Buy new:
-39% $17.15$17.15
Ships from: Amazon Sold by: Mesom Book
Save with Used - Good
$8.77$8.77
Ships from: Amazon Sold by: GREENWORLD GOODS

Download the free Kindle app and start reading Kindle books instantly on your smartphone, tablet, or computer - no Kindle device required.
Read instantly on your browser with Kindle for Web.
Using your mobile phone camera - scan the code below and download the Kindle app.

Image Unavailable
Color:
-
-
-
- To view this video download Flash Player
-
-
VIDEO
-
The Signal and the Noise: Why So Many Predictions Fail-But Some Don't Hardcover – January 1, 2012
Purchase options and add-ons
One of The Wall Street Journal’s Ten Best Works of Nonfiction of the Year
“Could turn out to be one of the more momentous books of the decade.”—The New York Times Book Review
Most predictions fail, often at great cost to society, because experts and laypeople mistake more confident predictions for more accurate ones. But overconfidence is often the reason for failure. If our appreciation of uncertainty improves, our predictions can get better too. This is the “prediction paradox”: The more humility we have about our ability to make predictions, the more successful we can be in planning for the future.
Drawing on his own groundbreaking work in sports and politics, Nate Silver examines the world of prediction, investigating how to seek truth from data. In The Signal and the Noise, Silver visits innovative forecasters in a range of areas, from hurricanes to baseball to global pandemics, from the poker table to the stock market, from Capitol Hill to the NBA. He discovers that what the most accurate ones have in common is a superior command of probability—as well as a healthy dose of humility.
With everything from the global economy to the fight against disease hanging on the quality of our predictions, Nate Silver’s insights are an essential read.
- Print length544 pages
- LanguageEnglish
- PublisherPenguin Press
- Publication dateJanuary 1, 2012
- Dimensions6.28 x 1.18 x 9.55 inches
- ISBN-10159420411X
- ISBN-13978-1594204111
- Lexile measure1260L
Book recommendations, author interviews, editors' picks, and more. Read it now
Frequently bought together

Customers who viewed this item also viewed
Editorial Reviews
Amazon.com Review
From Bookforum
Review
“Mr. Silver, just 34, is an expert at finding signal in noise . . . Lively prose—from energetic to outraged . . . illustrates his dos and don’ts through a series of interesting essays that examine how predictions are made in fields including chess, baseball, weather forecasting, earthquake analysis and politics… [the] chapter on global warming is one of the most objective and honest analyses I’ve seen . . . even the noise makes for a good read.” —New York Times
"A serious treatise about the craft of prediction—without academic mathematics—cheerily aimed at lay readers. Silver's coverage is polymathic, ranging from poker and earthquakes to climate change and terrorism." —New York Review of Books
"Mr. Silver's breezy style makes even the most difficult statistical material accessible. What is more, his arguments and examples are painstakingly researched . . ." —Wall Street Journal
"Nate Silver is the Kurt Cobain of statistics . . . His ambitious new book, The Signal and the Noise, is a practical handbook and a philosophical manifesto in one, following the theme of prediction through a series of case studies ranging from hurricane tracking to professional poker to counterterrorism. It will be a supremely valuable resource for anyone who wants to make good guesses about the future, or who wants to assess the guesses made by others. In other words, everyone." —The Boston Globe
"Silver delivers an improbably breezy read on what is essentially a primer on making predictions." —Washington Post
“The Signal and the Noise is many things—an introduction to the Bayesian theory of probability, a meditation on luck and character, a commentary on poker's insights into life—but it's most important function is its most basic and absolutely necessary one right now: a guide to detecting and avoiding bullshit dressed up as data . . . What is most refreshing . . . is itshumility. Sometimes we have to deal with not knowing, and we need somebody to tell us that.” —Esquire
“[An] entertaining popularization of a subject that scares many people off . . .Silver’s journey from consulting to baseball analytics to professional poker to political prognosticating is very much that of a restless and curious mind. And this, more than number-crunching, is where real forecasting prowess comes from.” —Slate
“Nate Silver serves as a sort of Zen master to American election-watchers . . . In the spirit of Nassim Nicholas Taleb’s widely read The Black Swan, Mr. Silver asserts that humans are overconfident in their predictive abilities, that they struggle to think in probabilistic terms and build models that do not allow for uncertainty.” —The Economist
"Silver explores our attempts at forecasting stocks, storms, sports, and anything else not set in stone." —Wired
"The Signal and the Noise is essential reading in the era of Big Data that touches every business, every sports event, and every policymaker." —Forbes.com
“Laser sharp. Surprisingly, statistics in Silver’s hands is not without some fun.” —Smithsonian Magazine
“A substantial, wide-ranging, and potentially important gauntlet of probabilistic thinking based on actual data thrown at the feet of a culture determined to sweep away silly liberal notions like ‘facts.’” —The Village Voice
“Silver shines a light on 600 years of human intelligence-gathering—from the advent of the printing press all the way through the Industrial Revolution and up to the current day—and he finds that it's been an inspiring climb. We've learned so much, and we still have so much left to learn.” —MLB.com
“Nate Silver’s The Signal and the Noise is The Soul of a New Machine for the 21st century (a century we thought we’d be a lot better at predicting than we actually are). Our political discourse is already better informed and more data-driven because of Nate’s influence. But here he shows us what he has always been able to see in the numbers—the heart and the ethical imperative of getting the quantitative questions right. A wonderful read—totally engrossing." —Rachel Maddow, author of Drift
“Yogi Berra was right: ‘forecasting is hard, especially about the future.’ In this important book, Nate Silver explains why the performance of experts varies from prescient to useless and why we must plan for the unexpected. Must reading for anyone who cares about what might happen next.” —Richard Thaler, co-author of Nudge
About the Author
Excerpt. © Reprinted by permission. All rights reserved.
At about the time The Signal and the Noise was first published in September 2012, “Big Data” was on its way becoming a Big Idea. Google searches for the term doubled over the course of a year,1 as did mentions of it in the news media.2 Hundreds of books were published on the subject. If you picked up any business periodical in 2013, advertisements for Big Data were as ubiquitous as cigarettes in an episode of Mad Men.
But by late 2014, there was evidence that trend had reached its apex. The frequency with which Big Data was mentioned in corporate press releases had slowed down and possibly begun to decline.3 The technology research firm Gartner even declared that Big Data had passed the peak of its “hype cycle.”4
I hope that Gartner is right. Coming to a better understanding of data and statistics is essential to help us navigate our lives. But as with most emerging technologies, the widespread benefits to science, industry, and human welfare will come only after the hype has died down.
FIGURE P-1: BIG DATA MENTIONS IN CORPORATE PRESS RELEASES
I worry that certain events in my life have contributed to the hype cycle. On November 6, 2012, the statistical model at my Web site FiveThirtyEight “called” the winner of the American presidential election correctly in all fifty states. I received a congratulatory phone call from the White House. I was hailed as “lord and god of the algorithm” by The Daily Show’s Jon Stewart. My name briefly received more Google search traffic than the vice president of the United States.
I enjoyed some of the attention, but I felt like an outlier—even a fluke. Mostly I was getting credit for having pointed out the obvious—and most of the rest was luck.*
To be sure, it was reasonably clear by Election Day that President Obama was poised to win reelection. When voters went to the polls on election morning, FiveThirtyEight’s statistical model put his chances of winning the Electoral College at about 90 percent.* A 90 percent chance is not quite a sure thing: Would you board a plane if the pilot told you it had a 90 percent chance of landing successfully? But when there’s only reputation rather than life or limb on the line, it’s a good bet. Obama needed to win only a handful of the swing states where he was tied or ahead in the polls; Mitt Romney would have had to win almost all of them.
But getting every state right was a stroke of luck. In our Election Day forecast, Obama’s chance of winning Florida was just 50.3 percent—the outcome was as random as a coin flip. Considering other states like Virginia, Ohio, Colorado, and North Carolina, our chances of going fifty-for-fifty were only about 20 percent.5 FiveThirtyEight’s “perfect” forecast was fortuitous but contributed to the perception that statisticians are soothsayers—only using computers rather than crystal balls.
This is a wrongheaded and rather dangerous idea. American presidential elections are the exception to the rule—one of the few examples of a complex system in which outcomes are usually more certain than the conventional wisdom implies. (There are a number of reasons for this, not least that the conventional wisdom is often not very wise when it comes to politics.) Far more often, as this book will explain, we overrate our ability to predict the world around us. With some regularity, events that are said to be certain fail to come to fruition—or those that are deemed impossible turn out to occur.
If all of this is so simple, why did so many pundits get the 2012 election wrong? It wasn’t just on the fringe of the blogosphere that conservatives insisted that the polls were “skewed” toward President Obama. Thoughtful conservatives like George F. Will6 and Michael Barone7 also predicted a Romney win, sometimes by near-landslide proportions.
One part of the answer is obvious: the pundits didn’t have much incentive to make the right call. You can get invited back on television with a far worse track record than Barone’s or Will’s—provided you speak with some conviction and have a viewpoint that matches the producer’s goals.
An alternative interpretation is slightly less cynical but potentially harder to swallow: human judgment is intrinsically fallible. It’s hard for any of us (myself included) to recognize how much our relatively narrow range of experience can color our interpretation of the evidence. There’s so much information out there today that none of us can plausibly consume all of it. We’re constantly making decisions about what Web site to read, which television channel to watch, and where to focus our attention.
Having a better understanding of statistics almost certainly helps. Over the past decade, the number of people employed as statisticians in the United States has increased by 35 percent8 even as the overall job market has stagnated. But it’s a necessary rather than sufficient part of the solution. Some of the examples of failed predictions in this book concern people with exceptional intelligence and exemplary statistical training—but whose biases still got in the way.
These problems are not so simple and so this book does not promote simple answers to them. It makes some recommendations but they are philosophical as much as technical. Once we’re getting the big stuff right—coming to a better understanding of probably and uncertainty; learning to recognize our biases; appreciating the value of diversity, incentives, and experimentation—we’ll have the luxury of worrying about the finer points of technique.
Gartner’s hype cycle ultimately has a happy ending. After the peak of inflated expectations there’s a “trough of disillusionment”—what happens when people come to recognize that the new technology will still require a lot of hard work.
FIGURE P-2: GARTNER’S HYPE CYCLE
But right when views of the new technology have begun to lapse from healthy skepticism into overt cynicism, that technology can begin to pay some dividends. (We’ve been through this before: after the computer boom in the 1970s and the Internet commerce boom of the late 1990s, among other examples.) Eventually it matures to the point when there are fewer glossy advertisements but more gains in productivity—it may even have become so commonplace that we take it for granted. I hope this book can accelerate the process, however slightly.
This is a book about information, technology, and scientific progress. This is a book about competition, free markets, and the evolution of ideas. This is a book about the things that make us smarter than any computer, and a book about human error. This is a book about how we learn, one step at a time, to come to knowledge of the objective world, and why we sometimes take a step back.
This is a book about prediction, which sits at the intersection of all these things. It is a study of why some predictions succeed and why some fail. My hope is that we might gain a little more insight into planning our futures and become a little less likely to repeat our mistakes.
More Information, More Problems
The original revolution in information technology came not with the microchip, but with the printing press. Johannes Gutenberg’s invention in 1440 made information available to the masses, and the explosion of ideas it produced had unintended consequences and unpredictable effects. It was a spark for the Industrial Revolution in 1775,1 a tipping point in which civilization suddenly went from having made almost no scientific or economic progress for most of its existence to the exponential rates of growth and change that are familiar to us today. It set in motion the events that would produce the European Enlightenment and the founding of the American Republic.
But the printing press would first produce something else: hundreds of years of holy war. As mankind came to believe it could predict its fate and choose its destiny, the bloodiest epoch in human history followed.2
Books had existed prior to Gutenberg, but they were not widely written and they were not widely read. Instead, they were luxury items for the nobility, produced one copy at a time by scribes.3 The going rate for reproducing a single manuscript was about one florin (a gold coin worth about $200 in today’s dollars) per five pages,4 so a book like the one you’re reading now would cost around $20,000. It would probably also come with a litany of transcription errors, since it would be a copy of a copy of a copy, the mistakes having multiplied and mutated through each generation.
This made the accumulation of knowledge extremely difficult. It required heroic effort to prevent the volume of recorded knowledge from actually decreasing, since the books might decay faster than they could be reproduced. Various editions of the Bible survived, along with a small number of canonical texts, like from Plato and Aristotle. But an untold amount of wisdom was lost to the ages,5 and there was little incentive to record more of it to the page.
The pursuit of knowledge seemed inherently futile, if not altogether vain. If today we feel a sense of impermanence because things are changing so rapidly, impermanence was a far more literal concern for the generations before us. There was “nothing new under the sun,” as the beautiful Bible verses in Ecclesiastes put it—not so much because everything had been discovered but because everything would be forgotten.6
The printing press changed that, and did so permanently and profoundly. Almost overnight, the cost of producing a book decreased by about three hundred times,7 so a book that might have cost $20,000 in today’s dollars instead cost $70. Printing presses spread very rapidly throughout Europe; from Gutenberg’s Germany to Rome, Seville, Paris, and Basel by 1470, and then to almost all other major European cities within another ten years.8 The number of books being produced grew exponentially, increasing by about thirty times in the first century after the printing press was invented.9 The store of human knowledge had begun to accumulate, and rapidly.
FIGURE I-1: EUROPEAN BOOK PRODUCTION
As was the case during the early days of the World Wide Web, however, the quality of the information was highly varied. While the printing press paid almost immediate dividends in the production of higher quality maps,10 the bestseller list soon came to be dominated by heretical religious texts and pseudoscientific ones.11 Errors could now be mass-produced, like in the so-called Wicked Bible, which committed the most unfortunate typo in history to the page: thou shalt commit adultery.12 Meanwhile, exposure to so many new ideas was producing mass confusion. The amount of information was increasing much more rapidly than our understanding of what to do with it, or our ability to differentiate the useful information from the mistruths.13 Paradoxically, the result of having so much more shared knowledge was increasing isolation along national and religious lines. The instinctual shortcut that we take when we have “too much information” is to engage with it selectively, picking out the parts we like and ignoring the remainder, making allies with those who have made the same choices and enemies of the rest.
The most enthusiastic early customers of the printing press were those who used it to evangelize. Martin Luther’s Ninety-five Theses were not that radical; similar sentiments had been debated many times over. What was revolutionary, as Elizabeth Eisenstein writes, is that Luther’s theses “did not stay tacked to the church door.”14 Instead, they were reproduced at least three hundred thousand times by Gutenberg’s printing press15—a runaway hit even by modern standards.
The schism that Luther’s Protestant Reformation produced soon plunged Europe into war. From 1524 to 1648, there was the German Peasants’ War, the Schmalkaldic War, the Eighty Years’ War, the Thirty Years’ War, the French Wars of Religion, the Irish Confederate Wars, the Scottish Civil War, and the English Civil War—many of them raging simultaneously. This is not to neglect the Spanish Inquisition, which began in 1480, or the War of the Holy League from 1508 to 1516, although those had less to do with the spread of Protestantism. The Thirty Years’ War alone killed one-third of Germany’s population,16 and the seventeenth century was possibly the bloodiest ever, with the early twentieth staking the main rival claim.17
But somehow in the midst of this, the printing press was starting to produce scientific and literary progress. Galileo was sharing his (censored) ideas, and Shakespeare was producing his plays.
Shakespeare’s plays often turn on the idea of fate, as much drama does. What makes them so tragic is the gap between what his characters might like to accomplish and what fate provides to them. The idea of controlling one’s fate seemed to have become part of the human consciousness by Shakespeare’s time—but not yet the competencies to achieve that end. Instead, those who tested fate usually wound up dead.18
These themes are explored most vividly in The Tragedy of Julius Caesar. Throughout the first half of the play Caesar receives all sorts of apparent warning signs—what he calls predictions19 (“beware the ides of March”)—that his coronation could turn into a slaughter. Caesar of course ignores these signs, quite proudly insisting that they point to someone else’s death—or otherwise reading the evidence selectively. Then Caesar is assassinated.
“[But] men may construe things after their fashion / Clean from the purpose of the things themselves,” Shakespeare warns us through the voice of Cicero—good advice for anyone seeking to pluck through their newfound wealth of information. It was hard to tell the signal from the noise. The story the data tells us is often the one we’d like to hear, and we usually make sure that it has a happy ending.
And yet if The Tragedy of Julius Caesar turned on an ancient idea of prediction—associating it with fatalism, fortune-telling, and superstition—it also introduced a more modern and altogether more radical idea: that we might interpret these signs so as to gain an advantage from them. “Men at some time are masters of their fates,” says Cassius, hoping to persuade Brutus to partake in the conspiracy against Caesar.
The idea of man as master of his fate was gaining currency. The words predict and forecast are largely used interchangeably today, but in Shakespeare’s time, they meant different things. A prediction was what the soothsayer told you; a forecast was something more like Cassius’s idea.
The term forecast came from English’s Germanic roots,20 unlike predict, which is from Latin.21 Forecasting reflected the new Protestant worldliness rather than the otherworldliness of the Holy Roman Empire. Making a forecast typically implied planning under conditions of uncertainty. It suggested having prudence, wisdom, and industriousness, more like the way we now use the word foresight. 22
The theological implications of this idea are complicated.23 But they were less so for those hoping to make a gainful existence in the terrestrial world. These qualities were strongly associated with the Protestant work ethic, which Max Weber saw as bringing about capitalism and the Industrial Revolution.24 This notion of forecasting was very much tied in to the notion of progress. All that information in all those books ought to have helped us to plan our lives and profitably predict the world’s course.
• • •
The Protestants who ushered in centuries of holy war were learning how to use their accumulated knowledge to change society. The Industrial Revolution largely began in Protestant countries and largely in those with a free press, where both religious and scientific ideas could flow without fear of censorship.25
The importance of the Industrial Revolution is hard to overstate. Throughout essentially all of human history, economic growth had proceeded at a rate of perhaps 0.1 percent per year, enough to allow for a very gradual increase in population, but not any growth in per capita living standards.26 And then, suddenly, there was progress when there had been none. Economic growth began to zoom upward much faster than the growth rate of the population, as it has continued to do through to the present day, the occasional global financial meltdown notwithstanding.27
Product details
- Publisher : Penguin Press; 1st edition (January 1, 2012)
- Language : English
- Hardcover : 544 pages
- ISBN-10 : 159420411X
- ISBN-13 : 978-1594204111
- Lexile measure : 1260L
- Item Weight : 1.75 pounds
- Dimensions : 6.28 x 1.18 x 9.55 inches
- Best Sellers Rank: #154,427 in Books (See Top 100 in Books)
- #42 in Business Planning & Forecasting (Books)
- #98 in Statistics (Books)
- #138 in Probability & Statistics (Books)
- Customer Reviews:
Videos
Videos for this product
3:24
Click to play video
Watch a trailerMerchant Video
About the author

Nate Silver is the founder of FiveThirtyEight and the New York Times bestselling author of The Signal and the Noise and On the Edge. He writes the Substack “Silver Bulletin.”
Customer reviews
Customer Reviews, including Product Star Ratings help customers to learn more about the product and decide whether it is the right product for them.
To calculate the overall star rating and percentage breakdown by star, we don’t use a simple average. Instead, our system considers things like how recent a review is and if the reviewer bought the item on Amazon. It also analyzed reviews to verify trustworthiness.
Learn more how customers reviews work on AmazonCustomers say
Customers find the book well-researched and appreciate its accessible approach to complex statistical concepts, with one noting how it presents material clearly without being too technical. Moreover, the writing style receives positive feedback for its excellent explanations, and customers particularly value its coverage of weather and sports forecasting. However, the content receives mixed reactions, with some finding it fast-paced while others consider it a slow read. Additionally, the accuracy receives mixed feedback, with customers appreciating the discussion of probability and uncertainty, though one notes the lack of sufficient data for various predictions.
AI-generated from the text of customer reviews
Customers appreciate the book's information quality, noting its well-researched content and ability to talk about statistics in an intelligent way. They value the insights into forecasting and prediction, as well as the tips about the complexity of making predictions.
"...onto numerous domains including professional poker, baseball performance forecasting (he developed one of the best software program to do that),..." Read more
"...of explaining how thinking in a Bayesian way can help in forecasting all sorts of world events and how actual outcomes can be used to improve our..." Read more
"...First are students looking for a how-to book. Silver provides a lot of pointers and examples, but does not get into nuts and bolts details or supply..." Read more
"I find FREAKONOMICS and THE SIGNAL AND THE NOISE marvelously insightful books that are complementary...." Read more
Customers find the book readable, praising its superb prose and interesting narrative, with one customer describing it as a delightful page turner.
"...has also surprisingly broad applications. The conclusion of the chapter is also fascinating...." Read more
"...But overall it's a great read!" Read more
"...It is also important to note that this is perhaps the best general readership book from a Bayesian perspective -- a viewpoint that is overdue for..." Read more
"...FREAKONOMICS is a delightful page turner...." Read more
Customers appreciate the writing style of the book, finding it accessible for a general audience while presenting complex subject matter in concise, understandable pieces.
"...to repeat old information, Nate Silver finds clear and concise ways to convey interesting, new information...." Read more
"...It is both readable and technically accurate: it presents just enough model details yet avoids being formula-heavy...." Read more
"...When I read this book, it was all logical and made perfect sense. I was entertained on the way, as the topics were diverse and interesting...." Read more
"...that wise predictions come out of self-awareness, humility, and attention to detail: lack of self-awareness causes us to make predictions that tell..." Read more
Customers praise the book's success, describing it as a brilliant primer that performs as advertised.
"...The book starts out quite promising, as one reviewer says...." Read more
"...complex and important ideas that the author gets across clearly and well as he walks his way through the examples, and the analysis of the thought..." Read more
"...knowledge, insight and expertise go far beyond elections, and he's a superb writer...." Read more
"...Silver does an outstanding job conveying to a lay audience their strengths and weaknesses...." Read more
Customers appreciate the book's coverage of weather forecasting, with chapters dedicated to various aspects including baseball, climate science, and earthquakes.
"...Chapter 12 on climate change is really interesting. He differentiates between where scientists agree and disagree...." Read more
"...from baseball to politics, from earthquakes to finance, from climate science to chess...." Read more
"...The weather and earthquake chapters were also interesting, showing how forecasters have tried to soften their predictions from what the data..." Read more
"...Predicting weather is also discussed, including some of the tricks of the trade in giving the forecasts to the public...." Read more
Customers have mixed opinions about the accuracy of the book, with some appreciating its coverage of probability and uncertainty, while others find the predictions tricky.
"...It is both readable and technically accurate: it presents just enough model details yet avoids being formula-heavy...." Read more
"...Nate Silver explains why there is much uncertainty regarding climate models' projections...." Read more
"...It requires both deep understanding as well as statistical modelling...." Read more
"...It also gave some nice history on attempted earthquake prediction. Now for the problems with this book, and there are many:..." Read more
Customers have mixed opinions about the pacing of the book, with some finding it fast-paced and timely, while others describe it as a slow read that drags a little.
"...he has a comprehensive approach that uses all information, appropriately weighted and with a wary eye towards overconfidence...." Read more
"...accurate: it presents just enough model details yet avoids being formula-heavy...." Read more
"...However, it is very long and it drags badly in the chapters on Bayesian thinking...." Read more
"...In general, the discussion is engaging, fast-paced, and fairly dispassionate...." Read more
Customers find the book's content too anecdotal, with several chapters wandering between generalization and detailed discussion.
"...It was off-putting. But I marched on. The stories soon became pointless as far as the book's central aim is concerned; and the theme repetitive...." Read more
"...What I didn't like about this book was that it felt rushed. First of all, there were a lot of copyediting errors...." Read more
"...Some of the topics dragged a bit, and different readers may feel the same about different subjects depending on their interests...." Read more
"...It is a truly a great read which gives the reader a good idea of how professionals in so many fields do their work to make predictions that are..." Read more
Reviews with images

Which animal would you think defines a good forecaster, fox or hedgehog?
Top reviews from the United States
There was a problem filtering reviews. Please reload the page.
- Reviewed in the United States on October 25, 2012This book is similar to Steven Levitt's Freakonomics: A Rogue Economist Explores the Hidden Side of Everything (P.S.), Nassim Taleb's The Black Swan: Second Edition: The Impact of the Highly Improbable: With a new section: "On Robustness and Fragility", and James Surowiecki's The Wisdom of Crowds. All four books explore the intersection of data, human behavior, and outcomes. They explain how to quantify outcomes within the financial markets, professional sports or elections.
This book is especially interesting because Nate Silver has honed firsthand his statistical skills onto numerous domains including professional poker, baseball performance forecasting (he developed one of the best software program to do that), political elections (his "fivethirtyeight" blog). And, when he is not a firsthand practitioner he is a first class investigator.
The first seven chapters cover the errors and successes people have had in forecasting in various disciplines. Chapter eight is the most pedagogical, as the author explains the basics of Bayes Theorem that he considers as an overall solution to many of the errors we make in forecasting. The last five chapters focus on Bayesian thinking within various disciplines.
Nate Silver's coverage of the credit rating agencies "Catastrophic failure of prediction" (first chapter title) is excellent. In a single sentence on page 13, he captures the cause of the financial crisis: "In advance of the financial crisis, the system was so highly leveraged that a single lax assumption in the credit rating agencies played a huge role in bringing down the whole global financial system." Silver states that the AAA rated CDOs were deemed to have a default rate of only 0.12%. The actual default rate was 28% or over 200 times greater! This was because the rating agencies missed out the correlation between mortgage default rates at different locations when a nationwide home price downturn hit (see figure 1.2 on page 28. Watch out that he mislabeled column 3 and 4 from the right). Silver assesses that overall leverage was too high during the housing bubble. Fannie Mae and Freddie Mac had a debt-to-equity leverage of 70-to-1. Lehman Brothers and other investment banks were leveraged over 30-to-1. Borrowers had often loan-to-value ratios of 100% on their homes. The volume of credit default swaps, MBS, CDOs represented 30 to 60 times the volume of home sales during the bubble years (fig. 1.5 page 35). Nate Silver summarizes the errors made. Investors trusted the rating agencies. The rating agencies assumed home prices would never decline on a nationwide basis because they never had since the Great Depression. Lenders and borrowers believed rising home prices would bail them out through refinancing. Policymakers believed the financial system had enough capital and was self-disciplined. And, economists completely missed the ensuing severe recession.
Nate Silver focuses next on political predictions. This field of experts was so bad at predicting it motivated him to enter it by starting his fivethirtyeight blog. He documents their failings extensively. Within this chapter he refers to the theory of Philip Tetlock, professor of psychology and political science at Berkeley. Tetlock had surveyed predictions of experts in various fields. And, he categorized them within two archetypes: the hedgehogs and the foxes. The hedgehogs are dogmatic, rarely change their minds, and are very confident of their forecast. The foxes are just the opposite. They update their forecasts as often as new information warrants it. As a result, they make better forecasts.
The chapter on baseball is one of the best because of Silver's extensive firsthand experience. He uncovers many concepts applicable to many sports such as the age-curve of baseball performance (pg. 81). All sports have a predetermined age-curve. Actually, every single aspects of life including life itself have predetermined age-curves. His description of what it takes to be a successful professional baseball player (pg. 97) has also surprisingly broad applications. The conclusion of the chapter is also fascinating. It describes baseball management as a competitive arms race of intelligence gathering to extract small competitive edges. And, that those competitive edges are short-lived. That's a very interesting application of the Efficient Market Hypothesis.
The chapter on economists documents how inaccurate their forecasts are. The majority can't forecast a recession that has already started as they missed out on the three most recent ones (1990, 2001, 2007). In November 2007, the average economic forecast was 2.4% real GDP growth in 2008. Instead, real GDP shrank by -3.3%. Economists assigned only a 1-in-2000 chance of the economy shrinking that much. Yet, home prices were already declining. Foreclosures had picked up. Bear Stearns had gone belly up six months ago. Those were powerful signals the housing and financial markets were on the edge of a cliff. Also, economists are way too confident. The few times you can extract confidence intervals from the economic profession they are invariably way too narrow because they underestimate the error level within their forecasts (pg. 182). Nate Silver states that: "this property of overconfident prediction has been observed also in medical research, political science, finance, and psychology" (pg. 183). Despite our having so much more data and computer power at our hands, economic forecasting has not improved since 1968. This is because our underlying understanding of cause and effects has not changed much since.
Chapter 8 introduces Bayes's Theorem. Here Nate Silver often refers to a very good book on the subject: The Theory That Would Not Die: How Bayes' Rule Cracked the Enigma Code, Hunted Down Russian Submarines, and Emerged Triumphant from Two Centuries of Controversy by Sharon Bertsch McGrayne.
Chapter 9 and 10 about chess and poker are excellent. Kasparov was ultimately beaten by a computer bug. IBM Big Blue made a move late in the last game that did not make any sense (the team who programmed it confirmed it was due to a small programming bug). Kasparov who was in a vulnerable position could not figure out that move and in despair resigned the game and lost the series. The Pareto principle of prediction on page 312 and 314 and the ensuing economics of poker are really interesting. Poker winning are heavily dependent on the one worst player at a table. If he leaves, the winnings are a lot harder to reap.
Chapter 11 on the Efficient Market Hypothesis (EMH) is excellent. Nate Silver states that the stock market is efficient most of the time, although it is never perfectly efficient (that would preclude a market). But, it can be wildly inefficient on few occasions associated with bubbles and crashes. Nate Silver demonstrates how both technical analysis and fundamental analysis do not beat the market over the long run. Fig 11.3 on page 340 shows no correlation between the performance of mutual funds over the 2002 to 2006 period vs over the 2007 to 2011 period. Past performance is no guarantee of future returns. Next, Silver refers to Robert Shiller in showing the market is not as efficient as the EMH entails. Shiller looked at the P/E ratio of the S&P 500 over a trailing 10 year period and looked at prospective returns. And, the longer the period contemplated the greater the negative correlation between trailing P/E levels and future average yearly returns. This suggests that the market can get overvalued. But, the return correction is not apparent until looking at average return over a 10 to 20 year period. Next, Nate Silver refers to the works of Richard Thaler and Daniel Kahneman in behavioral economics to outline how market traders are not perfectly rational. They suffer from herd mentality, overconfidence, and being overly emotional rendering their trading pro-cyclical.
So, if the market is not so efficient, can you beat it? Probably not. On page 345, Nate Silver demonstrates how a hypothetical investor with perfect timing over a decade (1976-1986) would get killed by very small transaction costs. Even though this investor would handily beat the stock market before transaction costs, he would wipe out most of his capital after transaction costs. Silver next tests a prudent investment strategy over the 1970 to 2009 period. He assumes an investor is prudent and sells his position in the S&P 500 index whenever it had declined 25% from its peak and reinvests whenever it recovered 90% of its value. Such an investor would have earned only 2.6% per year vs close to 10% for a simple buy-and-hold strategy. Nate Silver does believe several hedge funds can beat the market. But, they have intellectual and technological resources that no retail investor and few mutual funds can match.
Chapter 12 on climate change is really interesting. He differentiates between where scientists agree and disagree. They all agree that the greenhouse effect exists and keeps the Earth warmer than it would otherwise be; that temperatures have risen over the past century; that greenhouse gases have contributed to that trend; and that water vapor is by far the most potent greenhouse gas (not CO2 as the Media conveys). The majority of scientists agree that rising CO2 concentration does contribute to rising temperature. But, there is a debate regarding how much. Where the scientific community is more divergent is regarding climate models and projections. They acknowledge that Al Gore's An Inconvenient Truth deterministic apocalyptic message was way off base.
Nate Silver explains why there is much uncertainty regarding climate models' projections. One uncertainty is figuring out CO2 levels 100 years down the road. Another uncertainty is getting the causal relationships right (there is a lot more than CO2 at play). Another uncertainty concerns whether those models are programmed correctly. Within the vast quantities of computer codes, are there a few bugs that contribute to generating erroneous forecasts? Nate Silver reviews the prediction of the IPCC's 1990 model and observes that temperatures have not risen as fast as the model predicted. Current temperatures are below the model's 95% confidence interval. This lead the IPCC to reduce their baseline temperature increase from 3 degree Celsius per century in 1990 to 1.8 degree in 1995. On page 407, Silver comes up with an interesting application of Bayes theorem applied to rising temperature predictions.
The last chapter on terrorism is intriguing. Terrorist attacks follow a similar Power Law as earthquakes. The frequency of events declines exponentially with increase in intensity. More violent events are much rarer than lesser ones. But, the few major events dominate the data in human casualties. For instance, 9/11 represented more than half of the total fatalities from terror attacks in NATO countries since 1979. Thus, it is worth exploring means of mitigating the impact of such events.
- Reviewed in the United States on November 22, 2012I'm not the kind of person who loves every book of this style. I generally think that Malcolm Gladwell and Thomas Friedman just find cute ways to repeat things other people have already said. But I thought this book was completely different. Instead of finding cute new phrases to repeat old information, Nate Silver finds clear and concise ways to convey interesting, new information. I know that none of the mathematics he's conveying is new, but he does an insightful job of explaining how thinking in a Bayesian way can help in forecasting all sorts of world events and how actual outcomes can be used to improve our understanding of how the world works. Despite his non-academic background Nate Silver has made significant contributions to political forecasting. His forecasts are arguably better than and certainly on par with Princeton Professor (admittedly, not a professor of social sciences, so his professor job may not be very relevant to this conversation) Sam Wang. It's not just that Silver's numbers get closer to reality, but that he has a comprehensive approach that uses all information, appropriately weighted and with a wary eye towards overconfidence.
Sometimes, I will say, that writing is a little grating ("...a stat head's wet dream!" - awkward). The chapter on baseball forecasting is pretty confusing if you don't already know a ton about baseball (I don't). And the chapter on Hurricane forecasting seems to miss the mark pretty badly. He has interesting things to say about the numbers around hurricane forecasts, but veers off in a crazy direction when offering a political interpretation of those numbers. He never mentions levees and makes one very brief, uncritical reference to FEMA. After explaining how great hurricane forecasts are these days he basically lays the blame for what happened in New Orleans on the victims. I guess he just wasn't thinking very hard about this part of the book, and neither was his editor. But overall it's a great read!
Top reviews from other countries
- CharliemonsterReviewed in the United Kingdom on December 15, 2012
5.0 out of 5 stars Statistics Made Entertaining (How is that even possible?) well it is.
This is a fascinating exploration into statistical modelling. Okay that may not be the most enticing reason to read a book you have ever been given but here's the deal. The author takes an approachable, narrative and witty approach to examining the successes and more often failures of predictions based on the sort of statistics that get bandied about on the news channels 24-7. He offers insight into the causes of the financial crisis and shows why we sleepwalked into an avoidable catastrophe. He explains how far you can trust a weather forecast (about five days) and what to take into consideration when using it. He analyses subjects as diverse as baseball scouting, pandemic scares, earthquake prediction and why Deep Blue beat Garry Kasparov at chess. More importantly he presents the subject with a minimum of maths, with all you need to know explained in simple terms. You wont walk away from this book with the ability to do stats, but you'll be better equipped to know how to treat them.
- Tiago IrineuReviewed in Brazil on August 30, 2021
5.0 out of 5 stars Many examples about probabilistic thinking, with an underlying defense of Bayesian statistics
The book could a bit more of theoretical discussion, but it gives a reasonable introduction to probabilistic thinking and how it is used or mis(used) in daily life, with examples ranging from sports to financial markets.
Given Nate's background it is not surprising that he focuses on forecasting, and how to develop a better framework for becoming a better forecaster, and also how a lack of probabilistic education and communication lead people astray, even leading to mistake that cost lives of thousand of people.
My ultimate take of this book would be that we should consider more deeply the possible impacts of probability in our lives, and also that data does not speak for itself. Data need context and for gaining real insights it's necessary to apply critical thinking to it.
- Jean-Luc PyReviewed in France on December 23, 2012
5.0 out of 5 stars Clever and subtle
N. Silver is no amateur forecaster: he designed a system for forecasting performance of baseball players and set up a web site predicting election results (he also happens to have played poker at a semi-professional level).
The book is full of insights on the pitfalls that forecaster can fall into. But, it also contains a bounty of solutions (notably derived from Bayesian statistics). Effortlessly, N. Silver guides us to subtle and clever ways on how we can improve our prediction abilities (and recognize our limitations!). Let me just give a very small sample of how the book helps us grasp what should be understood:
* Understanding the difference between a prediction and a forecast, as illustrated by earthquakes.
“A prediction is a definitive and specific statement about when and where an earthquake will strike […] Whereas a forecast is a probabilistic statement, usually over a longer time scale.” (p. 149)
* Understanding what “overfitting” is, i.e. designing a model that explains, data-wise, more than is actually possible or actually exists (a good image of the trait of human nature leading us to make such mistakes is that of recognizing animals in clouds), and the unsound confidence that it triggers (p. 167)
* Understanding that you ignore unknown unknowns (as the phrase was coined by D. Rumsfeld) at your own risk.
“There is a tendency in our planning to confuse the unfamiliar with the improbable […] what looks strange is thought improbable” (p. 419)
N. Silver uses a very wide array of topics and references to make his points. He is most of the times well versed in such topics but yet falls prey to his unrealistic ambition of being a true polymath ; two instances of factual mistakes I noticed are:
* “not only were Estonians sick of Russians, but Russians were nearly as sick of Estonians, since the satellite republics contributed less to the Soviet economy than they received in subsidy from Moscow.” p. 52
At the time of USSR, stating that Estonia received subsidies from Russia (rather than being plundered) is a wrong pick ; subsidies may have existed for some republics (such as the “–stan” republics) or countries (such as Cuba) but not Estonia the richest and most advanced of the soviet republics…
* The description of the first 3 moves of the 1st game of the Kasparov – Deep Blue match is mistaken, with one move missing (and the figure 9-2 showing the position correspondingly erroneous ; the white g-pawn is misplaced) p. 270
Anyhow, these mistakes are minor and do not alter my overall vey positive assessment of the book!
- Christopher CantyReviewed in Germany on November 14, 2023
5.0 out of 5 stars Extremely Well Written and Interesting
This book provides an excellent introduction to the world of forecasting and many different statistical concepts that are important to it. Every chapter uses different real world example from a different field (from earthquakes to poker) to explain a statistical concept in a way that is easy to understand but nonetheless fascinating. Usually an expert in that field is quoted and often visual examples are given. The use of these examples allows the reader to learn understand the concepts more easily but it also provides a fascinating insight into different real world uses of forecasting and statistics.
Most books about statistics are not easy to read or understand, but this one is. And it still contains a lot of knowledge. One of the best books I've ever read.
-
LuisReviewed in Spain on August 12, 2014
4.0 out of 5 stars Buen libro, claro y entretenido.
Si te gusta la estadística este librito puede ayudarte a comprender porqué no siempre las herramientas estadísticas aciertan en sus predicciones. Lo recomiendo.