Description

Book Synopsis
Avoid data blunders and create truly useful visualizations

Avoiding Data Pitfalls is a reputation-saving handbook for those who work with data, designed to help you avoid the all-too-common blunders that occur in data analysis, visualization, and presentation. Plenty of data tools exist, along with plenty of books that tell you how to use thembut unless you truly understand how to work with data, each of these tools can ultimately mislead and cause costly mistakes. This book walks you step by step through the full data visualization process, from calculation and analysis through accurate, useful presentation. Common blunders are explored in depth to show you how they arise, how they have become so common, and how you can avoid them from the outset. Then and only then can you take advantage of the wealth of tools that are out therein the hands of someone who knows what they''re doing, the right tools can cut down on the time, labor, and myriad decisions that go i

Table of Contents

Preface ix

Chapter 1 The Seven Types of Data Pitfalls 1

Seven Types of Data Pitfalls 3

Pitfall 1: Epistemic Errors: How We Think About Data 3

Pitfall 2: Technical Traps: How We Process Data 4

Pitfall 3: Mathematical Miscues: How We Calculate Data 4

Pitfall 4: Statistical Slipups: How We Compare Data 5

Pitfall 5: Analytical Aberrations: How We Analyze Data 5

Pitfall 6: Graphical Gaffes: How We Visualize Data 6

Pitfall 7: Design Dangers: How We Dress up Data 6

Avoiding the Seven Pitfalls 7

“I’ve Fallen and I Can’t Get Up” 8

Chapter 2 Pitfall 1: Epistemic Errors 11

How We Think About Data 11

Pitfall 1A: The Data-Reality Gap 12

Pitfall 1B: All Too Human Data 24

Pitfall 1C: Inconsistent Ratings 32

Pitfall 1D: The Black Swan Pitfall 39

Pitfall 1E: Falsifiability and the God Pitfall 43

Avoiding the Swan Pitfall and the God Pitfall 44

Chapter 3 Pitfall 2: Technical Trespasses 47

How We Process Data 47

Pitfall 2A: The Dirty Data Pitfall 48

Pitfall 2B: Bad Blends and Joins 67

Chapter 4 Pitfall 3: Mathematical Miscues 74

How We Calculate Data 74

Pitfall 3A: Aggravating Aggregations 75

Pitfall 3B: Missing Values 83

Pitfall 3C: Tripping on Totals 88

Pitfall 3D: Preposterous Percents 93

Pitfall 3E: Unmatching Units 102

Chapter 5 Pitfall 4: Statistical Slipups 107

How We Compare Data 107

Pitfall 4A: Descriptive Debacles 109

Pitfall 4B: Inferential Infernos 131

Pitfall 4C: Slippery Sampling 136

Pitfall 4D: Insensitivity to Sample Size 142

Chapter 6 Pitfall 5: Analytical Aberrations 148

How We Analyze Data 148

Pitfall 5A: The Intuition/Analysis False Dichotomy 149

Pitfall 5B: Exuberant Extrapolations 157

Pitfall 5C: Ill-Advised Interpolations 163

Pitfall 5D: Funky Forecasts 166

Pitfall 5E: Moronic Measures 168

Chapter 7 Pitfall 6: Graphical Gaffes 173

How We Visualize Data 173

Pitfall 6A: Challenging Charts 175

Pitfall 6B: Data Dogmatism 202

Pitfall 6C: The Optimize/Satisfice False Dichotomy 207

Chapter 8 Pitfall 7: Design Dangers 212

How We Dress up Data 212

Pitfall 7A: Confusing Colors 214

Pitfall 7B: Omitted Opportunities 222

Pitfall 7C: Usability Uh-Ohs 227

Chapter 9 Conclusion 237

Avoiding Data Pitfalls Checklist 241

The Pitfall of the Unheard Voice 243

Index 247

Avoiding Data Pitfalls

    Product form

    £30.39

    Includes FREE delivery

    RRP £37.99 – you save £7.60 (20%)

    Order before 4pm tomorrow for delivery by Sat 20 Jun 2026.

    A Paperback / softback by Ben Jones

    2 in stock

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Avoiding Data Pitfalls by Ben Jones

      Publisher: John Wiley & Sons Inc
      Publication Date: 12/12/2019
      ISBN13: 9781119278160, 978-1119278160
      ISBN10: 1119278163

      Description

      Book Synopsis
      Avoid data blunders and create truly useful visualizations

      Avoiding Data Pitfalls is a reputation-saving handbook for those who work with data, designed to help you avoid the all-too-common blunders that occur in data analysis, visualization, and presentation. Plenty of data tools exist, along with plenty of books that tell you how to use thembut unless you truly understand how to work with data, each of these tools can ultimately mislead and cause costly mistakes. This book walks you step by step through the full data visualization process, from calculation and analysis through accurate, useful presentation. Common blunders are explored in depth to show you how they arise, how they have become so common, and how you can avoid them from the outset. Then and only then can you take advantage of the wealth of tools that are out therein the hands of someone who knows what they''re doing, the right tools can cut down on the time, labor, and myriad decisions that go i

      Table of Contents

      Preface ix

      Chapter 1 The Seven Types of Data Pitfalls 1

      Seven Types of Data Pitfalls 3

      Pitfall 1: Epistemic Errors: How We Think About Data 3

      Pitfall 2: Technical Traps: How We Process Data 4

      Pitfall 3: Mathematical Miscues: How We Calculate Data 4

      Pitfall 4: Statistical Slipups: How We Compare Data 5

      Pitfall 5: Analytical Aberrations: How We Analyze Data 5

      Pitfall 6: Graphical Gaffes: How We Visualize Data 6

      Pitfall 7: Design Dangers: How We Dress up Data 6

      Avoiding the Seven Pitfalls 7

      “I’ve Fallen and I Can’t Get Up” 8

      Chapter 2 Pitfall 1: Epistemic Errors 11

      How We Think About Data 11

      Pitfall 1A: The Data-Reality Gap 12

      Pitfall 1B: All Too Human Data 24

      Pitfall 1C: Inconsistent Ratings 32

      Pitfall 1D: The Black Swan Pitfall 39

      Pitfall 1E: Falsifiability and the God Pitfall 43

      Avoiding the Swan Pitfall and the God Pitfall 44

      Chapter 3 Pitfall 2: Technical Trespasses 47

      How We Process Data 47

      Pitfall 2A: The Dirty Data Pitfall 48

      Pitfall 2B: Bad Blends and Joins 67

      Chapter 4 Pitfall 3: Mathematical Miscues 74

      How We Calculate Data 74

      Pitfall 3A: Aggravating Aggregations 75

      Pitfall 3B: Missing Values 83

      Pitfall 3C: Tripping on Totals 88

      Pitfall 3D: Preposterous Percents 93

      Pitfall 3E: Unmatching Units 102

      Chapter 5 Pitfall 4: Statistical Slipups 107

      How We Compare Data 107

      Pitfall 4A: Descriptive Debacles 109

      Pitfall 4B: Inferential Infernos 131

      Pitfall 4C: Slippery Sampling 136

      Pitfall 4D: Insensitivity to Sample Size 142

      Chapter 6 Pitfall 5: Analytical Aberrations 148

      How We Analyze Data 148

      Pitfall 5A: The Intuition/Analysis False Dichotomy 149

      Pitfall 5B: Exuberant Extrapolations 157

      Pitfall 5C: Ill-Advised Interpolations 163

      Pitfall 5D: Funky Forecasts 166

      Pitfall 5E: Moronic Measures 168

      Chapter 7 Pitfall 6: Graphical Gaffes 173

      How We Visualize Data 173

      Pitfall 6A: Challenging Charts 175

      Pitfall 6B: Data Dogmatism 202

      Pitfall 6C: The Optimize/Satisfice False Dichotomy 207

      Chapter 8 Pitfall 7: Design Dangers 212

      How We Dress up Data 212

      Pitfall 7A: Confusing Colors 214

      Pitfall 7B: Omitted Opportunities 222

      Pitfall 7C: Usability Uh-Ohs 227

      Chapter 9 Conclusion 237

      Avoiding Data Pitfalls Checklist 241

      The Pitfall of the Unheard Voice 243

      Index 247

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account