Description

Book Synopsis


Table of Contents

About the Author xi

Preface xiii

Acknowledgments xvii

Part One An Introduction To The Crisis 1

Chapter 1 Healthy Skepticism for Risk Management 3

A “Common Mode Failure” 5

Key Definitions: Risk Management and Some Related Terms 8

What Failure Means 14

Scope and Objectives of This Book 17

Chapter 2 A Summary of the Current State of Risk Management 21

A Short and Entirely-Too-Superficial History of Risk 21

Current State of Risk Management in the Organization 25

Current Risks and How They are Assessed 26

Chapter 3 How Do We Know What Works? 35

Anecdote: The Risk of Outsourcing Drug Manufacturing 36

Why It’s Hard to Know What Works 40

An Assessment of Self-Assessments 44

Potential Objective Evaluations of Risk Management 48

What We May Find 57

Chapter 4 Getting Started: A Simple Straw Man Quantitative Model 61

A Simple One-for-One Substitution 63

The Expert as the Instrument 64

A Quick Overview of “Uncertainty Math” 67

Establishing Risk Tolerance 72

Supporting the Decision: A Return on Mitigation 73

Making the Straw Man Better 75

Part Two Why It’s Broken 79

Chapter 5 The “Four Horsemen” of Risk Management: Some (Mostly) Sincere Attempts to Prevent an Apocalypse 81

Actuaries 83

War Quants: How World War II Changed Risk Analysis Forever 86

Economists 90

Management Consulting: How a Power Tie and a Good Pitch Changed Risk Management 96

Comparing the Horsemen 103

Major Risk Management Problems to Be Addressed 105

Chapter 6 An Ivory Tower of Babel: Fixing the Confusion about Risk 109

The Frank Knight Definition 111

Knight’s Influence in Finance and Project Management 114

A Construction Engineering Definition 118

Risk as Expected Loss 119

Defining Risk Tolerance 121

Defining Probability 128

Enriching the Lexicon 131

Chapter 7 The Limits of Expert Knowledge: Why We Don’t Know What We Think We Know about Uncertainty 135

The Right Stuff: How a Group of Psychologists Might Save Risk Analysis 137

Mental Math: Why We Shouldn’t Trust the Numbers in Our Heads 139

“Catastrophic” Overconfidence 142

The Mind of “Aces”: Possible Causes and Consequences of Overconfidence 150

Inconsistencies and Artifacts: What Shouldn’t Matter Does 155

Answers to Calibration Tests 160

Chapter 8 Worse Than Useless: The Most Popular Risk Assessment Method and Why It Doesn’t Work 163

A Few Examples of Scores and Matrices 164

Does That Come in “Medium”?: Why Ambiguity Does Not Offset Uncertainty 170

Unintended Effects of Scales: What You Don’t Know Can Hurt You 173

Different but Similar-Sounding Methods and Similar but Different-Sounding Methods 183

Chapter 9 Bears, Swans and Other Obstacles to Improved Risk Management 193

Algorithm Aversion and a Key Fallacy 194

Algorithms versus Experts: Generalizing the Findings 198

A Note about Black Swans 203

Major Mathematical Misconceptions 209

We’re Special: The Belief That Risk Analysis Might Work, but Not Here 217

Chapter 10 Where Even the Quants Go Wrong: Common and Fundamental Errors in Quantitative Models 223

A Survey of Analysts Using Monte Carlos 224

The Risk Paradox 228

Financial Models and the Shape of Disaster: Why Normal Isn’t So Normal 236

Following Your Inner Cow: The Problem with Correlations 243

The Measurement Inversion 248

Is Monte Carlo Too Complicated? 250

Part Three How to Fix It 255

Chapter 11 Starting with What Works 257

Speak the Language 259

Getting Your Probabilities Calibrated 266

Using Data for Initial Benchmarks 272

Checking the Substitution 280

Simple Risk Management 285

Chapter 12 Improving the Model 293

Empirical Inputs 294

Adding Detail to the Model 305

Advanced Methods for Improving Expert’s Subjective Estimates 312

Other Monte Carlo Tools 315

Self-Examinations for Modelers 317

Chapter 13 The Risk Community: Intra- and Extra-organizational Issues of Risk Management 323

Getting Organized 324

Managing the Model 327

Incentives for a Calibrated Culture 331

Extraorganizational Issues: Solutions beyond Your Office Building 337

Practical Observations from Trustmark 339

Final Thoughts on Quantitative Models and Better Decisions 341

Additional Calibration Tests and Answers 345

Index 357

The Failure of Risk Management

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    A Hardback by Douglas W. Hubbard

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      Publisher: John Wiley & Sons Inc
      Publication Date: 23/03/2020
      ISBN13: 9781119522034, 978-1119522034
      ISBN10: 111952203X

      Description

      Book Synopsis


      Table of Contents

      About the Author xi

      Preface xiii

      Acknowledgments xvii

      Part One An Introduction To The Crisis 1

      Chapter 1 Healthy Skepticism for Risk Management 3

      A “Common Mode Failure” 5

      Key Definitions: Risk Management and Some Related Terms 8

      What Failure Means 14

      Scope and Objectives of This Book 17

      Chapter 2 A Summary of the Current State of Risk Management 21

      A Short and Entirely-Too-Superficial History of Risk 21

      Current State of Risk Management in the Organization 25

      Current Risks and How They are Assessed 26

      Chapter 3 How Do We Know What Works? 35

      Anecdote: The Risk of Outsourcing Drug Manufacturing 36

      Why It’s Hard to Know What Works 40

      An Assessment of Self-Assessments 44

      Potential Objective Evaluations of Risk Management 48

      What We May Find 57

      Chapter 4 Getting Started: A Simple Straw Man Quantitative Model 61

      A Simple One-for-One Substitution 63

      The Expert as the Instrument 64

      A Quick Overview of “Uncertainty Math” 67

      Establishing Risk Tolerance 72

      Supporting the Decision: A Return on Mitigation 73

      Making the Straw Man Better 75

      Part Two Why It’s Broken 79

      Chapter 5 The “Four Horsemen” of Risk Management: Some (Mostly) Sincere Attempts to Prevent an Apocalypse 81

      Actuaries 83

      War Quants: How World War II Changed Risk Analysis Forever 86

      Economists 90

      Management Consulting: How a Power Tie and a Good Pitch Changed Risk Management 96

      Comparing the Horsemen 103

      Major Risk Management Problems to Be Addressed 105

      Chapter 6 An Ivory Tower of Babel: Fixing the Confusion about Risk 109

      The Frank Knight Definition 111

      Knight’s Influence in Finance and Project Management 114

      A Construction Engineering Definition 118

      Risk as Expected Loss 119

      Defining Risk Tolerance 121

      Defining Probability 128

      Enriching the Lexicon 131

      Chapter 7 The Limits of Expert Knowledge: Why We Don’t Know What We Think We Know about Uncertainty 135

      The Right Stuff: How a Group of Psychologists Might Save Risk Analysis 137

      Mental Math: Why We Shouldn’t Trust the Numbers in Our Heads 139

      “Catastrophic” Overconfidence 142

      The Mind of “Aces”: Possible Causes and Consequences of Overconfidence 150

      Inconsistencies and Artifacts: What Shouldn’t Matter Does 155

      Answers to Calibration Tests 160

      Chapter 8 Worse Than Useless: The Most Popular Risk Assessment Method and Why It Doesn’t Work 163

      A Few Examples of Scores and Matrices 164

      Does That Come in “Medium”?: Why Ambiguity Does Not Offset Uncertainty 170

      Unintended Effects of Scales: What You Don’t Know Can Hurt You 173

      Different but Similar-Sounding Methods and Similar but Different-Sounding Methods 183

      Chapter 9 Bears, Swans and Other Obstacles to Improved Risk Management 193

      Algorithm Aversion and a Key Fallacy 194

      Algorithms versus Experts: Generalizing the Findings 198

      A Note about Black Swans 203

      Major Mathematical Misconceptions 209

      We’re Special: The Belief That Risk Analysis Might Work, but Not Here 217

      Chapter 10 Where Even the Quants Go Wrong: Common and Fundamental Errors in Quantitative Models 223

      A Survey of Analysts Using Monte Carlos 224

      The Risk Paradox 228

      Financial Models and the Shape of Disaster: Why Normal Isn’t So Normal 236

      Following Your Inner Cow: The Problem with Correlations 243

      The Measurement Inversion 248

      Is Monte Carlo Too Complicated? 250

      Part Three How to Fix It 255

      Chapter 11 Starting with What Works 257

      Speak the Language 259

      Getting Your Probabilities Calibrated 266

      Using Data for Initial Benchmarks 272

      Checking the Substitution 280

      Simple Risk Management 285

      Chapter 12 Improving the Model 293

      Empirical Inputs 294

      Adding Detail to the Model 305

      Advanced Methods for Improving Expert’s Subjective Estimates 312

      Other Monte Carlo Tools 315

      Self-Examinations for Modelers 317

      Chapter 13 The Risk Community: Intra- and Extra-organizational Issues of Risk Management 323

      Getting Organized 324

      Managing the Model 327

      Incentives for a Calibrated Culture 331

      Extraorganizational Issues: Solutions beyond Your Office Building 337

      Practical Observations from Trustmark 339

      Final Thoughts on Quantitative Models and Better Decisions 341

      Additional Calibration Tests and Answers 345

      Index 357

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