The Islamic University of Gaza Faculty of Commerce Quantitative Analysis - Prof. Dr. Samir Safi Midterm #1-15/3/2015. Name

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The Islamic University of Gaza Faculty of Commerce Quantitative Analysis - Prof. Dr. Samir Safi Midterm #1-15/3/2015 Name MULTIPLE CHOICE. Choose the one alternative that best completes the statement or answers the question. (30 Points) 1) Which of the following is not true about continuous random variables? A)They can only be integer values. B)They have an infinite set of values. C) Some may be described by uniform distributions or exponential distributions. D)The entire area under each of the curves equals 1. E) The area under each of the curves represents probabilities. 2)The number of phone calls coming into a switchboard in the next five minutes will either be 0, 1, or 2. The probabilities are the same for each of these (1/3). If X is the number of calls arriving in a five-minute time period, what is the mean of X? A)2/3 B)1 C)1/3 D)4/3 3)Which of the following is true about the expected value of perfect information? A)It is calculated as EMV minus EOL. B) It is calculated as expected value with perfect information minus maximum EMV. C) It is the amount charged for marketing research. D)It is the amount you would pay for any sample study. 1) 2) 3) A-1

4)Optimistic decision makers tend to. A) ignore bad outcomes B) magnify favorable outcomes C) discount favorable outcomes D)A and B E)B and C 5) The following is an opportunity-loss table. 4) 5) The probabilities for the states of nature A, B, and C are 0.3, 0.5, and 0.2, respectively. If a person were to use the expected opportunity loss criterion, what decision would be made? A) Alternative 1 B) Alternative 2 C) Alternative 3 D)State of Nature B E)State of Nature C 6)The number of cars passing through an intersection in the next five minutes can usually be described by the A) uniform distribution. B) Poisson distribution. C) normal distribution. D) exponential distribution. 6) A-2

7) Which of the following is not true for discrete random variables? A)They can assume only a countable number of values. B)The expected value is the weighted average of the values. C) A binomial random variable is considered discrete. D)The probability values always sum up to 1. E)The probability of each value of the random variable must be 0. 8) Which of the following characteristics is not true for the exponential distribution? A)The variance is the square of the expected value. B) It is used to describe the times between customer arrivals. C)It is used in dealing with queuing problems. D) It is also called the negative exponential distribution. E) It is discrete probability distribution. 9)Pessimistic decision makers tend to. A) discount favorable outcomes B) magnify favorable outcomes C) ignore bad outcomes D)A and B E)B and C 10) The Hurwicz criterion is also called the criterion of. A) pessimism B) realism C) optimism D) regret E) equality 11) Properties of the normal distribution include A) a continuous bell-shaped distribution. B)use in queuing. C) a discrete probability distribution. D)the random variable can assume only a finite or limited set of values. E)the number of trials is known and is either 1, 2, 3, 4, 5, etc. 7) 8) 9) 10) 11) A-3

12)The length of time that it takes the tollbooth attendant to service each driver can typically be described by the A) uniform distribution. B) normal distribution. C) Poisson distribution. D) exponential distribution. 13) The following is a payoff table giving profits for various situations. 12) 13) The probabilities for states of nature A, B, and C are 0.3, 0.5, and 0.2, respectively. If a person selected Alternative 1, what would the expected profit be? A)120 B)180 C) 133.33 D)126 14) The equally likely criterion is also called the criterion. A) Huchenmeizer B) Laplace C) LaFlore D) Hurwicz E) uncertainty 14) A-4

15) Trying various approaches and picking the one that results in the best decision is called A) sensitivity analysis. B) incomplete enumeration. C) algorithmic approximation. D) the trial-and-error method. E) complete enumeration. 16)What is the formula for the break-even point of a simple profit model? A)Fixed Cost / (Selling Price Per Unit Variable Cost Per Unit) B)Fixed Cost / Variable Cost Per Unit C)Selling Price Per Unit (Fixed Cost / Variable Cost Per Unit) D)Fixed Cost / (Variable Cost Per Unit Selling Price Per Unit) E)(Selling Price Per Unit Variable Cost Per Unit) / Fixed Cost 17)Queuing Theory makes use of the A) normal probability distribution. B) uniform probability distribution. C) Poisson probability distribution. D) binomial probability distribution. 15) 16) 17) A-5

18)The following is a payoff table. 18) What decision should be made based on the minimax regret criterion? A) Alternative 1 B) Alternative 2 C) Alternative 3 D)State of Nature C E)Does not matter 19)Which of the following is not one of the steps considered in the "Six Steps in Decision Making"? A) Evaluate the success of the decision. B) List the possible alternatives. C) List the payoff or profit of each combination of alternatives and outcomes. D) Clearly define the problem at hand 20) Which of the following characteristics is true for a normal probability distribution? A) It is symmetrical. B)The area under the curve is 1. C) Sixty-eight percent of the area under the curve lies within one standard deviation of the mean. D)Apply the model and make your decision. E)The midpoint is also the mean. F)All of the above are true. 19) 20) A-6

ESSAY. Write your answer in the space provided. 1)In a given office, the color printer breaks down with a probability of 20% in any month. A binomial process is assumed for a period of 10 months. (a) (2 Points) What is the probability that the printer breaks down exactly 2 times? (b) (2 Points) What is the probability that the printer breaks down at most 1 time? (c) (2 Points) What is the probability that the printer breaks down more than once? A-7

2)A call center receives calls from customers at a rate of 2 per min. The time between customer calls follows an exponential distribution. (a)(3 Points) What is the probability that it takes 1/3 of a minute or less between consecutive customer calls? (b) (3 Points) What is the probability that it take 1/2 of a minute or more between consecutive customer calls? A-8

3) The following payoff table provides profits based on various possible decision alternatives and various levels of demand. The probability of a low demand is 0.4, while the probability of a medium and high demand is each 0.3. (a)(2 Points) What decision would an optimist make? (b) (2 Points) What decision would a pessimist make? (c)(2 Points) What is the highest possible expected monetary value? (d) (2 Points) Calculate the expected value of perfect information for this situation. A-9

Answer Key Testname: EXAM1 2015 1)A 2)B 3)B 4)D 5)C 6)B 7)E 8)E 9)A 10)B 11)A 12)D 13)D 14)B 15)D 16)A 17)C 18)A 19)A 20)F 1)(a) P(r=2) = 0.3020 (b) P(r 1) = 0.3758 (c) P(r>1) = 0.6242 2)(a) 0.487 (b) 0.368 3)(a)Alternative 3 (b) Alternative 2 (c)alternative 1 maximum EMV = 110 (d) EVPI = 117-110 = 7 A-10