Atjaunināt sīkdatņu piekrišanu

Understand, Manage, and Prevent Algorithmic Bias: A Guide for Business Users and Data Scientists 1st ed. [Mīkstie vāki]

4.00/5 (13 ratings by Goodreads)
  • Formāts: Paperback / softback, 245 pages, height x width: 235x155 mm, weight: 454 g, 1 Illustrations, black and white; XIII, 245 p. 1 illus., 1 Paperback / softback
  • Izdošanas datums: 08-Jun-2019
  • Izdevniecība: APress
  • ISBN-10: 1484248848
  • ISBN-13: 9781484248843
  • Mīkstie vāki
  • Cena: 51,37 €*
  • * ši ir gala cena, t.i., netiek piemērotas nekādas papildus atlaides
  • Standarta cena: 60,44 €
  • Ietaupiet 15%
  • Grāmatu piegādes laiks ir 3-4 nedēļas, ja grāmata ir uz vietas izdevniecības noliktavā. Ja izdevējam nepieciešams publicēt jaunu tirāžu, grāmatas piegāde var aizkavēties.
  • Daudzums:
  • Ielikt grozā
  • Piegādes laiks - 4-6 nedēļas
  • Pievienot vēlmju sarakstam
  • Formāts: Paperback / softback, 245 pages, height x width: 235x155 mm, weight: 454 g, 1 Illustrations, black and white; XIII, 245 p. 1 illus., 1 Paperback / softback
  • Izdošanas datums: 08-Jun-2019
  • Izdevniecība: APress
  • ISBN-10: 1484248848
  • ISBN-13: 9781484248843
Are algorithms friend or foe?

The human mind is evolutionarily designed to take shortcuts in order to survive. We jump to conclusions because our brains want to keep us safe. A majority of our biases work in our favor, such as when we feel a car speeding in our direction is dangerous and we instantly move, or when we decide not take a bite of food that appears to have gone bad. However, inherent bias negatively affects work environments and the decision-making surrounding our communities. While the creation of algorithms and machine learning attempts to eliminate bias, they are, after all, created by human beings, and thus are susceptible to what we call algorithmic bias.

In Understand, Manage, and Prevent Algorithmic Bias, author Tobias Baer helps you understand where algorithmic bias comes from, how to manage it as a business user or regulator, and how data science can prevent bias from entering statistical algorithms. Baer expertly addresses someof the 100+ varieties of natural bias such as confirmation bias, stability bias, pattern-recognition bias, and many others. Algorithmic bias mirrorsand originates inthese human tendencies. Baer dives into topics as diverse as anomaly detection, hybrid model structures, and self-improving machine learning.





While most writings on algorithmic bias focus on the dangers, the core of this positive, fun book points toward a path where bias is kept at bay and even eliminated. Youll come away with managerial techniques to develop unbiased algorithms, the ability to detect bias more quickly, and knowledge to create unbiased data. Understand, Manage, and Prevent Algorithmic Bias is an innovative, timely, and important book that belongs on your shelf. Whether you are a seasoned business executive, a data scientist, or simply an enthusiast, now is a crucial time to be educated about the impact of algorithmic bias on society and take an active role in fighting bias.







What You'll Learn









Study the many sources of algorithmic bias, including cognitive biases in the real world, biased data, and statistical artifact

Understand the risks of algorithmic biases, how to detect them, and managerial techniques to prevent or manage them

Appreciate how machine learning both introduces new sources of algorithmic bias and can be a part of a solution Be familiar with specific statistical techniques a data scientist can use to detect and overcome algorithmic bias













Who This Book is For

Business executives of companies using algorithms in daily operations; data scientists (from students to seasoned practitioners) developing algorithms; compliance officials concerned about algorithmic bias; politicians, journalists, and philosophers thinking about algorithmic bias in terms of its impact on society and possible regulatory responses;and consumers concerned about how they might be affected by algorithmic bias
About the Author vii
Acknowledgments ix
Preface xi
Part I An Introduction to Biases and Algorithms
1(50)
Chapter 1 Introduction
3(6)
Chapter 2 Bias in Human Decision-Making
9(12)
Chapter 3 How Algorithms Debias Decisions
21(8)
Chapter 4 The Model Development Process
29(12)
Chapter 5 Machine Learning in a Nutshell
41(10)
Part II Where Does Algorithmic Bias Come From?
51(56)
Chapter 6 How Real-World Biases Are Mirrored by Algorithms
53(6)
Chapter 7 Data Scientists' Biases
59(10)
Chapter 8 How Data Can Introduce Biases
69(10)
Chapter 9 The Stability Bias of Algorithms
79(8)
Chapter 10 Biases Introduced by the Algorithm Itself
87(8)
Chapter 11 Algorithmic Biases and Social Media
95(12)
Part III What to Do About Algorithmic Bias from a User Perspective
107(66)
Chapter 12 Options for Decision-Making
109(8)
Chapter 13 Assessing the Risk of Algorithmic Bias
117(6)
Chapter 14 How to Use Algorithms Safely
123(6)
Chapter 15 How to Detect Algorithmic Biases
129(32)
Chapter 16 Managerial Strategies for Correcting Algorithmic Bias
161(6)
Chapter 17 How to Generate Unbiased Data
167(6)
Part IV What to Do About Algorithmic Bias from a Data Scientist's Perspective
173(68)
Chapter 18 The Data Scientist's Role in Overcoming Algorithmic Bias
175(18)
Chapter 19 An X-Ray Exam of Your Data
193(16)
Chapter 20 When to Use Machine Learning
209(6)
Chapter 21 How to Marry Machine Learning with Traditional Methods
215(8)
Chapter 22 How to Prevent Bias in Self-Improving Models
223(10)
Chapter 23 How to Institutionalize Debiasing
233(8)
Index 241
Tobias Baer is a data scientist, psychologist, and top management consultant with over 20 years of experience in risk analytics. Until June 2018, he was Master Expert and Partner at McKinsey & Co., Inc., where he built McKinsey's Risk Advanced Analytics Center of Competence in India in 2004, led the Credit Risk Advanced Analytics Service Line globally, and served clients in over 50 countries on topics such as the development of analytical decision models for credit underwriting, insurance pricing, and tax enforcement, as well as debiasing decisions. Tobias has been pursuing a research agenda around analytics and decision making both at McKinsey (e.g., on debiasing judgmental decisions and on leveraging machine learning to develop highly transparent predictive models) and at University of Cambridge, UK (e.g., the effect of mental fatigue on decision bias).





Tobias holds a PhD in finance from University of Frankfurt, an MPhil in psychology from University of Cambridge, an MA in economics from UWM, and has done  undergraduate studies in business administration and law at University of Giessen. He started publishing as a teenager, writing about programming tricks for the Commodore C64 home computer in a German software magazine, and now blogs regularly on his LinkedIn page.