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An engaging introduction to data science that emphasizes critical thinking over statistical techniques
An introduction to data science or statistics shouldn't involve proving complex theorems or memorizing obscure terms and formulas, but that is exactly what most introductory quantitative textbooks emphasize. In contrast, Thinking Clearly with Data focuses, first and foremost, on critical thinking and conceptual understanding in order to teach students how to be better consumers and analysts of the kinds of quantitative information and arguments that they will encounter throughout their lives.
Among much else, the book teaches how to assess whether an observed relationship in data reflects a genuine relationship in the world and, if so, whether it is causal; how to make the most informative comparisons for answering questions; what questions to ask others who are making arguments using quantitative evidence; which statistics are particularly informative or misleading; how quantitative evidence should and shouldn't influence decision-making; and how to make better decisions by using moral values as well as data. Filled with real-world examples, the book shows how its thinking tools apply to problems in a wide variety of subjects, including elections, civil conflict, crime, terrorism, financial crises, health care, sports, music, and space travel.
Above all else, Thinking Clearly with Data demonstrates why, despite the many benefits of our data-driven age, data can never be a substitute for thinking.
- An ideal textbook for introductory quantitative methods courses in data science, statistics, political science, economics, psychology, sociology, public policy, and other fields
- Introduces the basic toolkit of data analysis-including sampling, hypothesis testing, Bayesian inference, regression, experiments, instrumental variables, differences in differences, and regression discontinuity
- Uses real-world examples and data from a wide variety of subjects
- Includes practice questions and data exercises
An engaging introduction to data science that emphasizes critical thinking over statistical techniques
An introduction to data science or statistics shouldn't involve proving complex theorems or memorizing obscure terms and formulas, but that is exactly what most introductory quantitative textbooks emphasize. In contrast, Thinking Clearly with Data focuses, first and foremost, on critical thinking and conceptual understanding in order to teach students how to be better consumers and analysts of the kinds of quantitative information and arguments that they will encounter throughout their lives.
Among much else, the book teaches how to assess whether an observed relationship in data reflects a genuine relationship in the world and, if so, whether it is causal; how to make the most informative comparisons for answering questions; what questions to ask others who are making arguments using quantitative evidence; which statistics are particularly informative or misleading; how quantitative evidence should and shouldn't influence decision-making; and how to make better decisions by using moral values as well as data. Filled with real-world examples, the book shows how its thinking tools apply to problems in a wide variety of subjects, including elections, civil conflict, crime, terrorism, financial crises, health care, sports, music, and space travel.
Above all else, Thinking Clearly with Data demonstrates why, despite the many benefits of our data-driven age, data can never be a substitute for thinking.
- An ideal textbook for introductory quantitative methods courses in data science, statistics, political science, economics, psychology, sociology, public policy, and other fields
- Introduces the basic toolkit of data analysis-including sampling, hypothesis testing, Bayesian inference, regression, experiments, instrumental variables, differences in differences, and regression discontinuity
- Uses real-world examples and data from a wide variety of subjects
- Includes practice questions and data exercises
- Preface
- Organization
- Who Is This Book For?
- Acknowledgments
- CHAPTER 1 Thinking Clearly in a Data-Driven Age
- What You’ll Learn
- Introduction
- Cautionary Tales
- Abe’s hasty diagnosis
- Civil resistance
- Broken-windows policing
- Thinking and Data Are Complements, Not Substitutes
- Readings and References
- PART I ESTABLISHING A COMMON LANGUAGE
- CHAPTER 2 Correlation: What Is It and What Is It Good For?
- What You’ll Learn
- Introduction
- What Is a Correlation?
- Fact or correlation?
- What Is a Correlation Good For?
- Description
- Forecasting
- Causal inference
- Measuring Correlations
- Mean, variance, and standard deviation
- Covariance
- Correlation coefficient
- Slope of the regression line
- Populations and samples
- Straight Talk about Linearity
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 3 Causation: What Is It and What Is It Good For?
- What You’ll Learn
- Introduction
- What Is Causation?
- Potential Outcomes and Counterfactuals
- What Is Causation Good For?
- The Fundamental Problem of Causal Inference
- Conceptual Issues
- What is the cause?
- Causality and counterexamples
- Causality and the law
- Can causality run backward in time?
- Does causality require a physical connection?
- Causation need not imply correlation
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- PART II DOES A RELATIONSHIP EXIST?
- CHAPTER 4 Correlation Requires Variation
- What You’ll Learn
- Introduction
- Selecting on the Dependent Variable
- The 10,000-hour rule
- Corrupting the youth
- High school dropouts
- Suicide attacks
- The World Is Organized to Make Us Select on the Dependent Variable
- Doctors mostly see sick people
- Post-mortems
- The Challenger disaster
- The financial crisis of 2008
- Life advice
- Wrapping Up
- Key Term
- Exercises
- Readings and References
- CHAPTER 5 Regression for Describing and Forecasting
- What You’ll Learn
- Introduction
- Regression Basics
- Linear Regression, Non-Linear Data
- The Problem of Overfitting
- Forecasting presidential elections
- How Regression Is Presented
- A Brief Intellectual History of Regression
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 6 Samples, Uncertainty, and Statistical Inference
- What You’ll Learn
- Introduction
- Estimation
- Why Do Estimates Differ from Estimands?
- Bias
- Noise
- What Makes for a Good Estimator?
- Quantifying Precision
- Standard errors
- Small samples and extreme observations
- Confidence intervals
- Statistical Inference and Hypothesis Testing
- Hypothesis testing
- Statistical significance
- Statistical Inference about Relationships
- What If We Have Data for the Whole Population?
- Substantive versus Statistical Significance
- Social media and voting
- The Second Reform Act
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 7 Over-Comparing, Under-Reporting
- What You’ll Learn
- Introduction
- Can an octopus be a soccer expert?
- Publication Bias
- p-hacking
- p-screening
- Are Most Scientific “Facts” False?
- ESP
- Get out the vote
- p-hacking forensics
- Potential Solutions
- Reduce the significance threshold
- Adjust p-values for multiple testing
- Don’t obsess over statistical significance
- Pre-registration
- Requiring pre-registration in drug trials
- Replication
- Football and elections
- Test important and plausible hypotheses
- The power pose
- Beyond Science
- Superstars
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 8 Reversion to the Mean
- What You’ll Learn
- Introduction
- Does the truth wear off?
- Francis Galton and Regression to Mediocrity
- Reversion to the Mean Is Not a Gravitational Force
- Seeking Help
- Does knee surgery work?
- Reversion to the Mean, the Placebo Effect, and Cosmic Habituation
- The placebo effect
- Cosmic habituation explained
- Cosmic habituation and genetics
- Beliefs Don’t Revert to the Mean
- Wrapping Up
- Key Words
- Exercises
- Readings and References
- PART III IS THE RELATIONSHIP CAUSAL?
- CHAPTER 9 Why Correlation Doesn’t Imply Causation
- What You’ll Learn
- Introduction
- Charter schools
- Thinking Clearly about Potential Outcomes
- Sources of Bias
- Confounders
- Reverse causality
- The 10,000-hour rule, revisited
- Diet soda
- How Different Are Confounders and Reverse Causality?
- Campaign spending
- Signing the Bias
- Contraception and HIV
- Mechanisms versus Confounders
- Thinking Clearly about Bias and Noise
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 10 Controlling for Confounders
- What You’ll Learn
- Introduction
- Party whipping in Congress
- A note on heterogeneous treatment effects
- The Anatomy of a Regression
- How Does Regression Control?
- Controlling and Causation
- Is social media bad for you?
- Reading a Regression Table
- Controlling for Confounders versus Mechanisms
- There Is No Magic
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 11 Randomized Experiments
- What You’ll Learn
- Introduction
- Breastfeeding
- Randomization and Causal Inference
- Estimation and Inference in Experiments
- Standard errors
- Hypothesis testing
- Problems That Can Arise with Experiments
- Noncompliance and instrumental variables
- Chance imbalance
- Lack of statistical power
- Attrition
- Interference
- Natural Experiments
- Military service and future earnings
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 12 Regression Discontinuity Designs
- What You’ll Learn
- Introduction
- How to Implement an RD Design
- Are extremists or moderates more electable?
- Continuity at the Threshold
- Does continuity hold in election RD designs?
- Noncompliance and the Fuzzy RD
- Bombing in Vietnam
- Motivation and Success
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 13 Difference-in-Differences Designs
- What You’ll Learn
- Introduction
- Parallel Trends
- Two Units and Two Periods
- Unemployment and the minimum wage
- N Units and Two Periods
- Is watching TV bad for kids?
- N Units and N Periods
- Contraception and the gender-wage gap
- Useful Diagnostics
- Do newspaper endorsements affect voting decisions?
- Is obesity contagious?
- Difference-in-Differences as Gut Check
- The democratic peace
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- CHAPTER 14 Assessing Mechanisms
- What You’ll Learn
- Introduction
- Causal Mediation Analysis
- Intermediate Outcomes
- Cognitive behavioral therapy and at-risk youths in Liberia
- Independent Theoretical Predictions
- Do voters discriminate against women?
- Testing Mechanisms by Design
- Social pressure and voting
- Disentangling Mechanisms
- Commodity price shocks and violent conflict
- Wrapping Up
- Key Terms
- Exercises
- Readings and References
- PART IV FROM INFORMATION TO DECISIONS
- CHAPTER 15 Turn Statistics into Substance
- What You’ll Learn
- Introduction
- What’s the Right Scale?
- Miles-per-gallon versus gallons-per-mile
- Percent versus percentage point
- Visual Presentations of Data
- Policy preferences and the Southern realignment
- Some rules of thumb for data visualization
- From Statistics to Beliefs: Bayes’ Rule
- Bayes’ rule
- Information, beliefs, priors, and posteriors
- Abe’s celiac revisited
- Finding terrorists in an airport
- Bayes’ rule and quantitative analysis
- Expected Costs and Benefits
- Screening frequently or accurately
- Wrapping Up
- Key Words
- Exercises
- Readings and References
- CHAPTER 16 Measure Your Mission
- What You’ll Learn
- Introduction
- Measuring the Wrong Outcome or Treatment
- Partial measures
- Metal detectors in airports
- Intermediate outcomes
- Blood pressure and heart attacks
- Ill-defined missions
- Climate change and economic...
- Partial measures
- CHAPTER 15 Turn Statistics into Substance
- CHAPTER 9 Why Correlation Doesn’t Imply Causation
- CHAPTER 4 Correlation Requires Variation
- CHAPTER 2 Correlation: What Is It and What Is It Good For?
| Erscheinungsjahr: | 2021 |
|---|---|
| Genre: | Importe, Soziologie |
| Rubrik: | Wissenschaften |
| Medium: | Taschenbuch |
| Inhalt: | Einband - flex.(Paperback) |
| ISBN-13: | 9780691214351 |
| ISBN-10: | 0691214352 |
| Sprache: | Englisch |
| Einband: | Kartoniert / Broschiert |
| Autor: |
Fowler, Anthony
Bueno De Mesquita, Ethan |
| Hersteller: | Princeton University Press |
| Verantwortliche Person für die EU: | Libri GmbH, Europaallee 1, D-36244 Bad Hersfeld, gpsr@libri.de |
| Maße: | 252 x 175 x 22 mm |
| Von/Mit: | Anthony Fowler (u. a.) |
| Erscheinungsdatum: | 16.11.2021 |
| Gewicht: | 0,71 kg |