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97 THINGS ABOUT ETHICS EVERYONE IN DATA SCIENCE SHOULD KNOW
Título:
97 THINGS ABOUT ETHICS EVERYONE IN DATA SCIENCE SHOULD KNOW
Subtítulo:
Autor:
FRANKS, B
Editorial:
O´REILLY
Año de edición:
2020
ISBN:
978-1-4920-7266-9
43,50 €

 

Sinopsis

Most of the high-profile cases of real or perceived unethical activity in data science aren't matters of bad intent. Rather, they occur because the ethics simply aren't thought through well enough. Being ethical takes constant diligence, and in many situations identifying the right choice can be difficult.

In this in-depth book, contributors from top companies in technology, finance, and other industries share experiences and lessons learned from collecting, managing, and analyzing data ethically. Data science professionals, managers, and tech leaders will gain a better understanding of ethics through powerful, real-world best practices.

Articles include:

Ethics Is Not a Binary Concept-Tim Wilson
How to Approach Ethical Transparency-Rado Kotorov
Unbiased ? Fair-Doug Hague
Rules and Rationality-Christof Wolf Brenner
The Truth About AI Bias-Cassie Kozyrkov
Cautionary Ethics Tales-Sherrill Hayes
Fairness in the Age of Algorithms-Anna Jacobson
The Ethical Data Storyteller-Brent Dykes
Introducing EthicizeT, the Fully AI-Driven Cloud-Based Ethics Solution!-Brian O'Neill
Be Careful with ´Decisions of the Heart´-Hugh Watson
Understanding Passive Versus Proactive Ethics-Bill Schmarzo


Table of contents

Preface
Why Now?
Ethics Are "Fuzzyö
Take Ownership of Ethics!
How the Book Is Organized
O'Reilly Online Learning
How to Contact Us
Acknowledgments
I. Foundational Ethical Principles
1. The Truth About AI Bias
Cassie Kozyrkov
2. Introducing EthicizeT, the fully AI-driven cloud-based ethics solution!
Brian T. O'Neill
3. "Ethicalö Is Not a Binary Concept
Tim Wilson
4. Cautionary Ethics Tales: Phrenology, Eugenics,?...and Data Science?
Sherrill Hayes
5. Leadership for the Future: How to Approach Ethical Transparency
Rado Kotorov
6. Rules and Rationality
Christof Wolf Brenner
7. Understanding Passive Versus Proactive Ethics
Bill Schmarzo
8. Be Careful with "Decisions of the Heartö
Hugh Watson
9. Fairness in the Age of Algorithms
Anna Jacobson
10. Data Science Ethics: What Is the Foundational Standard?
Mario Vela
11. Understand Who Your Leaders Serve
Hassan Masum
II. Data Science and Society
12. Unbiased ? Fair: For Data Science, It Cannot Be Just About the Math
Doug Hague
13. Trust, Data Science, and Stephen Covey
James Taylor
14. Ethics Must Be a Cornerstone of the Data Science Curriculum
Linda Burtch
15. Data Storytelling: The Tipping Point Between Fact and Fiction
Brent Dykes
16. Informed Consent and Data Literacy Education Are Crucial to Ethics
Sherrill Hayes
17. First, Do No Harm
Eric Schmidt
18. Why Research Should Be Reproducible
Stuart Buck
19. Build Multiperspective AI
Hassan Masum and Sébastien Paquet
20. Ethics as a Competitive Advantage
Dave Mathias
21. Algorithmic Bias: Are You a Bystander or an Upstander?
Jitendra Mudhol and Heidi Livingston Eisips
22. Data Science and Deliberative Justice: The Ethics of the Voice of "the Otherö
Robert J. McGrath
23. Spam. Are You Going to Miss It?
John Thuma
24. Is It Wrong to Be Right?
Marty Ellingsworth
25. We're Not Yet Ready for a Trustmark for Technology
Hannah Kitcher and Laura James
III. The Ethics of Data
26. How to Ask for Customers' Data with Transparency and Trust
Rasmus Wegener
27. Data Ethics and the Lemming Effect
Bob Gladden
28. Perceptions of Personal Data
Irina Raicu
29. Should Data Have Rights?
Jennifer Lewis Priestley
30. Anonymizing Data Is Really, Really Hard
Damian Gordon
31. Just Because You Could, Should You? Ethically Selecting Data for Analytics
Steve Stone
32. Limit the Viewing of Customer Information by Use Case and Result Sets
Robert J. Abate
33. Rethinking the "Get the Dataö Step
Phil Bangayan
34. How to Determine What Data Can Be Used Ethically
Leandre Adifon
35. Ethics Is the Antidote to Data Breaches
Damian Gordon
36. Ethical Issues Are Front and Center in Today's Data Landscape
Kenneth Viciana
37. Silos Create Problems-Perhaps More Than You Think
Bonnie Holub
38. Securing Your Data Against Breaches Will Help Us Improve Health Care
Fred Nugen
IV. Defining Appropriate Targets & Appropriate Usage
39. Algorithms Are Used Differently than Human Decision Makers
Rachel Thomas
40. Pay Off Your Fairness Debt, the Shadow Twin of Technical Debt
Arnobio Morelix
41. AI Ethics
Cassie Kozyrkov
42. The Ethical Data Storyteller
Brent Dykes
43. Imbalance of Factors Affecting Societal Use of Data Science
Nenad Jukic
44. Probability-the Law That Governs Analytical Ethics
Thomas Casey
45. Don't Generalize Until Your Model Does
Michael Hind
46. Toward Value-Based Machine Learning
Ron Bodkin
47. The Importance of Building Knowledge in Democratized Data Science Realms
Justin Cochran
48. The Ethics of Communicating Machine Learning Predictions
Rado Kotorov
49. Avoid the Wrong Part of the Creepiness Scale
Hugh Watson
50. Triage and Artificial Intelligence
Peter Bruce
51. Algorithmic Misclassification-the (Pretty) Good, the Bad, and the Ugly
Arnobio Morelix
52. The Golden Rule of Data Science
Kris Hunt
53. Causality and Fairness-Awareness in Machine Learning
Scott Radcliffe
54. Facial Recognition on the Street and in Shopping Malls
Brendan Tierney
V. Ensuring Proper Transparency & Monitoring
55. Responsible Design and Use of AI: Managing Safety, Risk, and Transparency
Pamela Passman
56. Blatantly Discriminatory Algorithms
Eric Siegel
57. Ethics and Figs: Why Data Scientists Cannot Take Shortcuts
Jennifer Lewis Priestley
58. What Decisions Are You Making?
James Taylor
59. Ethics, Trading, and Artificial Intelligence
John Power
60. The Before, Now, and After of Ethical Systems
Evan Stubbs
61. Business Realities Will Defeat Your Analytics
Richard Hackathorn
62. How Can I Know You're Right?
Majken Sander
63. A Framework for Managing Ethics in Data Science: Model Risk Management
Doug Hague
64. The Ethical Dilemma of Model Interpretability
Grant Fleming
65. Use Model-Agnostic Explanations for Finding Bias in Black-Box Models
Yiannis Kanellopoulos and Andreas Messalas
66. Automat