Spreadsheet Modeling & Decision Analysis: A Practical Introduction To Business Analytics, Loose-leaf Version
8th Edition
ISBN: 9781337274852
Author: Ragsdale, Cliff
Publisher: South-Western College Pub
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The treasury manager of a chain of clothing stores wants to develop a medium-term forecast. Management plans to open two new stores, and anticipates same-store sales to increase by 15%. Which of the following items can be predicted with the highest degree of certainty?
Group of answer choices
Taxes on the exercise of stock options
fixed bond interest payments
new product sales
new franchise fees
Loss exposures related to treasury management may include which of the following?
Group of answer choices
losses due to faulty investment of cash reserves
product safety recalls
litigation costs for intellectual property infringement
bank consolidation
If the weights for a moving average forecast with a span of 4 are: 0.3,0.2,0.2,0.4
Problem: Under prediction
Problem: Over prediction
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Discuss what are the benefits as a prediction tool over the moving average of exponential smoothing?
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- Play Things is developing a new Lady Gaga doll. The company has made the following assumptions: The doll will sell for a random number of years from 1 to 10. Each of these 10 possibilities is equally likely. At the beginning of year 1, the potential market for the doll is two million. The potential market grows by an average of 4% per year. The company is 95% sure that the growth in the potential market during any year will be between 2.5% and 5.5%. It uses a normal distribution to model this. The company believes its share of the potential market during year 1 will be at worst 30%, most likely 50%, and at best 60%. It uses a triangular distribution to model this. The variable cost of producing a doll during year 1 has a triangular distribution with parameters 15, 17, and 20. The current selling price is 45. Each year, the variable cost of producing the doll will increase by an amount that is triangularly distributed with parameters 2.5%, 3%, and 3.5%. You can assume that once this change is generated, it will be the same for each year. You can also assume that the company will change its selling price by the same percentage each year. The fixed cost of developing the doll (which is incurred right away, at time 0) has a triangular distribution with parameters 5 million, 7.5 million, and 12 million. Right now there is one competitor in the market. During each year that begins with four or fewer competitors, there is a 25% chance that a new competitor will enter the market. Year t sales (for t 1) are determined as follows. Suppose that at the end of year t 1, n competitors are present (including Play Things). Then during year t, a fraction 0.9 0.1n of the company's loyal customers (last year's purchasers) will buy a doll from Play Things this year, and a fraction 0.2 0.04n of customers currently in the market ho did not purchase a doll last year will purchase a doll from Play Things this year. Adding these two provides the mean sales for this year. Then the actual sales this year is normally distributed with this mean and standard deviation equal to 7.5% of the mean. a. Use @RISK to estimate the expected NPV of this project. b. Use the percentiles in @ RISKs output to find an interval such that you are 95% certain that the companys actual NPV will be within this interval.arrow_forwardThe Baker Company wants to develop a budget to predict how overhead costs vary with activity levels. Management is trying to decide whether direct labor hours (DLH) or units produced is the better measure of activity for the firm. Monthly data for the preceding 24 months appear in the file P13_40.xlsx. Use regression analysis to determine which measure, DLH or Units (or both), should be used for the budget. How would the regression equation be used to obtain the budget for the firms overhead costs?arrow_forwardThe owner of a restaurant in Bloomington, Indiana, has recorded sales data for the past 19 years. He has also recorded data on potentially relevant variables. The data are listed in the file P13_17.xlsx. a. Estimate a simple regression equation involving annual sales (the dependent variable) and the size of the population residing within 10 miles of the restaurant (the explanatory variable). Interpret R-square for this regression. b. Add another explanatory variableannual advertising expendituresto the regression equation in part a. Estimate and interpret this expanded equation. How does the R-square value for this multiple regression equation compare to that of the simple regression equation estimated in part a? Explain any difference between the two R-square values. How can you use the adjusted R-squares for a comparison of the two equations? c. Add one more explanatory variable to the multiple regression equation estimated in part b. In particular, estimate and interpret the coefficients of a multiple regression equation that includes the previous years advertising expenditure. How does the inclusion of this third explanatory variable affect the R-square, compared to the corresponding values for the equation of part b? Explain any changes in this value. What does the adjusted R-square for the new equation tell you?arrow_forward
- Note:- Do not provide handwritten solution. Maintain accuracy and quality in your answer. Take care of plagiarism. Answer completely. You will get up vote for sure.arrow_forwardOmar has heard from some of his customers that they will probably cut back on order sizes in the next quarter. The company he works for has been reducing its sales force due to falling demand and he worries that he could be next if his sales begin to fall off. Believing that he may be able to convince his customers not to cut back on orders, he turns in an optimistic forecast of his next quarter sales to his manager. What are the pros and cons of doing that?arrow_forward10. Quarterly demand for Jaguar XJ8’s at a Tacloban Auto dealership is forecast with the equation, Y = 10 + 3x Where; X = time period (quarterly): Quarter 1 of 2021 = 0Quarter 2 of 2021 = 1Quarter 3 of 2021 = 2Quarter 4 of 2021 = 3 and so on...The demand for the luxury car is seasonal, and the weights of quarter 1, 2, 3, and 4 are 80%, 100%,130%, and 90% respectively. Using the trend projection, forecast the demand for each quarter of2023 and 2024. Then adjust each forecast with the weighted indices.arrow_forward
- Income at the law firm of Smith and Jones for the period February to July was as follows: Month February March April May June July Income (in $ thousand) 90.0 91.5 96.0 85.4 92.2 96.0 Assume that the initial forecast for February is $85,000 and the initial trend adjustment is 0. The smoothing constants selected are a = 0.1 and ß = 0.2. Using trend-adjusted exponential smoothing, the forecast for the law firm's August income =O thousand dollars (round your response to two decimal places).arrow_forwardThe following is a payoff table giving profits for various situations. Alternatives Alternative 1 Alternative 2 Alternative 3 Do Nothing 130 166 36 States of Nature A 160 200 120 0 B C The probabilities for states of nature A, B, and C are 0.3, 0.5, and 0.2, respectively. If a perfect forecast of the future were available, what is the expected value with this perfect information? 100 120 100 140 0 180 50 120 0arrow_forwardCalanute Beach Resort, a fictional seaside luxury hotelin Goa, India, had the following occupancy rates for 12months in 2014Month Occupancy Rate in %1 652 683 724 755 786 837 928 889 7610 6511 6412 69a Forecast the occupancy rate for January2015 usingsimple exponential smoothing with α = 0.4. Assumethat the forecast for Month 2 (F2) is 65%. b Forecast the January 2015 occupancy rate usingtrend-adjusted simple exponential smoothing with α =…arrow_forward
- A company that produces protein bars used differentforecasting techniques to predict demand for its proteinbars. The actual demand and the forecasted demand forcases of protein bats using the two different forecasting methods are presented in the following table:Month F1 F2 Actual Demand At1 97 95 992 80 77 863 82 89 904 54 62 685 81 84 796 88 93 827 89 89 968 86 84 889 80 74 76a Compute MAD for the results of each forecastingmethod. Which one is more accurate?b Compute MSE for the results of each forecastingmethod. Which one is more accurate?c Compute MAPE for the results of each forecastingmethod. Which one is more accurate?arrow_forwardWhat are the advantages as a prediction tool over the moving averages of exponential smoothing?arrow_forwardCan you please assist me with the steps and solution to this problem?arrow_forward
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