feasible infeasible optimal unbounded 13. In a linear programming problem, a valid objective function can be represented as (Points : 5) Max Z = 5xy Max Z 5x2 + 2y2 Max 3x + 3y + 1/3z
  • 4. Min (x1 + x2) / x3 14. The standard form for the computer solution of a linear programming problem requires all variables to the right and all numerical values to the left of the inequality or equality sign True False 15. Constraints representing fractional relationships such as the production quantity of product 1 must be at least twice as much as the production quantity of products 2, 3 and 4 combined cannot be input into computer software packages because the left side of the inequality does not consist of consists of pure numbers. True False 16. In a balanced transportation model where supply equals demand, (Points : 5) all constraints are equalities none of the constraints are equalities all constraints are inequalities all constraints are inequalities 17. The objective function is a linear relationship reflecting the objective of an operation. True False 18. The owner of Chips etc. produces 2 kinds of chips: Lime (L) and Vinegar (V). He has a limited amount of the 3 ingredients used to produce these chips available for his next production run: 4800 ounces of salt, 9600 ounces of flour, and 2000 ounces of herbs. A bag of Lime chips requires 2 ounces of salt, 6 ounces of flour, and 1 ounce of herbs to produce; while a bag of Vinegar chips requires 3 ounces of salt, 8 ounces of flour, and 2 ounces of herbs. Profits for a bag of Lime chips are $0.40, and for a bag of Vinegar chips $0.50. Which of the following is not a feasible production combination? (Points : 5) 0L and 0V
  • 5. 0L and 1000V 1000L and 0V 0L and 1200V 19. The linear programming model for a transportation problem has constraints for supply at each source and demand at each destination. True False 20. For a maximization problem, assume that a constraint is binding. If the original amount of a resource is 4 lbs., and the range of feasibility (sensitivity range) for this constraint is from 3 lbs. to 6 lbs., increasing the amount of this resource by 1 lb. will result in the: (Points : 5) same product mix, different total profit different product mix, same total profit as before same product mix, same total profit different product mix, different total profit 21. In a total integer model, all decision variables have integer solution values. True False 22. Linear programming is a model consisting of linear relationships representing a firm's decisions given an objective and resource constraints. (Points : 5) True False 23. When using linear programming model to solve the "diet" problem, the objective is generally to maximize profit. True
  • 6. False 24. In a balanced transportation model where supply equals demand, all constraints are equalities. True False 25. In a transportation problem, items are allocated from sources to destinations at a minimum cost. True False 26. Mallory Furniture buys 2 products for resale: big shelves (B) and medium shelves (M). Each big shelf costs $500 and requires 100 cubic feet of storage space, and each medium shelf costs $300 and requires 90 cubic feet of storage space. The company has $75000 to invest in shelves this week, and the warehouse has 18000 cubic feet available for storage. Profit for each big shelf is $300 and for each medium shelf is $150. Which of the following is not a feasible purchase combination? (Points : 5) 0 big shelves and 200 medium shelves 0 big shelves and 0 medium shelves 150 big shelves and 0 medium shelves 100 big shelves and 100 medium shelves 27. In a mixed integer model, some solution values for decision variables are integer and others can be non-integer. True False 28. In a 0 - 1 integer model, the solution values of the decision variables are 0 or 1. True False 29. Determining the production quantities of different products manufactured by a company based on resource constraints is a product mix linear programming problem. True False 30. The dietician for the local hospital is trying to control the calorie intake of the heart surgery patients.
  • 7. Tonight's dinner menu could consist of the following food items: chicken, lasagna, pudding, salad, mashed potatoes and jello. The calories per serving for each of these items are as follows: chicken (600), lasagna (700), pudding (300), salad (200), mashed potatoes with gravy (400) and jello (200). If the maximum calorie intake has to be limited to 1200 calories. What is the dinner menu that would result in the highest calorie in take without going over the total calorie limit of 1200. (Points : 5) chicken, mashed potatoes and gravy, jello and salad lasagna, mashed potatoes and gravy, and jello chicken, mashed potatoes and gravy, and pudding lasagna, mashed potatoes and gravy, and salad chicken, mashed potatoes and gravy, and salad 31. When the right-hand sides of 2 constraints are both increased by 1 unit, the value of the objective function will be adjusted by the sum of the constraints' prices. True False 32. The transportation method assumes that (Points : 5) the number of rows is equal to the number of columns there must be at least 2 rows and at least 2 columns 1 and 2 the product of rows minus 1 and columns minus 1 should not be less than the number of completed cells 33. A constraint is a linear relationship representing a restriction on decision making. True False 34. When formulating a linear programming model on a spreadsheet, the measure of performance is located in the target cell.
  • 8. True False 35. The linear programming model for a transportation problem has constraints for supply at each ________ and _________ at each destination. destination / source source / destination demand / source source / demand 36. The 3 types of integer programming models are total, 0 - 1, and mixed. True False 37. In using rounding of a linear programming model to obtain an integer solution, the solution is always optimal and feasible sometimes optimal and feasible always optimal always feasible never optimal and feasible 38. If we use Excel to solve a linear programming problem instead of QM for Windows, then the data input requirements are likely to be much less tedious and time consuming. True False 39. In a _______ integer model, some solution values for decision variables are integer and others can be non-integer. (Points : 5) total 0 - 1 mixed all of the above
  • 9. 40. Which of the following is not an integer linear programming problem? (Points : 5) pure integer mixed integer 0-1integer continuous