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Weapons of Math Destruction: How Big Data Increases Inequality and Threatens Democracy Kindle Edition

4.4 4.4 out of 5 stars 4,742 ratings

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NEW YORK TIMES BESTSELLER • A former Wall Street quant sounds the alarm on Big Data and the mathematical models that threaten to rip apart our social fabric—with a new afterword
 
“A manual for the twenty-first-century citizen . . . relevant and urgent.”—Financial Times
 
NATIONAL BOOK AWARD LONGLIST • NAMED ONE OF THE BEST BOOKS OF THE YEAR BY The New York Times Book Review The Boston GlobeWired • Fortune • Kirkus Reviews • The Guardian • Nature • On Point
 
We live in the age of the algorithm. Increasingly, the decisions that affect our lives—where we go to school, whether we can get a job or a loan, how much we pay for health insurance—are being made not by humans, but by machines. In theory, this should lead to greater fairness: Everyone is judged according to the same rules.
 
But as mathematician and data scientist Cathy O’Neil reveals, the mathematical models being used today are unregulated and uncontestable, even when they’re wrong. Most troubling, they reinforce discrimination—propping up the lucky, punishing the downtrodden, and undermining our democracy in the process. Welcome to the dark side of Big Data.
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Editorial Reviews

Review

“O’Neil’s book offers a frightening look at how algorithms are increasingly regulating people. . . . Her knowledge of the power and risks of mathematical models, coupled with a gift for analogy, makes her one of the most valuable observers of the continuing weaponization of big data. . . . [She] does a masterly job explaining the pervasiveness and risks of the algorithms that regulate our lives.”—The New York Times Book Review

"
Weapons of Math Destruction is the Big Data story Silicon Valley proponents won't tell. . . . [It] pithily exposes flaws in how information is used to assess everything from creditworthiness to policing tactics . . . a thought-provoking read for anyone inclined to believe that data doesn't lie.”Reuters

“This is a manual for the twenty-first century citizen, and it succeeds where other big data accounts have failedit is accessible, refreshingly critical and feels relevant and urgent.”—Financial Times

"Insightful and disturbing."—New York Review of Books

Weapons of Math Destruction is an urgent critique of . . . the rampant misuse of math in nearly every aspect of our lives.”—Boston Globe

“A fascinating and deeply disturbing book.”Yuval Noah Harari, author of Sapiens

“Illuminating . . . [O’Neil] makes a convincing case that this reliance on algorithms has gone too far.”
—The Atlantic

“A nuanced reminder that big data is only as good as the people wielding it.”—Wired

“If you’ve ever suspected there was something baleful about our deep trust in data, but lacked the mathematical skills to figure out exactly what it was, this is the book for you.”—Salon

“O’Neil is an ideal person to write this book. She is an academic mathematician turned Wall Street quant turned data scientist who has been involved in Occupy Wall Street and recently started an algorithmic auditing company. She is one of the strongest voices speaking out for limiting the ways we allow algorithms to influence our lives. . . . While Weapons of Math Destruction is full of hard truths and grim statistics, it is also accessible and even entertaining. O’Neil’s writing is direct and easy to read—I devoured it in an afternoon.”—Scientific American

“Indispensable . . . Despite the technical complexity of its subject, Weapons of Math Destruction lucidly guides readers through these complex modeling systems. . . . O’Neil’s book is an excellent primer on the ethical and moral risks of Big Data and an algorithmically dependent world. . . . For those curious about how Big Data can help them and their businesses, or how it has been reshaping the world around them, Weapons of Math Destruction is an essential starting place.”National Post

“Cathy O’Neil has seen Big Data from the inside, and the picture isn’t pretty.
Weapons of Math Destruction opens the curtain on algorithms that exploit people and distort the truth while posing as neutral mathematical tools. This book is wise, fierce, and desperately necessary.”—Jordan Ellenberg, University of Wisconsin-Madison, author of How Not To Be Wrong

“O’Neil has become [a whistle-blower] for the world of Big Data . . . [in] her important new book. . . .  Her work makes particularly disturbing points about how being on the wrong side of an algorithmic decision can snowball in incredibly destructive ways.”Time

About the Author

Cathy O'Neil is a data scientist and author of the blog mathbabe.org. She earned a Ph.D. in mathematics from Harvard and taught at Barnard College before moving to the private sector, where she worked for the hedge fund D. E. Shaw. She then worked as a data scientist at various start-ups, building models that predict people’s purchases and clicks. O’Neil started the Lede Program in Data Journalism at Columbia and is the author of Doing Data Science. She is currently a columnist for Bloomberg View.

Product details

  • ASIN ‏ : ‎ B019B6VCLO
  • Publisher ‏ : ‎ Crown; Reprint edition (September 6, 2016)
  • Publication date ‏ : ‎ September 6, 2016
  • Language ‏ : ‎ English
  • File size ‏ : ‎ 2888 KB
  • Text-to-Speech ‏ : ‎ Enabled
  • Screen Reader ‏ : ‎ Supported
  • Enhanced typesetting ‏ : ‎ Enabled
  • X-Ray ‏ : ‎ Enabled
  • Word Wise ‏ : ‎ Enabled
  • Sticky notes ‏ : ‎ On Kindle Scribe
  • Print length ‏ : ‎ 254 pages
  • Customer Reviews:
    4.4 4.4 out of 5 stars 4,742 ratings

About the author

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Cathy O'Neil
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I am a mathematician turned quant turned algorithmic auditor living in Cambridge, MA.

Customer reviews

4.4 out of 5 stars
4.4 out of 5
4,742 global ratings
Must read, especially for students of engineering and computer science
5 Stars
Must read, especially for students of engineering and computer science
This is a thoughtful and very approachable introduction and review to the societal and personal consequences of data mining, data science, and machine learning practices which seem at times extraordinarily successful. While others have breached the barriers of this subject, Professor O'Neil is the first to deal with it in the call-to-action manner it deserves. This is a book you should definitely read this year, especially if you are a parent. It should be required reading for anyone who practices in the field before beginning work.I have a few quibbles about the book's observations based on its very occasional leaps of logic and some quick interpretations of history.For example, while I wholeheartedly deplore the pervasive use of e-scores and a financing system which confounds absence of information with higher risk (that is, fails to posit and apply proper Bayesian priors), the sentence "But framing debt as a moral issue is a mistake", while correct, ignores the widespread practice of debtors courts and prisons in the history of the United States. This is really not something new, only a new form. Perhaps it is more pervasive.For a few of the cases used to illustrate WMDs, there are other social changes which exacerbate matters, rather than abused algorithms being a cause. For instance, the idea of individual home ownership was not such a Big Deal in the past, especially for people without substantial means. These less fortunate individuals resigned themselves to renting their entire lives. Having a society and a group of banks pushing home ownership onto people who can barely afford it sets them up for financial hardship, loss of home, and credit.What will be interesting to see is where the movement to fix these serious problems will go. Protests are good and necessary but, eventually, engagement with the developers of actual or potential WMDs is required. An Amazon review is not a place to write more of this, nor give some of my ideas. Accordingly, I have written a full review at my blog (see the image) for the purpose.My primary recommendation is a plea for rigorous testing of anything which could become a WMD. It's apparent these systems touch the lives of many people. Just as in the case of transportation systems, it seems to me that we as a society have very right to demand these systems be similarly tested, beyond the narrow goals of the companies who are building them. This will result in fewer being built, but, as Dr O'Neil has described, building fewer bad systems can only be a good thing.
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Top reviews from the United States

Reviewed in the United States on January 29, 2019
Welcome to the cruel reign of highly efficient algorithms! Yay...

In short, this is an excellent albeit very high-level overview of the most pressing techno-moral issues at the core of advancements in Machine Learning, AI, and the many obscure mathematical models quietly ruining running our lives. Be advised, those looking for mathematical exposition or in-depth explanations about the models mentioned herein will be better served elsewhere.

As a data-science/machine-learning practitioner, I found O'Neil's case and her supporting material both edifying and deeply concerning. You see, I had heard stories of algos running amok, kicking asses and taking names in the all consuming search for optimizing ways to squeeze cents out of each byte of data comprising our cyber identities, but the extent of the chicanery employed by the companies and their analysts in their approach is just so deliciously evil that you would think they're secretly engineered by cats.

While I found much of the book solidly researched and cogent in its underlying argument, from time to time I did find some minor quibbles with her points. For instance, early on in the text she recounts her time as a quantitative analyst at a high-caliber Wall Street hedge fund, where she ultimately came to the conclusion that it was the insidious power of math that engendered much of the chaos that resulted in the financial crisis of 2008. However, not five pages later, she mentions leaving said fund to go work for an investement risk consultancy firm, where her team's detailed analysis would go unheeded by the very same firms employing them (they just needed to look like they were being responsible by carrying out due diligence). So, it's not that the math was bad, or that the models failed to take into account this or that variable, it's just that the guys running the show knew the risks but decided to gamble on them anyways.

This theme is repeated throughout, as her case studies expose a deep disregard on the part of the algo overlords to rectify unfair practices unless legally obliged to do so. One can see how deeply flawed this attitude is and where it may lead us, especially under the mercy of an arguably lethargic political system; random fact: in my home country there's a saying, "hecha la ley, hecha la trampa", which roughly translates to "by the time the law is written, a new snare is already in place". Traditional politicians will never keep up with the tech sector.

Which brings me to the saddest part of the book, which is the author's attempt to lay down a blueprint for bringing much needed change. I can tell she deeply cares about the issues at the core of her argument, but I'm just not that convinced any of them could ever work without somehow making it simultaneously profitable to the companies involved.

All in all, I think most of us would do well to give this read if only to get a sense of what's at stake here, and how we ultimately came to be unwilling participants in this curve-fitting, dot-connecting, profits-above-all game.
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Reviewed in the United States on February 8, 2017
I was excited to read this book as soon as I heard Cathy O'Neill, the author, interviewed on EconTalk.

O'Neill's hypothesis is that algorithms and machine learning can be useful, but they can also be destructive if they are (1) opaque, (2) scalable and (3) damaging. Put differently, an algorithm that determines whether you should be hired or fired, given a loan or able to retire on your savings is a WMD if it is opaque to users, "beneficiaries" and the public, has an impact on a large group of people at once, and "makes decisions" that have large social, financial or legal impacts. WMDs can leave thousands in jail or bankrupt pensions, often without warning or remorse.

As examples of non-WMDs, consider bitcoin/blockchain (the code and transactions are published), algorithms developed by a teacher (small scale), and Amazon's "recommended" lists, which are not damaging (because customers can decide to buy or not).

As examples of WMDs (many of which are explained in the book), consider Facebook's "newsfeed" algorithm, which is opaque (based on their internal advertising model), scaled (1.9 billion disenfranchised zombies) and damaging (echo-chamber, anyone?)

I took numerous notes while reading this book, which I think everyone interested in the rising power of "big data" (or big brother) or bureaucratic processes should read, but I will only highlight a few:

* Models are imperfect -- and dangerous if they are given too much "authority" (as I've said)
* Good systems use feedback to improve in transparent ways (they are anti-WMDs)
WMDs punish the poor because the rich can afford "custom" systems that are additionally mediated by professionals (lawyers, accountants, teachers)
* Models are more dangerous the more removed their data are from the topic of interest, e.g., models of "teacher effectiveness" based on "student grades" (or worse alumni salaries)
* "Models are opinions embedded in mathematics" (what I said) which means that those weak in math will suffer more. That matters when "American adults... are literally the worst [at solving digital problems] in the developed world."
* It is easy for a "neutral" variable (e.g., postal code) to reproduce a biased variable (e.g., race)
* Wall Street is excellent at scaling up a bad idea, leading to huge financial losses (and taxpayer bailouts). It was not an accident that Wall Street "messed up." They knew that profits were private but losses social.
* Many for-profit colleges use online advertisements to attract (and rip off) the most vulnerable -- leaving them in debt and/or taxpayers with the bill. Sad.
* A good program (for education or crime prevention) also relies on qualitative factors that are hard to code into algorithms. Ignore those and you're likely to get a biased WMD. I just saw a documentary on urbanism that asked "what do the poor want -- hot water or a bathtub?" They wanted a bathtub because they had never had one and could not afford to heat water. #checkyourbias
* At some points in this book, I disagreed with O'Neill's preference for justice over efficiency. She does not want to allow employers to look at job applicants' credit histories because "hardworking people might lose jobs." Yes, that's true, but I can see why employers are willing to lose a few good people to avoid a lot of bad people, especially if they have lots of remaining (good credit) applicants. Should this happen at the government level? Perhaps not, but I don't see why a hotel chain cannot do this: the scale is too small to be a WMD.
* I did, OTOH, notice that peer-to-peer lending might be biased against lender like me (I use Lending Club, which sucks) who rely on their "public credit models" as it seems that these models are badly calibrated, leaving retail suckers like me to lose money while institutional borrowers are given preferential access.
* O'Neill's worries about injustice go a little too far in her counterexamples of the "safe driver who needs to drive through a dangerous neighborhood at 2am" as not deserving to face higher insurance prices, etc. I agree that this person may deserve a break, but the solution to this "unfair pricing" is not a ban on such price discrimination but an increase in competition, which has a way of separating safe and unsafe drivers (it's called a "separating equilibrium" in economics). Her fear of injustice makes me think that she's perhaps missing the point. High driving insurance rates are not a blow against human rights, even if they capture an imperfect measure of risk, because driving itself is not a human right. Yes, I know it's tough to live without a car in many parts of the US, but people suffering in those circumstances need to think bigger about maybe moving to a better place.
* Worried about bias in advertisements? Just ban all of them.
* O'Neill occasionally makes some false claims, e.g., that US employers offered health insurance as a perk to attract scarce workers during WWII. That was mainly because of a government-ordered wage freeze that incentivised firms to offer "more money" via perks. In any case, it would be good to look at how other countries run their health systems (I love the Dutch system) before blaming all US failures on WMDs.
* I'm sympathetic to the lies and distortions that Facebook and other social media spread (with the help of WMDs), but I've gotta give Trump credit for blowing up all the careful attempts to corral, control and manipulate what people see or think (but maybe he had a better way to manipulate). Trump has shown that people are willing to ignore facts to the point where it might take a real WMD blowing up in their neighborhood to take them off auto pilot.
* When it comes to political manipulations, I worry less about WMDs than the total lack of competition due to gerrymandering. In the 2016 election, 97 percent of representatives were re-elected to the House.
* Yes, I agree that humans are better at finding and using nuances, but those will be overshadowed as long as there's a profit (or election) to win. * * * Can we push back on those problems? Yes, if we realize how our phones are tracking us, how GPA is not your career, or how "the old boys network" actually produced a useful mix of perspectives.
* Businesses will be especially quick to temper their enthusiasm when they notice that WMDs are not nearly so clever. What worries me more are politicians or bureaucrats who believe a salesman pitching a WMD that will save them time but harm citizens. That's how we got dumb do not fly lists, and other assorted government failures.
* Although I do not put as much faith in "government regulation" as a solution to this problem as I put into competition, I agree with O'Neill that consumers should own their data and companies only get access to it on an opt-in model, but that model will be broken for as long as the EULA requires that you give up lots of data in exchange for access to the "free" platform. Yes, Facebook is handy, but do you want Facebook listening to your phone all the time?

Bottom Line: I give this book FOUR STARS for its well written, enlightening expose of MWDs. I would have preferred less emphasis on bureaucratic solutions and more on market, competition, and property rights solutions.
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Reviewed in the United States on February 3, 2024
As a non math person it helped frame the need to see math models and their power of prediction is valuable but not flawless truth .Despite the changes technically and legally it is still a worthy read and accessible to the non tech individual.
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Top reviews from other countries

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Renato Morello
5.0 out of 5 stars Excelente!
Reviewed in Brazil on April 13, 2022
É evidente que os sistemas de análise, nas mais diversas áreas e para os mais diversos usos e finalidades, têm falhas porque são construídos para codificar conceitos e preconceitos de pessoas que os idealizam. Se uma WMD (weapon of math destruction) é criada e usada sem que seu criador tenha conhecimento de suas falhas e injustiças, já é algo bem ruim. Mas, quando uma WMD é criada para, de forma consciente, dar mais poder a uns às custas de grandes injustiças com outros, é algo muito pior. É preciso haver uma forma de controle independente para garantir que os modelos matemáticos sejam usados para o bem e que o lucro e a “eficiência” não possam ser mais importantes que a justiça. As ferramentas estão à nossa disposição. Agora é preciso que o ser humano as use com boa vontade. É necessário haver amor e respeito ao próximo pois, caso contrário, o mundo será um lugar cada vez pior. Este é um excelente livro por mostrar bem claramente como as coisas estão funcionando atualmente e o que devemos fazer para melhorar e nos proteger de injustiças e armadilhas automatizadas que tornam a vida de milhões de pessoas cada vez mais difícil. Parabéns à autora.
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Jesus Salas
5.0 out of 5 stars Matemáticas de destrucción masiva
Reviewed in Mexico on October 31, 2021
Es un ensayo en el que se revisa el papel de los algoritmos y la estadística en la predicción del mundo moderno, con el objeto de atraer nuestra atención al tema y con mente humana enfrentar los sesgos y malos usos que estas herramientas pueden tener si abdicamos de la responsabilidad de revisarlos y actualizarlos
4 people found this helpful
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VCGLL
5.0 out of 5 stars Excellent
Reviewed in the Netherlands on December 5, 2023
Wonderful book! An eye opener over the IA world and the maths. Worth it!
Ian Doyle
5.0 out of 5 stars Informative and thought provoking
Reviewed in the United Kingdom on September 25, 2023
A compelling read, I couldn't put it down and read it in two sittings. O'Neill uses lots of clear real world examples to highlight her concerns. Highly recommend.
P M.
5.0 out of 5 stars A great read
Reviewed in India on December 12, 2022
A must read book to understand and learn about the AI models
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