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Computer Age Statistical Inference: Algorithms, Evidence, and Data Science (Institute of Mathematical Statistics Monographs, Series Number 5) 1st Edition
Purchase options and add-ons
- ISBN-101107149894
- ISBN-13978-1107149892
- Edition1st
- PublisherCambridge University Press
- Publication dateJuly 21, 2016
- LanguageEnglish
- Dimensions6 x 1.25 x 9 inches
- Print length495 pages
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Editorial Reviews
Review
Andrew Gelman, Columbia University, New York
"This unusual book describes the nature of statistics by displaying multiple examples of the way the field has evolved over the past sixty years, as it has adapted to the rapid increase in available computing power. The authors' perspective is summarized nicely when they say, 'very roughly speaking, algorithms are what statisticians do, while inference says why they do them'. The book explains this 'why'; that is, it explains the purpose and progress of statistical research, through a close look at many major methods, methods the authors themselves have advanced and studied at great length. Both enjoyable and enlightening, Computer Age Statistical Inference is written especially for those who want to hear the big ideas, and see them instantiated through the essential mathematics that defines statistical analysis. It makes a great supplement to the traditional curricula for beginning graduate students."
Rob Kass, Carnegie Mellon University, Pennsylvania
"This is a terrific book. It gives a clear, accessible, and entertaining account of the interplay between theory and methodological development that has driven statistics in the computer age. The authors succeed brilliantly in locating contemporary algorithmic methodologies for analysis of 'big data' within the framework of established statistical theory."
Alastair Young, Imperial College London
"This is a guided tour of modern statistics that emphasizes the conceptual and computational advances of the last century. Authored by two masters of the field, it offers just the right mix of mathematical analysis and insightful commentary."
Hal Varian, Google
"Efron and Hastie guide us through the maze of breakthrough statistical methodologies following the computing evolution: why they were developed, their properties, and how they are used. Highlighting their origins, the book helps us understand each method's roles in inference and/or prediction. The inference-prediction distinction maintained throughout the book is a welcome and important novelty in the landscape of statistics books."
Galit Shmueli, National Tsing Hua University
"A masterful guide to how the inferential bases of classical statistics can provide a principled disciplinary frame for the data science of the twenty-first century."
Stephen Stigler, University of Chicago, and author of Seven Pillars of Statistical Wisdom
"Computer Age Statistical Inference offers a refreshing view of modern statistics. Algorithmics are put on equal footing with intuition, properties, and the abstract arguments behind them. The methods covered are indispensable to practicing statistical analysts in today's big data and big computing landscape."
Robert Gramacy, University of Chicago Booth School of Business
"Every aspiring data scientist should carefully study this book, use it as a reference, and carry it with them everywhere. The presentation through the two-and-a-half-century history of statistical inference provides insight into the development of the discipline, putting data science in its historical place."
Mark Girolami, Imperial College London
"Efron and Hastie are two immensely talented and accomplished scholars who have managed to brilliantly weave the fiber of 250 years of statistical inference into the more recent historical mechanization of computing. This book provides the reader with a mid-level overview of the last 60-some years by detailing the nuances of a statistical community that, historically, has been self-segregated into camps of Bayes, frequentist, and Fisher yet in more recent years has been unified by advances in computing. What is left to be explored is the emergence of, and role that, big data theory will have in bridging the gap between data science and statistical methodology. Whatever the outcome, the authors provide a vision of high-speed computing having tremendous potential to enable the contributions of statistical inference toward methodologies that address both global and societal issues."
Rebecca Doerge, Carnegie Mellon University, Pennsylvania
"In this book, two masters of modern statistics give an insightful tour of the intertwined worlds of statistics and computation. Through a series of important topics, Efron and Hastie illuminate how modern methods for predicting and understanding data are rooted in both statistical and computational thinking. They show how the rise of computational power has transformed traditional methods and questions, and how it has pointed us to new ways of thinking about statistics."
David Blei, Columbia University, New York
"Absolutely brilliant. This beautifully written compendium reviews many big statistical ideas, including the authors' own. A must for anyone engaged creatively in statistics and the data sciences, for repeated use. Efron and Hastie demonstrate the ever-growing power of statistical reasoning, past, present, and future."
Carl Morris, Harvard University, Massachusetts
"Computer Age Statistical Inference gives a lucid guide to modern statistical inference for estimation, hypothesis testing, and prediction. The book seamlessly integrates statistical thinking with computational thinking, while covering a broad range of powerful algorithms for learning from data. It is extraordinarily rare and valuable to have such a unified treatment of classical (and classic) statistical ideas and recent 'big data' and machine learning ideas. Accessible real-world examples and insightful remarks can be found throughout the book."
Joseph K. Blitzstein, Harvard University, Massachusetts
'Among other things, it is an attempt to characterize the current state of statistics by identifying important tools in the context of their historical development. It also offers an enlightening series of illustrations of the interplay between computation and inference … This is an attractive book that invites browsing by anyone interested in statistics and its future directions.' Bill Satzer, Mathematical Association of America Reviews
'My take on Computer Age Statistical Inference is that experienced statisticians will find it helpful to have such a compact summary of twentieth-century statistics, even if they occasionally disagree with the book’s emphasis; students beginning the study of statistics will value the book as a guide to statistical inference that may offset the dangerously mind-numbing experience offered by most introductory statistics textbooks; and the rest of us non-experts interested in the details will enjoy hundreds of hours of pleasurable reading.' Joseph Rickert, RStudio (www.rstudio.com)
'Efron and Hastie (both, Stanford Univ.) have superbly crafted a central text/reference book that presents a broad overview of modern statistics. The work examines major developments in computation from the late-20th and early-21st centuries, ranging from electronic computations to 'big data' analysis. Focusing primarily on the last six decades, the text thoroughly documents the progression within the discipline of statistics … This text is highly recommended for graduate libraries.' D. J. Gougeon, Choice
Book Description
About the Author
Trevor Hastie is John A. Overdeck Professor, Professor of Statistics, and Professor of Biomedical Data Science at Stanford University, California. He is coauthor of Elements of Statistical Learning, a key text in the field of modern data analysis. He is also known for his work on generalized additive models and principal curves, and for his contributions to the R computing environment. Hastie was awarded the Emmanuel and Carol Parzen prize for Statistical Innovation in 2014.
Product details
- Publisher : Cambridge University Press; 1st edition (July 21, 2016)
- Language : English
- Hardcover : 495 pages
- ISBN-10 : 1107149894
- ISBN-13 : 978-1107149892
- Item Weight : 2.06 pounds
- Dimensions : 6 x 1.25 x 9 inches
- Best Sellers Rank: #901,126 in Books (See Top 100 in Books)
- #681 in Statistics (Books)
- #1,221 in Probability & Statistics (Books)
- #100,374 in Politics & Social Sciences (Books)
- Customer Reviews:
About the authors
Trevor Hastie is the John A Overdeck Professor of Statistics at
Stanford University. Hastie is known for his research in applied
statistics, particularly in the fields of statistical modeling, bioinformatics
and machine learning. He has published six books and over 200
research articles in these areas. Prior to joining Stanford
University in 1994, Hastie worked at AT&T Bell Laboratories for nine
years, where he contributed to the development of the statistical modeling environment
popular in the R computing system. He received a B.Sc. (hons) in statistics
from Rhodes University in 1976, a M.Sc. from the University of Cape
Town in 1979, and a Ph.D from Stanford in 1984. In 2018 he was elected
to the U.S. National Academy of Sciences. He is a dual citizen of the
United States and South Africa.
Discover more of the author’s books, see similar authors, read book recommendations and more.
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Learn more how customers reviews work on AmazonCustomers say
Customers find the book insightful and informative about statistical inference. It provides an intuition on different methods from Fisherian to EM and survival analysis. Readers with some intermediate statistical background find it suitable for an introductory reading. The explanations of concepts are vivid and easy to understand, making the topics that they struggled with extremely easy.
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Customers find the book insightful and informative about statistical inference. It provides an intuition on different methods, from Fisherian to EM and survival analysis. Readers appreciate the clear delivery of important information, making it suitable for statisticians and machine learning scientists. The book is full of equations, derivations, and theorems, but it's also suitable for intermediate readers looking for an introductory reading.
"...Very clear delivery of important information...." Read more
"...It's an academic book, but a quite accessible, insightful and pleasant read." Read more
"...The book provides an intuition on very different methods from Fisherian to EM and survival analysis to others what makes this method working and..." Read more
"This book is a must have for mathematically sophisticated readers wanting to expand their knowledge of traditional statistical inference techniques..." Read more
Customers appreciate the clear explanations and coverage of essential topics in contemporary statistical inferences. They find the book accessible, insightful, and enjoyable to read.
"...The explanations of concepts are vivid and easy to understand, and quite often it makes you think from a different angle...." Read more
"...I read the book like a novel. It made the topics that I struggled for many years extremely easy. I sincerely thank authors for this service." Read more
"Totally awesome clear summary of the development of inference, the current state of the art, and some intriguing speculation on where it will go in..." Read more
"A good book includes the essential topics about the contemporary statistical inferences...." Read more
Top reviews from the United States
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- Reviewed in the United States on March 19, 2023I only read a quarter of it so far but it’s my fav of the year. Very clear delivery of important information. Knowing the development of methods are important and this book shows you “why is it” for most methods you use in big data analysis. Misuse of statistics can explain most problematic results and this book can help with that.
- Reviewed in the United States on November 29, 2017Very insightful and informative statistical inference book. I own and have read the authors' other books and as always, this new book is fantastic.
It's very up-to-date and a great reference book for both intro-level students and statistics professionals.
The explanations of concepts are vivid and easy to understand, and quite often it makes you think from a different angle. Love the writing style!
It's an academic book, but a quite accessible, insightful and pleasant read.
- Reviewed in the United States on April 24, 2020Yes, as many other reviewers noticed this book has a lot of commonalities with other books by the same authors.
But still, it's substantially different
It's a historical review from experts in the area about what methods were developed for which purposes and how they are connected to other methods and how they are comparable to other methods
The book provides an intuition on very different methods from Fisherian to EM and survival analysis to others what makes this method working and what math behinds it and what tasks it's good for
- Reviewed in the United States on November 12, 2017This book is a must have for mathematically sophisticated readers wanting to expand their knowledge of traditional statistical inference techniques as well as inference done by machine learning.
I say mathematically sophisticated because the book is full of equations, derivations and theorems. The authors state that their intended audience is beginning graduate students and they have matched that intended level of mathematical expertise. The book is not then for those from a non-STEM background desiring a better understanding of these methods.
If I had to make a criticism it is that the authors cover so much of the landscape of statistical inference they are forced to be rather terse. Because of this, I had difficulty understanding those techniques where I didn't have any prior experience. But that will vary from reader to reader depending on their statistical expertise. Some may find the brief summaries not sophisticated enough.
In short, Computer Age Statistical Inference does a masterful job of linking the traditional inference techniques of Fisher and Neyman to modern machine learning all the while showing their similarities and differences. For those working in these disciplines and wanting to have a mathematically grounded understanding of the wide variety of methods now available for statistical inference this book is a much needed guide.
- Reviewed in the United States on July 11, 2017Just amazing. I read the book like a novel. It made the topics that I struggled for many years extremely easy. I sincerely thank authors for this service.
- Reviewed in the United States on January 5, 2017Totally awesome clear summary of the development of inference, the current state of the art, and some intriguing speculation on where it will go in the future.
- Reviewed in the United States on June 27, 2017The book is absolutely all I was looking for. I strongly recommend to professors, students, and practitioners of statistics.
- Reviewed in the United States on March 18, 2018A great book for statisticians, machine learning scientists.
Top reviews from other countries
- StefanoReviewed in Italy on August 8, 2024
5.0 out of 5 stars An excellent review
I found this book to be an excellent review of the main statistical methodologies that were developed across the decades to deal with inferential problems, old and new (the latter strictly connected with the increasing complexity of the data to be analysed). It is designed as a proper journey in history, accompanied by the rigourous presentation of the main theorems, and a lot of interesting and fascinating examples and accurate descriptions of algorithms. This gives the book a rare to be found thoroughness. As a grown-up graduate in Statistics I enjoyed the book very much, thank you Professor Efron and Professor Hastie.
- av1423Reviewed in Canada on May 7, 2021
5.0 out of 5 stars Very satisfied
I am very satisfied with the purchase. Delivered very fast. About the book, I should say that if you are a statistician, I think it is a must-read book for you. It has past, present and almost future of Statistics that you must know.
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"guillemontanari"Reviewed in Mexico on September 21, 2019
5.0 out of 5 stars Excelente!
Gran libro
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Cliente AmazonReviewed in Brazil on April 20, 2017
5.0 out of 5 stars Muito bom!
Bradley Efron e Trevor Hastie fazem uma excelente revisão dos métodos que revolucionaram a estatítica do último século. A ciência dos dados, como resultado da interação Estatística * Ciência da Computação, é abordada de maneira muito natural (algoritmos e inferência). Livro imprescindível para a biblioteca do estatístico.
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Mathias R.Reviewed in Germany on October 6, 2017
2.0 out of 5 stars not really good
I am just a risk engineer and English is not my mother’s tongue. The book is not good to read for me. It is more the printed record of an oral lecture than a book which is optimized for reading. Besides, the authors are strongly focused on their favourites among the different approaches. Too strong for my opinion.