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 Title: Data Rules: Reinventing the Market Economy
 Author(s) Cristina Alaimo, Jannis Kallinikos
 Publisher: The MIT Press (June 4, 2024); eBook (Creative Commons Licensed)
 License(s): Creative Commons License (CC)
 Hardcover/Paperback: 238 pages
 eBook: PDF and PDF Files
 Language: English
 ISBN10/ASIN: 0262547937
 ISBN13: 9780262547932
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Book Description
Digital data have become the critical frontier where emerging economic practices and organizational forms confront the traditional economic order and its institutions. This book establish a new social science framework for studying the unprecedented social and economic restructuring driven by digital data.
About the Authors Cristina Alaimo is Assistant Professor (Research) of Digital Economy and Society at LUISS University, Rome.

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