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97 things about ethics everyone in data science should know : collective wisdom from the experts /

by Franks, Bill [editor.].
Material type: materialTypeLabelBookPublisher: Beijing : O'Reilly, [2020]Edition: First edition.Description: xix, 323 pages : illustrations ; 23 cm.ISBN: 9781492072669; 1492072664.Other title: Ninety-seven things about ethics everyone in data science should know.Subject(s): Data mining -- Social aspects | Data mining -- Ethics | Artificial intelligence -- Ethics | Machine learning -- Ethics | Data mining -- Social aspects | Ethics
Partial contents:
Foundational ethical principles. The truth about AI bias / Cassie Kozyrkov -- Introducing ethicize, the fully AI-driven cloud-based ethics solution! / Brian T. O'Neill -- "Ethical" is not a binary concept / Tim Wilson -- Cautionary ethics tales : phrenology, eugenics, ... and data science? / Sherrill Hayes -- Leadership for the future : how to approach ethical transparency / Rado Kotorov -- Rules and rationality / Christof Wolf Brenner -- Bill Schmarzo -- Be careful with "decisions of the heart" / Hugh Watson -- Fairness in the age of algorithms -- Data science ethics : what is the foundational standard? / Mario Vela -- Understand who your leaders serve / Hassen Masum -- Data science and society. Unbiased [is not] fair : for data science, it cannot be just about the math / Doug Hague -- Trust, data science, and Stephen Covey / James Taylor -- Ethics must be a cornerstone of the data science curriculum / Linda Burtch -- Data storytelling : the tipping point between fact and fiction / Brent Dykes -- Informed consent and data literacy education are crucial to ethics / Sherrill Hayes -- First, do no harm / Eric Schmidt -- Why research should be reproducible / Stuart Buck -- Build multiperspective AI / Hassan Masum and Sébastien Paquet -- Ethics as a competitive advantage / Dave Mathias -- Algorithmic bias : are you a bystander or an upstander? / Jitendra Mudhol and Heidi Livingston Eisips -- Data science and deliberative justice : the ethics of the voice of "the other" / Robert J. McGrath -- Spam. Are you going to miss it? / John Thuma -- Is it wrong to be right? / Marty Ellingsworth -- We're not yet ready for a trustmark for technology / Hannah Kitcher and Laura James -- The ethics of data. How to ask for customers' data with transparency and trust / Rasmus Wegener -- Data ethics and the lemming effect / Bob Gladden -- Perceptions of personal data / Irina Raicu -- Should data have rights? / Jennifer Lewis Priestley -- Part III. The ethics of data. Chapter 26. How to ask for customers' data with transparency and trust -- Chapter 27. Data ethics and the lemming effect -- Chapter 28. Perceptions of personal data -- Chapter 29. Should data have rights? -- Chapter 30. Anonymizing data is really, really hard -- Chapter 31. Just because you could, should you? Ethically selecting data for analytics -- Chapter 32. Limit the viewing of customer information by use case and result sets -- Chapter 33. Rethinking the "get the data" step -- Chapter 34. How to determine what data can be used ethically -- Chapter 35. Ethics is the antidote to data breaches -- Chapter 36. Ethical issues are front and center in today's data landscape -- Chapter 37. Silos create problems, perhaps more than you think -- Chapter 38. Securing your data against breaches will help us improve health care -- Part IV. Defining appropriate targets & appropriate usage. Chapter 39. Algorithms are used differently than human decision makers -- Chapter 40. Pay off your fairness debt, the shadow twin of technical debt -- Chapter 41. AI ethics -- Chapter 42. The ethical data storyteller -- Chapter 43. Imbalance of factors affecting societal use of data science -- Chapter 44. Probability -- the law that governs analytical ethics -- Chapter 45. Don't generalize until your model does -- Chapter 46. Toward value-based machine learning -- Chapter 47. The importance of building knowledge in democratized data science realms -- Chapter 48. The ethics of communicating machine learning predictions -- Chapter 49. Avoid the wrong part of the creepiness scale -- Chapter 50. Triage and artificial intelligence -- Chapter 51. Algorithmic misclassification: the (pretty) good, the bad, and the ugly -- Chapter 52. The golden rule of data science -- Chapter 53. Causality and fairness -- awareness in machine learning -- Chapter 54. Facial recognition on the street and in shopping malls -- Part V. Ensuring proper transparency & monitoring. Chapter 55. Responsible design and use of AI: managing safety, risk, and transparency -- Chapter 56. Blatantly discriminatory algorithms -- Chapter 57. Ethics and figs: why data scientists cannot take shortcuts -- Chapter 58. What decisions are you making? -- Chapter 59. Ethics, trading, and artificial intelligence -- Chapter 60. The before, now, and after of ethical systems -- Chapter 61. Business realities will defeat your analytics -- Chapter 62. How can I know you're right? -- Chapter 63. A framework for managing ethics in data science: model risk management -- Chapter 64. The ethical dilemma of model interpretability -- Chapter 65. Use model-agnostic explanations for finding bias in black-box models -- Chapter 66. Automatically checking for ethics violations -- Chapter 67. Should chatbots be held to a higher ethical standard than humans? -- Chapter 68. "All models are wrong." What do we do about it? -- Chapter 69. Data transparency: what you don't know can hurt you -- Chapter 70. Toward algorithmic humility -- Part VI. Policy guidelines. Chapter 71. Equally distributing ethical outcomes in a digital age -- Chapter 72. Data ethics -- three key actions for the analytics leader -- Chapter 73. Ethics: the next big wave for data science careers? -- Chapter 74. Framework for designing ethics into enterprise data -- Chapter 75. Data science does not need a code of ethics -- Chapter 76. How to innovate responsibly -- Chapter 77. Implementing AI ethics governance and control -- Chapter 78. Artificial intelligence: legal liabilities amid emerging ethics -- Chapter 79. Make accountability a priority -- Chapter 80. Ethical data science: both art and science -- Chapter 81. Algorithmic impact assessments -- Chapter 82. Ethics and reflection at the core of successful data science -- Chapter 83. Using social feedback loops to navigate ethical questions -- Chapter 84. Ethical CRISP-DM: a framework for ethical data science development -- Chapter 85. Ethics rules in applied econometrics and data science -- Chapter 86. Are ethics nothing more than constraints and guidelines for proper societal behavior? -- Chapter 87. Five core virtues for data science and artificial intelligence -- Part VII. Case studies -- Chapter 88. Auto insurance: when data science and the business model intersect -- Chapter 89. To fight bias in predictive policing, justice can't be color-blind -- Chapter 90. When to say no to data -- Chapter 91. The paradox of an ethical paradox -- Chapter 92. Foundation for the inevitable laws for LAWS -- Chapter 93. A lifetime marketing analyst's perspective on consumer data privacy -- Chapter 94. 100% conversion: utopia or dystopia? -- Chapter 95. Random selection at Harvard? -- Chapter 96. To prepare or not to prepare for the storm -- Chapter 97. Ethics, AI, and the audit function in financial reporting -- Chapter 98. The gray line -- Contributors -- Index.
Summary: Written by renowned data science experts Foster Provost and Tom Fawcett, Data Science for Business introduces the fundamental principles of data science, and walks you through the "data-analytic thinking" necessary for extracting useful knowledge and business value from the data you collect. This guide also helps you understand the many data-mining techniques in use today-- Source other than the Library of Congress.
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Includes bibliographical references and index.

Part 1. Foundational ethical principles. 1. The truth about AI bias / Cassie Kozyrkov -- 2. Introducing ethicize, the fully AI-driven cloud-based ethics solution! / Brian T. O'Neill -- 3. "Ethical" 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 heart" / Hugh Watson -- 9. Fairness in the age of algorithms -- 10. Data science ethics : what is the foundational standard? / Mario Vela -- 11. Understand who your leaders serve / Hassen Masum -- Part 2. Data science and society. 12. Unbiased [is not] 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 other" / 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 -- Part 3. 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 -- Part III. The ethics of data. Chapter 26. How to ask for customers' data with transparency and trust -- Chapter 27. Data ethics and the lemming effect -- Chapter 28. Perceptions of personal data -- Chapter 29. Should data have rights? -- Chapter 30. Anonymizing data is really, really hard -- Chapter 31. Just because you could, should you? Ethically selecting data for analytics -- Chapter 32. Limit the viewing of customer information by use case and result sets -- Chapter 33. Rethinking the "get the data" step -- Chapter 34. How to determine what data can be used ethically -- Chapter 35. Ethics is the antidote to data breaches -- Chapter 36. Ethical issues are front and center in today's data landscape -- Chapter 37. Silos create problems, perhaps more than you think -- Chapter 38. Securing your data against breaches will help us improve health care -- Part IV. Defining appropriate targets & appropriate usage. Chapter 39. Algorithms are used differently than human decision makers -- Chapter 40. Pay off your fairness debt, the shadow twin of technical debt -- Chapter 41. AI ethics -- Chapter 42. The ethical data storyteller -- Chapter 43. Imbalance of factors affecting societal use of data science -- Chapter 44. Probability -- the law that governs analytical ethics -- Chapter 45. Don't generalize until your model does -- Chapter 46. Toward value-based machine learning -- Chapter 47. The importance of building knowledge in democratized data science realms -- Chapter 48. The ethics of communicating machine learning predictions -- Chapter 49. Avoid the wrong part of the creepiness scale -- Chapter 50. Triage and artificial intelligence -- Chapter 51. Algorithmic misclassification: the (pretty) good, the bad, and the ugly -- Chapter 52. The golden rule of data science -- Chapter 53. Causality and fairness -- awareness in machine learning -- Chapter 54. Facial recognition on the street and in shopping malls -- Part V. Ensuring proper transparency & monitoring. Chapter 55. Responsible design and use of AI: managing safety, risk, and transparency -- Chapter 56. Blatantly discriminatory algorithms -- Chapter 57. Ethics and figs: why data scientists cannot take shortcuts -- Chapter 58. What decisions are you making? -- Chapter 59. Ethics, trading, and artificial intelligence -- Chapter 60. The before, now, and after of ethical systems -- Chapter 61. Business realities will defeat your analytics -- Chapter 62. How can I know you're right? -- Chapter 63. A framework for managing ethics in data science: model risk management -- Chapter 64. The ethical dilemma of model interpretability -- Chapter 65. Use model-agnostic explanations for finding bias in black-box models -- Chapter 66. Automatically checking for ethics violations -- Chapter 67. Should chatbots be held to a higher ethical standard than humans? -- Chapter 68. "All models are wrong." What do we do about it? -- Chapter 69. Data transparency: what you don't know can hurt you -- Chapter 70. Toward algorithmic humility -- Part VI. Policy guidelines. Chapter 71. Equally distributing ethical outcomes in a digital age -- Chapter 72. Data ethics -- three key actions for the analytics leader -- Chapter 73. Ethics: the next big wave for data science careers? -- Chapter 74. Framework for designing ethics into enterprise data -- Chapter 75. Data science does not need a code of ethics -- Chapter 76. How to innovate responsibly -- Chapter 77. Implementing AI ethics governance and control -- Chapter 78. Artificial intelligence: legal liabilities amid emerging ethics -- Chapter 79. Make accountability a priority -- Chapter 80. Ethical data science: both art and science -- Chapter 81. Algorithmic impact assessments -- Chapter 82. Ethics and reflection at the core of successful data science -- Chapter 83. Using social feedback loops to navigate ethical questions -- Chapter 84. Ethical CRISP-DM: a framework for ethical data science development -- Chapter 85. Ethics rules in applied econometrics and data science -- Chapter 86. Are ethics nothing more than constraints and guidelines for proper societal behavior? -- Chapter 87. Five core virtues for data science and artificial intelligence -- Part VII. Case studies -- Chapter 88. Auto insurance: when data science and the business model intersect -- Chapter 89. To fight bias in predictive policing, justice can't be color-blind -- Chapter 90. When to say no to data -- Chapter 91. The paradox of an ethical paradox -- Chapter 92. Foundation for the inevitable laws for LAWS -- Chapter 93. A lifetime marketing analyst's perspective on consumer data privacy -- Chapter 94. 100% conversion: utopia or dystopia? -- Chapter 95. Random selection at Harvard? -- Chapter 96. To prepare or not to prepare for the storm -- Chapter 97. Ethics, AI, and the audit function in financial reporting -- Chapter 98. The gray line -- Contributors -- Index.

Written by renowned data science experts Foster Provost and Tom Fawcett, Data Science for Business introduces the fundamental principles of data science, and walks you through the "data-analytic thinking" necessary for extracting useful knowledge and business value from the data you collect. This guide also helps you understand the many data-mining techniques in use today-- Source other than the Library of Congress.

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Last Updated on September 22, 2019
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