Armi di distruzione matematica

Come i big data aumentano la disuguaglianza e minacciano la democrazia

Inbunden, 368 sidor

På Italiano

Publicerades 5 september 2017 av Bompiani.

ISBN:
978-88-452-9421-1
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Visa i OpenLibrary

Lungi dall'essere modelli matematici oggettivi e trasparenti, gli algoritmi che ormai dominano la nostra quotidianità iperconnessa sono spesso vere e proprie "armi di distruzione matematica": non tengono conto di variabili fondamentali, incorporano pregiudizi e se sbagliano non offrono possibilità di appello. Queste armi pericolose giudicano insegnanti e studenti, vagliano curricula, stabiliscono se concedere o negare prestiti, valutano l'operato dei lavoratori, influenzano gli elettori, monitorano la nostra salute. Basandosi su case studies nei campi più disparati ma che appartengono alla vita di ognuno di noi, O'Neil espone i rischi della discriminazione algoritmica a favore di modelli matematici più equi ed etici. Perché rivestire i pregiudizi di un'apparenza statistica non li rende meno pregiudizi.

12 utgåvor

recenserade Weapons of Math Destruction av Cathy O'Neil

Against proxies, predictive moddeling, and automated decision-making

5 years after my first read, I am discovering new aspects of Cathy O’Neil’s Weapons of Math Destruction (2016). Some of her examples have lost their urgency – by now, most people understand that they are the ‘product’ rather than the consumer, and in Europe, the GDPR has addressed some of the excesses of automated decision-making and profiling – but O’Neil’s widely cited work remains highly relevant. I read it consecutively with Meredith Broussard’s Artificial Unintelligence; the books complement each other perfectly.

Toxic proxies Although O’Neil doesn’t explicitly define it, a ‘weapon of math destruction’ is an algorithm that is opaque (‘black box’), damaging (harmful to individuals or society), and scalable (applied broadly). Closely associated are automated decision-making, predictive modelling, profiling, and the use of proxies. Especially the last of these struck me this time. Since the truth is often too difficult to quantify, models are rely on …

An excellent demonstration of the devastating pervasiveness of Big Data

This book takes you on a journey through all areas of life and shows how Big Data systems cause harm in all of them. Through the examination of these case studies, it also gets to the fundamental issues with Big Data and proposes ways to change our perspectives on it.

This book is really good. It is clear, understandable for a layperson and very well-rounded. I would give it a 5/5 if there weren't these two points:

  • it is completely US-centric. The case studies are all domestic. This weakens its explaining power for the rest of the world, imo. (this isn't to say that it doesn't make sense or that it's wrong for a US citizen to only write about the US)
  • it's 8 years old now, and while it's analyses are not at all outdated, the world of Big Data has evolved since 2016. I …

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