Homework due next Tuesday, September 22 p. 156 # 5-7, 5-8, 5-9 Please use complete sentences to answer any questions and make. Include any tables you are.

Slides:



Advertisements
Similar presentations
1 1 Slide © 2008 Thomson South-Western. All Rights Reserved © 2011 Cengage Learning. All Rights Reserved. May not be scanned, copied or duplicated, or.
Advertisements

Decision Theory.
Decision Analysis Chapter 3
1 Decision Making A General Overview 10th ed.. 2 Why study decision making? -It is the most fundamental task performed by managers. -It is the underlying.
Chapter 5: Decision-making Concepts Quantitative Decision Making with Spreadsheet Applications 7 th ed. By Lapin and Whisler Sec 5.5 : Other Decision Criteria.
1 1 Slide © 2001 South-Western College Publishing/Thomson Learning Anderson Sweeney Williams Anderson Sweeney Williams Slides Prepared by JOHN LOUCKS QUANTITATIVE.
Chapter 14 Decision Analysis. Decision Making Many decision making occur under condition of uncertainty Decision situations –Probability cannot be assigned.
1 Chapter 5 There is no more miserable human being than one in whom nothing is habitual but indecision.—William James Decision-Making Concepts.
1 1 Slide © 2004 Thomson/South-Western Payoff Tables n The consequence resulting from a specific combination of a decision alternative and a state of nature.
Chapter 18 Statistical Decision Theory Copyright © 2010 Pearson Education, Inc. Publishing as Prentice Hall Statistics for Business and Economics 7 th.
LECTURE TWELVE Decision-Making UNDER UNCERTAINITY.
Copyright 2009 John Wiley & Sons, Inc. Beni Asllani University of Tennessee at Chattanooga Operations Management - 6 th Edition Chapter 1 Supplement Roberta.
Chapter 21 Statistical Decision Theory
Decision Analysis. What is Decision Analysis? The process of arriving at an optimal strategy given: –Multiple decision alternatives –Uncertain future.
Managerial Decision Modeling with Spreadsheets
2000 by Prentice-Hall, Inc1 Supplement 2 – Decision Analysis A set of quantitative decision-making techniques for decision situations where uncertainty.
©The McGraw-Hill Companies, Inc. 2008McGraw-Hill/Irwin An Introduction to Decision Making Chapter 20.
Operations and Supply Chain Management, 8th Edition
Chapter 7 Decision Analysis
Chapter 4 Decision Analysis.
Chap 19-1 Copyright ©2012 Pearson Education, Inc. publishing as Prentice Hall On Line Topic Decision Making Basic Business Statistics 12 th Edition.
Decision Analysis Part 1
Part 3 Probabilistic Decision Models
1 1 Slide Decision Analysis Professor Ahmadi. 2 2 Slide Decision Analysis Chapter Outline n Structuring the Decision Problem n Decision Making Without.
Business Statistics: A Decision-Making Approach, 6e © 2005 Prentice-Hall, Inc. Chap 18-1 Business Statistics: A Decision-Making Approach 6 th Edition Chapter.
1 1 Slide © 2009 South-Western, a part of Cengage Learning Slides by John Loucks St. Edward’s University.
Topic 2. DECISION-MAKING TOOLS
Business 260: Managerial Decision Analysis
BA 555 Practical Business Analysis
Copyright 2006 John Wiley & Sons, Inc. Beni Asllani University of Tennessee at Chattanooga Operations Management - 5 th Edition Chapter 2 Supplement Roberta.
Decision analysis: part 1 BSAD 30 Dave Novak Source: Anderson et al., 2013 Quantitative Methods for Business 12 th edition – some slides are directly from.
Decision Analysis Introduction Chapter 6. What kinds of problems ? Decision Alternatives (“what ifs”) are known States of Nature and their probabilities.
CD-ROM Chap 14-1 A Course In Business Statistics, 4th © 2006 Prentice-Hall, Inc. A Course In Business Statistics 4 th Edition CD-ROM Chapter 14 Introduction.
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 16-1 Chapter 16 Decision Making Statistics for Managers Using Microsoft.
1 1 Slide © 2005 Thomson/South-Western EMGT 501 HW Solutions Chapter 12 - SELF TEST 9 Chapter 12 - SELF TEST 18.
Chapter 5: Decision-making Concepts Quantitative Decision Making with Spreadsheet Applications 7 th ed. By Lapin and Whisler.
An Introduction to Decision Theory (web only)
An Introduction to Decision Theory
To Accompany Russell and Taylor, Operations Management, 4th Edition,  2003 Prentice-Hall, Inc. All rights reserved. Supplement S2 Decision Analysis To.
Operations Research II Course,, September Part 5: Decision Models Operations Research II Dr. Aref Rashad.
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 16-1 Chapter 16 Decision Making Statistics for Managers Using Microsoft.
Statistics for Managers Using Microsoft Excel, 5e © 2008 Prentice-Hall, Inc.Chap 17-1 Statistics for Managers Using Microsoft® Excel 5th Edition Chapter.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc. Chap 17-1 Chapter 17 Decision Making Basic Business Statistics 10 th Edition.
Decision Analysis Mary Whiteside. Decision Analysis Definitions Actions – alternative choices for a course of action Actions – alternative choices for.
Welcome Unit 4 Seminar MM305 Wednesday 8:00 PM ET Quantitative Analysis for Management Delfina Isaac.
Decision Theory McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Lecture 6 Decision Making.
Models for Strategic Marketing Decision Making. Market Entry Decisions To enter first or to wait Sources of First-Mover Advantages –Technological leadership.
Amity School Of Business Operations Research OPERATIONS RESEARCH.
1 Decision Making A General Overview 10th ed.. 2 Why study decision making? -It is the most fundamental task performed by managers. -It is the underlying.
Decision Theory McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Decision Analysis.
SUPPLEMENT TO CHAPTER TWO Irwin/McGraw-Hill © The McGraw-Hill Companies, Inc., 1999 DECISION MAKING 2S-1 Chapter 2 Supplement Decision Making.
© 2015 McGraw-Hill Education. All rights reserved. Chapter 16 Decision Analysis.
Decision Making Under Uncertainty: Pay Off Table and Decision Tree.
DECISION MODELS. Decision models The types of decision models: – Decision making under certainty The future state of nature is assumed known. – Decision.
Chap 18-1 Business Statistics: A Decision-Making Approach 6 th Edition Chapter 18 Introduction to Decision Analysis.
1 1 Slide © 2005 Thomson/South-Western Chapter 13 Decision Analysis n Problem Formulation n Decision Making without Probabilities n Decision Making with.
QUANTITATIVE TECHNIQUES
McGraw-Hill/Irwin Copyright © 2008 by The McGraw-Hill Companies, Inc. All rights reserved. Chapter 4 Decision Analysis Building the Structure for Solving.
Part Three: Information for decision-making Chapter Twelve: Decision-making under conditions of risk and uncertainty Use with Management and Cost Accounting.
Chapter 5 Supplement Decision Theory.
Chapter 5: Decision-making Concepts
Chapter 19 Decision Making
MNG221- Management Science –
Decision Analysis Support Tools and Processes
Decision Analysis.
Chapter 17 Decision Making
Applied Statistical and Optimization Models
Presentation transcript:

Homework due next Tuesday, September 22 p. 156 # 5-7, 5-8, 5-9 Please use complete sentences to answer any questions and make. Include any tables you are asked to make.

Chapter 5: Decision-making Concepts Quantitative Decision Making with Spreadsheet Applications 7 th ed. By Lapin and Whisler Section 5-7: Decision Tree Analysis Some slides are from Business Statistics: A Decision-Making Approach 6 th Edition found at

The Bayes Decision Rule Takes into account all the information about the chances for various payoffs. Takes into account all the information about the chances for various payoffs. Event (level of demand ) Probability Act (Choice of Movement) Gears & Levers Spring Action Weights & Pulleys Payoff Payoff x Prob Payoff Payoff Light.10 $ 25,000 $ $10,000 -$ $125,000 - $12,500 Moderat e , , , ,000400, ,00 0 Heavy , , , ,000750, ,00 0 ExpectedPayoff:$412,500$455,000$417,500

Other Decision Criteria Maximin Payoff Criterion – choose the best of the worst outcomes. Maximin Payoff Criterion – choose the best of the worst outcomes. Maximum Likelihood Criterion – focus on the most likely event to the exclusion of all others. Maximum Likelihood Criterion – focus on the most likely event to the exclusion of all others. The Criterion of Insufficient Reason – every event has the same probability. The Criterion of Insufficient Reason – every event has the same probability.

Table vs. Tree Payoff table: simple decisions Payoff table: simple decisions Decisions made at different points in time with uncertain events occurring between decisions. Decisions made at different points in time with uncertain events occurring between decisions. Tree gives more flexibility. Tree gives more flexibility. Tree shows every possible course of action and all possible outcomes. Tree shows every possible course of action and all possible outcomes.

Decision Tree A decision tree is a picture of all the possible courses of action and the consequent possible outcomes. A box is used to indicate the point at which a decision must be made, A box is used to indicate the point at which a decision must be made, The branches going out from the box indicate the alternatives under consideration The branches going out from the box indicate the alternatives under consideration A circle represents an event (usually has a probability) A circle represents an event (usually has a probability) The branches going out from the circle represent outcomes of the event. The branches going out from the circle represent outcomes of the event.

Sample Decision Tree Large factory Small factory Average factory Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy

Add Probabilities and Payoffs Large factory Small factory Decision Average factory Uncertain Events (States of Nature) Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy (continued) PayoffsProbabilities (.3) (.5) (.2) (.3) (.5) (.2) (.3) (.5) (.2)

Decision Tree Analysis  Each node is evaluated in terms of its expected payoff.  Event forks: expected payoffs are computed.  Act forks: the greatest value is brought back.  The decision tree is folded back by maximizing expected payoff.  Inferior acts are pruned from the tree.  The pruned tree indicates the best course of action, the one maximizing expected payoff.  The process works backward in time.

Fold Back the Tree Large factory Small factory Average factory Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy (.3) (.5) (.2) (.3) (.5) (.2) (.3) (.2) EV=200(.3)+50(.5)+(-120)(.2)= 61 EV=90(.3)+120(.5)+(-30)(.2)= 81 EV=40(.3)+30(.5)+20(.2)= 31 (.5)

Make the Decision Large factory Small factory Average factory Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy Strong Economy Stable Economy Weak Economy (.3) (.5) (.2) (.3) (.5) (.2) (.3) (.5) (.2) EV= 61 EV=81 EV= 31 Maximum EV=81