Spreadsheet Demonstration

Slides:



Advertisements
Similar presentations
Chapter 18 If mathematical analysis is too difficult, we can try each possibility out on paper. That way we can find which alternative appears to work.
Advertisements

Introduction to Risk Analysis Using Excel. Learning Objective.
1 Appendix 2: Bid Evaluation and Contract Award Systems. Overview: To develop an understanding of the alternative bidding and contract award systems used.
BA 452 Lesson C.2 Waiting Line Simulation 1 ReadingsReadings Chapter 12 Simulation.
Managerial Decision Modeling with Spreadsheets
Part 3 Probabilistic Decision Models
Chapter 15: Decisions Under Risk and Uncertainty McGraw-Hill/Irwin Copyright © 2011 by the McGraw-Hill Companies, Inc. All rights reserved.
Decision Making Under Uncertainty and Under Risk
McGraw-Hill/Irwin Copyright © 2013 by The McGraw-Hill Companies, Inc. All rights reserved. Chapter 15 Decisions under Risk and Uncertainty.
Decision Tree Analysis. Decision Analysis Managers often must make decisions in environments that are fraught with uncertainty. Some Examples –A manufacturer.
Simulation Operations -- Prof. Juran.
Session 7a. Decision Models -- Prof. Juran2 Overview Monte Carlo Simulation –Basic concepts and history Excel Tricks –RAND(), IF, Boolean Crystal Ball.
Introduction to Excel 2007 Part 2: Bar Graphs and Histograms February 5, 2008.
Outline/Coverage Terms for reference Introduction
Spreadsheet Demonstration New Car Simulation. 2 New car simulation Basic problem  To simulate the profitability of a new model car over a several-year.
Decision and Risk Analysis Financial Modelling & Risk Analysis II Kiriakos Vlahos Spring 2000.
Engineering Economic Analysis Canadian Edition
Spreadsheet Simulation
Spreadsheet Demonstration
Project: – Several options for bid: Bid our signal Develop several strategies Develop stable bidding strategy Simulating Normal Random Variables.
Class 21: Bidding Strategy and Simulation What is a “bidding strategy”? –System of determining what to bid –For example: signal with winner’s curse subtracted.
Precipitation Statistics! What are the chances?. Weather service collects precipitation data around the country.
1 SIMULATION – PART I Introduction to Simulation and Its Application to Yield Management For this portion of the session, the learning objectives are:
Simulating Normal Random Variables Simulation can provide a great deal of information about the behavior of a random variable.
Spreadsheet Demonstration Room Construction Simulation.
Chapter 6 Chapter 16 Sections , 4.0, Lecture 11 GRKS.XLSX Lecture 11 Low Prob Extremes.XLSX Lecture 11 Uncertain Emp Dist.XLSX Materials for.
Example 12.1 Operations Models: Bidding on Contract.
Building and Running a FTIM n 1. Define the system of interest. Identify the DVs, IRVs, DRVs, and Objective. n 2. Develop an objective function of these.
Simulations There will be an extra office hour this afternoon (Monday), 1-2 pm. Stop by if you want to get a head start on the homework. Math 710 There.
Example 11.1 Simulation with Built-In Excel Tools.
MATH 528 Operations Models.
Strategy 1-Bid $264.9M - Bid your signal. What will happen? Give reasoning for your analysis Had all companies bid their signals, the losses would have.
Spreadsheet Demonstration Investment Simulation. 2 Investment simulation Winston 12.4  Mary Higgins is a freelance writer with enough spare time on her.
Project 2-Guidelines. Recall- Class Project-Goals  Determine what would be expected to happen if each company bid the same amount as its signal.  Determine.
Silly Putty™ Petroleum Mandy Gunville Cody Scott Matt Shucker Catherine Strickland Sample pages from report.
Simulation.
Copyright © 2005 by the McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Managerial Economics Thomas Maurice eighth edition Chapter 15.
© Harry Campbell & Richard Brown School of Economics The University of Queensland BENEFIT-COST ANALYSIS Financial and Economic Appraisal using Spreadsheets.
Spreadsheet Basics Lesson 2 MDM4U – Data Management.
Chapter 9: Simulation Spreadsheet-Based Decision Support Systems Prof. Name Position (123) University Name.
Example 12.6 A Financial Planning Model | 12.2 | 12.3 | 12.4 | 12.5 | 12.7 |12.8 | 12.9 | | | | | | |
Example 16.1 Ordering calendars at Walton Bookstore
Engineering Economic Analysis Canadian Edition
Warm Up Find the mean, median, mode, range, and outliers of the following data. 11, 7, 2, 7, 6, 12, 9, 10, 8, 6, 4, 8, 8, 7, 4, 7, 8, 8, 6, 5, 9 How does.
ESD.70J Engineering Economy Module - Session 21 ESD.70J Engineering Economy Fall 2009 Session Two Michel-Alexandre Cardin – Prof. Richard.
Example A Market Share Model | 12.2 | 12.3 | 12.4 | 12.5 | 12.6 |12.7 | 12.8 | 12.9 | | | | | | |
FIN 614: Financial Management Larry Schrenk, Instructor.
VBA Seminar The OM Club is putting on a free introductory VBA seminar this Saturday, March 17 from 12-2pm Seminar includes: –Recording macros –Basic coding.
Simulation is the process of studying the behavior of a real system by using a model that replicates the system under different scenarios. A simulation.
Risk Analysis Simulate a scenario of possible input values that could occur and observe key impacts Pick many input scenarios according to their likelihood.
Models for Strategic Marketing Decision Making. Market Entry Decisions To enter first or to wait Sources of First-Mover Advantages –Technological leadership.
Advanced Simulation Methods. © The McGraw-Hill Companies, Inc., 2004 Operations -- Prof. Juran2 Overview Advanced Simulation Applications Beta Distribution.
Risk Analysis Simulate a scenario of possible input values that could occur and observe key financial impacts Pick many different input scenarios according.
Introduction Imagine the process for testing a new design for a propulsion system on the International Space Station. The project engineers wouldn’t perform.
Spreadsheet Applications for Construction Cost Estimating BY CHARLES NICKEL, P.E. (225)
Bidding Strategies. Outline of Presentation Markup Expected Profit Cost of Construction Maximizing Expected Profit Case 1: Single Known Competitor Case.
Supplementary Chapter B Optimization Models with Uncertainty
Bidding Strategies.
Chapter 15: Decisions Under Risk and Uncertainty
A game is played using one die
Decisions Under Risk and Uncertainty
Auctions and Competitive Bidding
Spreadsheets.
Slides 8a: Introduction
Spreadsheet Modelling
Monte Carlo Simulation
Chapter 10 - Monte Carlo Simulation and the Evaluation of Risk
Statistics 1: Introduction to Probability and Statistics
Chapter 15 Decisions under Risk and Uncertainty
Chapter 15: Decisions Under Risk and Uncertainty
Presentation transcript:

Spreadsheet Demonstration Bidding Simulation

Bidding simulation Winston 12.2 The Rogers Construction Company is trying to decide whether to make a bid on a construction project. Rogers believes it will cost the company $10,000 to complete the project (if it wins the contract), and it will cost $350 to prepare a bid. Four potential competitors are going to bid against Rogers. The lowest bid will win the contract (and the winner will then be given the winning bid amount to complete the project). Based on past history Rogers believes that each competitor’s bid has a triangular distribution with low and high extremes 10,000a and 10,000b

Bidding simulation Winston 12.2 (cont’) and most likely value 10,000c. That is, each competitors bid is at least a times Rogers’s cost. For this particular example, we will assume that a=1, b=3, and c=1.3. These four competitors’ bids are also assumed to be independent of one another. If Rogers decides to prepare a bid, then it has decided that its bid amount will be a multiple of $500 in the range from $10,500 to $15,000. The company wants to use simulation to determine which strategy to use in order to maximize its expected profit.

Bidding simulation Basic problem Rogers Company wants to bid for a project against four competitors Low bid wins the contract Competitors’ bids are uncertain until after Rogers has made its bid

Bidding simulation Uncertainties Each competitor’s bid is uncertain Each is modeled with a triangular distribution with parameters “minimum,” “most likely,” and “maximum” Each parameter is a multiple of Rogers’ cost to complete project If you haven’t done so yet, review the section in Chapter 12 on generating random numbers from a triangular distribution. Although this distribution is intuitive and often useful, the procedure for generating random numbers from it (with Excel’s built-in functions) is fairly complex.

Bidding simulation Monetary inputs Costs to Rogers include Cost to prepare bid Cost to complete project (if it wins bid) If Rogers wins the bid, it receives the bid amount

Bidding simulation Decision to make Rogers must to decide whether to submit a bid, and if so, what its bid amount should be Decision criterion: maximize the expected profit

Building the spreadsheet model (See Excel “Steps 1-3” sheet) Step 1: Enter all inputs Steps 2, 3: Generate random bids for the four competitors Go through steps for generating triangularly distributed random numbers

Building the spreadsheet model (See Excel “Steps 4-6” sheet) Step 4: Enter the company’s possible decisions (including the “no bid” decision) Step 5: Use an IF function to see whether Rogers is the low bidder Step 6: Calculate its profit This will be a loss if it prepares a bid and then doesn’t win the contract

Building the spreadsheet model (See Excel “DataTable” sheet) Create a data table to replicate Rogers’ profit Possible decisions are along the top Replication numbers are along the side For each possible decision calculate summary measures (at least averages and standard deviations) over all replications This data table might be a bit confusing. It is really a one-way table (with column input cell any blank cell) with multiple outputs (one for each possible decision along the top). So there is no row input cell. Note how we have used the TRANSPOSE function to transpose a column of profits into the row (in gray) at the top of the data table.

Building the spreadsheet model (See Excel “Averages”, “Stdevs” sheets) Create bar charts for the averages and standard deviations from the data table Bid of around $12,000 to $13,000 appears to maximize average profit Standard deviations tend to increase for larger bids (more risk) These graphs are “live” (press F9 key) Highest peak on “Averages” graph changes This is a good example to illustrate how the decision that maximizes the objective (average profit) can change from one set of replications to another. Go to the “Averages” sheet and repeatedly press the F9 key. The “optimal” bid keeps changing!