Responsible Data Science - Grant Fleming
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Présentation Responsible Data Science de Grant Fleming Format Broché
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Résumé : Introduction xix Part I Motivation for Ethical Data Science and Background Knowledge 1 Chapter 1 Responsible Data Science 3 The Optum Disaster 4 Jekyll and Hyde 5 Eugenics 7 Galton, Pearson, and Fisher 7 Ties between Eugenics and Statistics 7 Ethical Problems in Data Science Today 9 Predictive Models 10 From Explaining to Predicting 10 Predictive Modeling 11 Setting the Stage for Ethical Issues to Arise 12 Classic Statistical Models 12 Black-Box Methods 14 Important Concepts in Predictive Modeling 19 Feature Selection 19 Model-Centric vs. Data-Centric Models 20 Holdout Sample and Cross-Validation 20 Overfitting 21 Unsupervised Learning 22 The Ethical Challenge of Black Boxes 23 Two Opposing Forces 24 Pressure for More Powerful AI 24 Public Resistance and Anxiety 24 Summary 25 Chapter 2 Background: Modeling and the Black-Box Algorithm 27 Assessing Model Performance 27 Predicting Class Membership 28 The Rare Class Problem 28 Lift and Gains 28 Area Under the Curve 29 AUC vs. Lift (Gains) 31 Predicting Numeric Values 32 Goodness-of-Fit 32 Holdout Sets and Cross-Validation 33 Optimization and Loss Functions 34 Intrinsically Interpretable Models vs. Black-Box Models 35 Ethical Challenges with Interpretable Models 38 Black-Box Models 39 Ensembles 39 Nearest Neighbors 41 Clustering 41 Association Rules 42 Collaborative Filters 42 Artificial Neural Nets and Deep Neural Nets 43 Problems with Black-Box Predictive Models 45 Problems with Unsupervised Algorithms 47 Summary 48 Chapter 3 The Ways AI Goes Wrong, and the Legal Implications 49 AI and Intentional Consequences by Design 50 Deepfakes 50 Supporting State Surveillance and Suppression 51 Behavioral Manipulation 52 Automated Testing to Fine-Tune Targeting 53 AI and Unintended Consequences 55 Healthcare 56 Finance 57 Law Enforcement 58 Technology 60 The Legal and Regulatory Landscape around AI 61 Ignorance Is No Defense: AI in the Context of Existing Law and Policy 63 A Finger in the Dam: Data Rights, Data Privacy, and Consumer Protection Regulations 64 Trends in Emerging Law and Policy Related to AI 66 Summary 69 Part II The Ethical Data Science Process 71 Chapter 4 The Responsible Data Science Framework 73 Why We Keep Building Harmful AI 74 Misguided Need for Cutting-Edge Models 74 Excessive Focus on Predictive Performance 74 Ease of Access and the Curse of Simplicity 76 The Common Cause 76 The Face Thieves 78 An Anatomy of Modeling Harms 79 The World: Context Matters for Modeling 80 The Data: Representation Is Everything 83 The Model: Garbage In, Danger Out 85 Model Interpretability: Human Understanding for Superhuman Models 86 Efforts Toward a More Responsible Data Science 89 Principles Are the Focus 90 Nonmaleficence 90 Fairness 90 Transparency 91 Accountability 91 Privacy 92 Bridging the Gap Between Principles and Practice with the Responsible Data Science (RDS) Framework 92 Justification 94 Compilation 94 Preparation 95 Modeling 96 Auditing 96 Summary 97 Chapter 5 Model Interpretability: The What and the Why 99 The Sexist R?sum? Screener 99 The Necessity of Model Interpretability 101 Sommaire: GRANT FLEMING is a Data Scientist at Elder Research Inc. His professional focus is on machine learning for social science applications, model interpretability, civic technology, and building software tools for reproducible data science. PETER BRUCE is the Senior Learning Officer at Elder Research, Inc., author of several best-selling texts on data science, and Founder of the Institute for Statistics Education at Statistics.com, an Elder Research Company.
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