How to think about data science
Author(s)
Bibliographic Information
How to think about data science
(Chapman & Hall/CRC data science series)
CRC Press, 2023
- : pbk
Available at 2 libraries
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Note
"A Chapman & Hall book"
Includes bibliographical references (p. 247-270) and index
Description and Table of Contents
Description
This book is a timely and critical introduction for those interested in what data science is (and isn't), and how it should be applied. The language is conversational and the content is accessible for readers without a quantitative or computational background; but, at the same time, it is also a practical overview of the field for the more technical readers. The overarching goal is to demystify the field and teach the reader how to develop an analytical mindset instead of following recipes. The book takes the scientist's approach of focusing on asking the right question at every step as this is the single most important factor contributing to the success of a data science project. Upon finishing this book, the reader should be asking more questions than I have answered. This book is, therefore, a practising scientist's approach to explaining data science through questions and examples.
Table of Contents
A bird's-eye view and the art of asking questions. Descriptive Analytics. Predictive Analytics. How are predictive models trained and evaluated? Are our algorithms racist, sexist and discriminating? Personal data, privacy and cybersecurity. What are the limits of Artificial Intelligence?
by "Nielsen BookData"