Bernoulli's Fallacy

Statistical Illogic and the Crisis of Modern Science

audio cd

Published Oct. 26, 2021 by Audible Studios on Brilliance Audio.

ISBN:
978-1-7136-5106-2
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(4 reviews)

There is a logical flaw in the statistical methods used across experimental science. This fault is not a minor academic quibble: it underlies a reproducibility crisis now threatening entire disciplines. In an increasingly statistics-reliant society, this same deeply rooted error shapes decisions in medicine, law, and public policy with profound consequences. The foundation of the problem is a misunderstanding of probability and its role in making inferences from observations.

Aubrey Clayton traces the history of how statistics went astray, beginning with the groundbreaking work of the seventeenth-century mathematician Jacob Bernoulli and winding through gambling, astronomy, and genetics. Clayton recounts the feuds among rival schools of statistics, exploring the surprisingly human problems that gave rise to the discipline and the all-too-human shortcomings that derailed it. He highlights how influential nineteenth- and twentieth-century figures developed a statistical methodology they claimed was purely objective in order to silence critics of their political agendas, …

2 editions

An Incredible, Fairly Accessible Book on Statistics, Probability, and Science

Clayton delivers an incredible book for the ages, reviewing the methodology, math, and history of different statistical and probabilistic approaches to illustrate how twisted current scientific publishing has become. This is a masterful combination of the mathematical and historical to a degree I don't think I've ever seen, and while some probability background is definitely helpful I think it'll probably be accessible to novices as well. Clayton also doesn't shy away from the racist origins of most bedrock statistical methods, critiquing modern naming conventions as well. How many books on statistics quote bell hooks?!?! Finally, the book gets into the importance of taking Bayesian approaches to hypothesis testing, making the inherently subjective enterprise of science more explicit and the tests we run more understandable and valid. Highly recommend

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