Tim Wilson & Joe Sutherland 
Analytics the Right Way [EPUB ebook] 
A Business Leader’s Guide to Putting Data to Productive Use

समर्थन

CLEAR AND CONCISE TECHNIQUES FOR USING ANALYTICS TO DELIVER BUSINESS IMPACT AT ANY ORGANIZATION

Organizations have more data at their fingertips than ever, and their ability to put that data to productive use should be a key source of sustainable competitive advantage. Yet, business leaders looking to tap into a steady and manageable stream of “actionable insights” often, instead, get blasted with a deluge of dashboards, chart-filled slide decks, and opaque machine learning jargon that leaves them asking, “So what?”

Analytics the Right Way is a guide for these leaders. It provides a clear and practical approach to putting analytics to productive use with a three-part framework that brings together the realities of the modern business environment with the deep truths underpinning statistics, computer science, machine learning, and artificial intelligence. The result: a pragmatic and actionable guide for delivering clarity, order, and business impact to an organization’s use of data and analytics.

The book uses a combination of real-world examples from the authors’ direct experiences—working inside organizations, as external consultants, and as educators—mixed with vivid hypotheticals and illustrations—little green aliens, petty criminals with an affinity for ice cream, skydiving without parachutes, and more—to empower the reader to put foundational analytical and statistical concepts to effective use in a business context.

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Table of Contents

Acknowledgments xiii


About the Authors xvii


CHAPTER 1


Is This Book Right for You? 1


The Digital Age = The Data Age 3


What You Will Learn in This Book 6


Will This Book Deliver Value? 7


CHAPTER 2


How We Got Here 9


Misconceptions About Data Hurt Our Ability to Draw Insights 11


Misconception 1: With Enough Data, Uncertainty Can


Be Eliminated 12


Having More Data Doesn’t Mean You Have the Right Data 13


Even with an Immense Amount of Data, You Cannot Eliminate


Uncertainty 16


Data Can Cost More Than the Benefit You Get from It 18


It Is Impossible to Collect and Use “All” of the Data 18


Misconception 2: Data Must Be Comprehensive to Be Useful 19


“Small Data” Can Be Just As Effective As, If Not More


Effective Than, “Big Data” 20


Misconception 3: Data Are Inherently Objective and Unbiased 21


In Private, Data Always Bend to the User’s Will 23


Even When You Don’t Want the Data to Be Biased, They Are 24


Misconception 4: Democratizing Access to Data Makes an


Organization Data-Driven 26


Conclusion 28

CHAPTER 3


Making Decisions with Data: Causality and Uncertainty 29


Life and Business in a Nutshell: Making Decisions Under


Uncertainty 30


What’s in a Good Decision? 32


Minimizing Regret in Decisions 33


The Potential Outcomes Framework 34


What’s a Counterfactual? 34


Uncertainty and Causality 36


Potential Outcomes in Summary 42


So, What Now? 43


CHAPTER 4


A Structured Approach to Using Data 45


CHAPTER 5


Making Decisions Through Performance Measurement 53


A Simple Idea That Trips Up Organizations 54


“What Are Your KPIs?” Is a Terrible Question 58


Two Magic Questions 60


A KPI Without a Target Is Just a Metric 68


Setting Targets with the Backs of Some Napkins 72


Setting Targets by Bracketing the Possibilities 74


Setting Targets by Just Picking a Number 78


Dashboards as a Performance Measurement Tool 80


Summary 82


CHAPTER 6


Making Decisions Through Hypothesis Validation 85


Without Hypotheses, We See a Drought of Actionable Insights 88


Breaking the Lamentable Cycle and Creating Actionable Insight 89


Articulating and Validating Hypotheses: A Framework 91


Articulating Hypotheses That Can Be Validated 92


The Idea: We believe [some idea] 95


The Theory: …because [some evidence or rationale]… 96


The Action: If we are right, we will… 98


Exercise: Formulate a Hypothesis 101


Capturing Hypotheses in a Hypothesis Library 101


Just Write It Down: Ideating a Hypothesis vs. Inventorying


a Hypothesis 104


An Abundance of Hypotheses 105


Hypothesis Prioritization 106


Alignment to Business Goals 107


The Ongoing Process of Hypothesis Validation 108


Tracking Hypotheses Through Their Life Cycle 109


Summary 110


CHAPTER 7


Hypothesis Validation with New Evidence 113


Hypotheses Already Have Validating Information in Them 115


100% Certainty Is Never Achievable 116


Methodologies for Validating Hypotheses 118


Anecdotal Evidence 119


Strengths of Anecdotal Evidence 120


Weaknesses of Anecdotal Evidence 121


Descriptive Evidence 122


Strengths of Descriptive Evidence 123


Weaknesses of Descriptive Evidence 124


Scientific Evidence 128


Strengths of Scientific Evidence 129


Weaknesses of Scientific Evidence 135


Matching the Method to the Costs and Importance


of the Hypothesis 137


Summary 139


CHAPTER 8


Descriptive Evidence: Pitfalls and Solutions 141


Historical Data Analysis Gone Wrong 142


Descriptive Analyses Done Right 146


Unit of Analysis 146


Independent and Dependent Variables 149


Omitted Variables Bias 151


Time Is Uniquely Complicating 153


Describing Data vs. Making Inferences 154


Quantifying Uncertainty 156


Summary 163


CHAPTER 9


Pitfalls and Solutions for Scientific Evidence 165


Making Statistical Inferences 166


Detecting and Solving Problems with Selection Bias 168


Define the Population 168


Compare the Population to the Sample 168


Determine What Differences Are Unexpectedly Different 169


Random and Nonrandom Selection Bias 169


The Scientist’s Mind: It’s the Thought That Counts! 170


Making Causal Inferences 171


Detecting and Solving Problems with Confounding Bias 172


Create a List of Things That Could Affect the Concept


We’re Analyzing 173


Draw Causal Arrows 173


Look for Confounding “Triangles” Between the Circles


and the Box 174


Solving for Confounding in the Past and the Future 175


Controlled Experimentation 176


The Gold Standard of Causation: Controlled


Experimentation 177


The Fundamental Requirements for a Controlled


Experiment 179


Some Cautionary Notes About Controlled Experimentation 184


Summary 185


CHAPTER 10


Operational Enablement Using Data 187


The Balancing Act: Value and Efficiency 189


The Factory: How to Think About Data for Operational


Enablement 191


Trade Secrets: The Original Business Logic 192


How Hypothesis Validation Develops Trade Secrets and


Business Logic 193


Operational Enablement and Data in Defined Processes 194


Output Complexity and Automation Costs 196


Machine Learning and AI 199


Machine Learning: Discovering Mechanisms Without


Manual Intervention 199


Simple Machine-learned Rulesets 200


Complex Machine-learned Rulesets 202


AI: Executing Mechanisms Autonomously 203


Judgment: Deciding to Act on a Prediction 204


Degrees of Delegation: In-the-loop, On-the-loop, and


Out-of-the-loop 204


Why Machine Learning Is Important for Operational


Enablement 209


CHAPTER 11


Bringing It All Together 211


The Interconnected Nature of the Framework 212


Performance Measurement Triggering Hypothesis Validation 212


Level 1: Manager Knowledge 213


Level 2: Peer Knowledge 214


Level 3: Not Readily Apparent 215


Hypothesis Validation Triggering Performance Measurement 216


Did the Corrective Action Work? 216


“Performance Measurement” as a Validation Technique 216


Operational Enablement Resulting from Hypothesis


Validation 220


Operational Enablement Needs Performance Measurement 222


A Call Center Example 223


Enabling Good Ideas to Thrive: Effective Communication 225


Alright, Alright: You Do Need Technology 226


What Technology Does Well 227


What Technology Doesn’t Do Well 228


Final Thoughts on Decision-making 230


Index 233


Acknowledgements xiii
About the Authors xvii
CHAPTER 1
Is This Book Right for You? 1
The Digital Age = The Data Age 3
What You Will Learn in This Book 6
Will This Book Deliver Value? 7
CHAPTER 2
How We Got Here 11
Misconceptions About Data Hurt Our Ability to Draw Insights 13
Misconception 1: With Enough Data, Uncertainty Can
Be Eliminated 14
Having More Data Doesn’t Mean You Have the Right Data 15
Even with an Immense Amount of Data, You Cannot Eliminate
Uncertainty 18
Data Can Cost More Than the Benefit You Get from It 20
It Is Impossible to Collect and Use “All” of the Data 20
Misconception 2: Data Must Be Comprehensive to Be Useful 21
“Small Data” Can Be Just As Effective As, If Not More
Effective Than, “Big Data” 22
Misconception 3: Data Are Inherently Objective and Unbiased 23
In Private, Data Always Bend to the User’s Will 25
Even When You Don’t Want the Data to Be Biased, They Are 26
Misconception 4: Democratizing Access to Data Makes an
Organization Data-Driven 28
Conclusion 30

लेखक के बारे में

TIM WILSON has been an analytics practitioner since 2001, working in roles from business intelligence at high-tech B2B companies, to analytics leadership at marketing agencies, to consulting with Fortune Global 500 companies to improve their analytics investments.
DR. JOE SUTHERLAND has worked as an executive, public servant, and educator for the Dow Jones 30, The White House, and our nation’s top universities. His firm, J.L. Sutherland & Associates, has attracted clients such as Box, Cisco, Canva, The Conference Board, and Fulcrum Equity Partners. He founded the Center for AI Learning at Emory University, which focuses on AI literacy and integration for the general public.

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