A Student’s Guide to Bayesian Statistics
A**A
Very helpful book indeed
What I liked about this book is that the author makes a tremendous effort to really teach you Bayes Statistics. He doesn’t take for granted that you know Bayes statistics as some books do. Besides using a mathematical intuitive approach, the author provides a wealth of material (exercises, videos, interactive simulations). Ah, one more thing, I would dare to say that it’s one of the best introductions to STAN. Do you really want to understand Bayesian Statistics? Then this book is a must.
S**K
Cannot recommend this enough
If you want to get started on Bayesian Stats and find books like Bayesian Data Analysis (Gelman et al) somewhat intimidating for a beginner (or someone from a different STEM background), I recommend you get this book and work on it. I worked on this book cover to cover, worked out all the problems, and watched Dr Lambert's YouTube videos (he also mentions them in the book). I'm fairly comfortable with the basics now, and not only can I venture into Bayesian Data Analysis book, but also put what I learnt into practice in my own research.
T**L
Delivered promptly, great condition
Book delivered promptly. Being used for self study of Bayesian statistics.
M**N
An excellent introduction to the wonderful world of Bayes
A Student's Guide to Bayesian Statistics gives an excellent introduction to the wonderful world of Bayes. The book is well-suited for students that are new to the topic and do not have a strong mathematical or statistical background. For such students it is one of the best resources on the subject that is currently out there.What I particularly like about the book is that it does not skip the nitty gritty details of Bayesian computation, and that it takes the time to explain important issues on a conceptual level. In this way it covers the basics in a broad range of topics, including key numerical methods.I enjoyed teaching from this book.
M**J
Excellent overview
This text provides an excellent non-technical overview of the Bayesian framework for statistical analysis. It covers fundamentals through to sampling methods for estimating posterior distributions. Moreover, several important model classes are introduced. The text was clearly never meant as an in depth review but it is a very good place to start in order to get some intuition.
Z**Z
an EXCELLENT student's guide to bayesian statistics
I accidentally saw this book on Amazon.com and was immediately attracted by the name of each chapter and section in this book; after I bought this book, I was impressed by the real contents in this book while reading. With little math in the book, the author is presenting bayesian statistics conceptually which is awesome and even more difficult than just listing tons of mathematical equations and probability density functions. Even best, there are problem sets at the end of each chapter and online videos and answers to the problems sets for you to learn, practice, and learn again!
J**
Soft cover edition
The paperback version did not have any color diagrams, where it's clear it should have. Also, the text was very light. It almost looks like the copy I received was a bad photo copy.
B**L
Excellent Introduction to the World of Bayes for Scientists and Graduate Students
Ben Lambert does a wonderful job of introducing the field of Bayesian analysis to motivated readers who have heard about the power of the Bayesian framework and tools, but who have not formally studied them. Section II provides the background on the concepts and mathematics behind the methodology, then Section III is the meat of ways to apply these methods to problems that many of us encounter in our research. This combination of foundational review and applied methods is unique to many of the Bayesian books I have examined. It even provides an introduction to Stan, a highly advanced MCMC tool.I recommend this book highly to anyone who wants to get into the world of Bayesian analysis.
A**X
Bueno el libro y aun mejor los recursos on line
El libro es muy claro, en un tema poco intuitivo, con buenos ejemplos de la vida real vista desde la perspectiva bayesiana. Para quien quiera adentrarse en la estadística de Bayes desde el principio, esta muy bien. Pero quería comentar que por fin, un libro que verdaderamente da lo que promete: recursos on line del libro, muy completos. Hay videos explicativos de todos los capítulos, y conceptos. Los problemas están todos resueltos. No se suele encontrarse tanto apoyo al lector. Lo recomiendo mucho.
V**R
Las bases de la estadística Bayesiana
Es un excelente libro para los que no saben y quieren aprender de cero este tema, muy detallado, explica paso a paso desde la fórmula de Bayes, hasta la interpretación de resultados, además del uso de métodos computacionales para mayor facilidad, un detalle que espero corrijan pronto, es que no todos los videos de apoyo están en la página y la verdad son un enorme apoyo para el aprendizaje, el libro trae gran parte de teoría, aunque tiene secciones de ejercicios, recomiendo comprarlo junto a un libro de ejercicios del tema para un mayor aprendizaje. Excelente en general
A**D
Best Bayesian Stats Primer on the Market (a must for engineering students!)
As an engineer we are taught almost exclusively from the frequentist paradigm, and I felt that I needed to self-teach Bayesian statistics if I wanted to get into the realm of forecasting and general modelling. Hours in the student library trawling through texts only came up with extremely dense material. I ended up turning to youtube for some introductory lessons and stumbled across the authors fantastic channel (It can be found by typing “Ben Lambert” into the search bar). The videos were clear, concise and very informative. I found that they were meant to be consumed alongside this text, which I promptly purchased.The quality of this text cannot be stressed enough. Humorous and engaging, it reads like a novel and explains like top quality lecture notes. It walks you through the mathematical fundamentals of Bayesian stats, terminating with a comprehensive guide to Conjugate and Uninformative priors. The final third of the text is dedicated to computational (read: practically used) Bayesian stats, covering topics including Stan and Hierarchical Modelling. The author recommends using R for the problem sets, but I managed with PyStan interface fine so that shouldn’t be a concern.I will certainly have this text on my desk for the foreseeable future as I get more comfortable with solving these problems regularly. The next step is “Bayesian Data Analysis” by the legend Gelman himself, which from what I have seen is prohibitively dense without a first studying a text such as this one.
M**V
Overall the best text-book I ever had so far
I needed a refresher on Bayesian stats. While browsing/watching related youtube videos I have stumbled upon the author's channel. This is how I learned about 'A Student's Guide to Bayesian Statistics'. In retrospect I cannot believe this was such a random sequence of events, since the "Student's Guide' has now become my personal favourite text book I ever had.The material is presented in a very clear way, it builds up from simple examples to more complicated ones. To go one step further the book offers a few pretty advanced problems to work out (there are answers/solutions available on-line too on the author's web-site). In theory all the text books should be like that, but in practice it is not all that frequent, especially when it comes to any sort of applied math.It was important for me that the text has no insane logic gaps along the lines of 'now, obviously' on which I tend to hang up particularly badly. The illustrations are fantastic too.I feel if the author ever decides to write another book on any subject even remotely relevant to my fields of interest - I will buy it without hesitation.
K**N
Excellent introduction to Bayesian Statistics for self-study
As a bioinformatician specializing in applied statistics, I found this book to be an excellent introduction to Bayesian Statistics for students and researchers with a non-mathematical background. The concepts and ideas are introduced with exceptional clarity. For those aiming to learn more about Bayesian statistics on their own, this and McElreath’s book will be essential stepping stones towards generating an understanding of more advanced textbooks and modern literature in applied Bayesian statistics.Top aspects:+ Clear pedagogical text layout; concise introductions and chapter summaries+ Good coverage of topics relevant to applied Bayesian analysis work (probability theory interpretations, distributions, model evaluation, model fitting algorithms, hierarchical & regression modeling )+ Excellent introduction to Bayesian model fitting algorithms (Metropolis Hastings, Gibbs and HMC) from a conceptual angle+ Excellent example figures+ Brief introductory chapter on stan for those who haven’t used it beforeIt is worth noting that the book has rather few applied statistics examples; the focus of the book clearly lies more on explaining the theory. On this end McElreath’s, Krushke’s and Hilbe’s books are more extensive and contain more examples with stan code. For those wanting to get started with Bayesian statistics I thus recommend getting one of these references and their corresponding R & stan code as a supplement to Lambert's book.I own both a hardcopy and digital copy of the book; the digital version (google play) is overall quite good but for some reason contains rather blurry pictures and weirdly formatted equations. The hardcopy version has excellent resolution figures and nicely formatted equations. I highly recommend getting a hardcopy of this book.
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