


Buy Bayes' Theorem Examples: A Visual Introduction For Beginners by Morris, Dan (ISBN: 9781549761744) from desertcart's Book Store. Everyday low prices and free delivery on eligible orders. Review: Got it at last - This book provides an excellent introduction to Bayes' Theorem using four examples that are reworked at increasing levels of complexity. The illustrations are useful, but the text is so clear that after the first few pages I found I could solve the problems before reading the answers - something I never really managed in previous attempts to get a handle on Bayes's Theorem. The book also has useful links to other sources if you want a more complicated explanation. Review: good explanation for Baye's but not for advanced tuition - good explanation for Baye's but not for advanced tuition. It provides a number of examples that it repeats in different scenarios for greater clarity.
| Best Sellers Rank | 411,530 in Books ( See Top 100 in Books ) 947 in Mathematics Teaching Aids 9,698 in School Education & Teaching |
| Customer reviews | 4.1 4.1 out of 5 stars (1,110) |
| Dimensions | 15.24 x 0.71 x 22.86 cm |
| ISBN-10 | 1549761749 |
| ISBN-13 | 978-1549761744 |
| Item weight | 259 g |
| Language | English |
| Print length | 112 pages |
| Publication date | 2 Oct. 2016 |
| Publisher | Independently published |
D**P
Got it at last
This book provides an excellent introduction to Bayes' Theorem using four examples that are reworked at increasing levels of complexity. The illustrations are useful, but the text is so clear that after the first few pages I found I could solve the problems before reading the answers - something I never really managed in previous attempts to get a handle on Bayes's Theorem. The book also has useful links to other sources if you want a more complicated explanation.
A**R
good explanation for Baye's but not for advanced tuition
good explanation for Baye's but not for advanced tuition. It provides a number of examples that it repeats in different scenarios for greater clarity.
N**T
Excellent intro to Bayes.
I've bumped into Bayes Theorem a few times, but never really found a structured approach to analysing the usual world problems such as 'a test shows...what's the probability that...'. This book does just that and takes you through a step by step process for classifying and approaching simple problems involving Bayes Rule. There are some excellent resources on the web (e.g. Google: Arbital guide to Bayes Rule with it's interesting waterfall diagram) but they never quite did it for me, mainly because they seemed to skip steps used to break apart such problems. This book, on the other hand, leads you through each step in explicit and detailed fashion. Essentially, it works by teaching you to map a problem onto simple diagrams and then onto the formal expression of the Theorem itself. This worked really well for me. So if you're willing to work through the examples piece by piece, you should pick up this wonderful little theorem in no time at all.
R**O
Theory only
Clearly explained, but no practical examples on how it can be applied in any real betting scenario.
C**S
Good explanation
Couple of contradictions but overall very good and well explained Liked the real life examples the most Detail of the complicated formats would have been interesting to finish on
M**N
Very accessible Easy to understand
I particularly liked the logic trees and found this assisted me in understanding and using Bayes theorem.
J**S
A good introduction.
Interesting and challenging. A good introduction.
G**C
A very good exposition of an important theorem in probability
A neat explanation of an important theorem used for answering questions of the form 'what is the probability of A being true given that B is true?'. The text is built around three examples that are analysed three times over in increasing detail. This short work shows why 'common sense' thinking can get you into deep trouble when looking at issues of probability. The maths is basic. Provided that you understand what a percentage (or a normalised value) is, you are likely to be fully equipped to understand this text. An excellent piece of writing that shows how maths does not have to be scary.
A**O
Es un pequeño panfleto maravillosamente escrito que de forma sencillísima da toda la información sobre este teorema y su aplicación y todo lo que hay que considerar a la hora de utilizarlo, cómo enfocar los problemas, cómo utilizar la información existente... todo muy sencillito muy bien explicado una y otra vez a través de diversos ejemplos. Alguna pequeña falta de maquetación en la edición en tapa blanda que aquí algunos critican muy duramente y no tiene mayor importancia, no afectando al meollo de lo expuesto. Lo leí de una tirada, y lo he releído 3 veces más muy gustosamente. Me ha entusiasmado de tal manera que, siendo un magnífico manual introductorio, ahora compraré algo que profundice un poco más, del tipo usar Bayes en programación con Python para resolver con Bayes problemas de probabilidad con la herramienta informática. En realidad la fórmula de Bayes no es más que la fórmula general de la probabilidad que dice que en la ocurrencia de un evento la probabilidad de que ocurra el suceso A es igual al número de casos favorables dividido entre el número de casos posibles. Por ejemplo si tiro una moneda al aire tres veces seguidas la probabilidad, a priori, de que la primera vez que tiro salga cara es (al ser sucesos independientes cada lanzamiento) 0.5. Ahora bien, si hay información adicional sobre el evento, a posteriori, ésta puede cambiar el valor de los casos favorables y posibles considerados. La incorporación de estos cambios en la fórmula general es la fórmula de Bayes, en la cual, en el numerador va el valor modificado de los casos favorables, y en el denominador el valor modificado, incorporando la información, de los casos posibles. Así, si en tres lanzamientos de una moneda al aire tengo a posterior la información de que en dos de ellos salió cara, la probabilidad de que el primer lanzamiento haya sido cara, cambia al incorporar esta información: casos posibles 3 CCX CXC XCC; casos favorables 2 CCX CXC. Probabilidad pedida, con información incorporada: 2/3, que es lo que sale con la fórmula de Bayes.
A**R
This is a great book that does exactly as it promises - clearly introducing Bayes for beginners like me! The visuals are a big help, and the authors writing style is easy to follow. It's also really well formatted for the Kindle.
E**T
If you know nothing about Bayes Theorem this book is not a bad introduction. However I still think the best way of understanding Bayes into remember the formula that the probability of text being correct is %true positives/(%true positives + %false positives). In other words the secret to understanding Bayes is including the percentage of false positives in the denominator. Morris does include this formula in the book but I still feel the non-mathematical will find this book a challenge.
C**C
Pour avoir une idée claire de l’apport effectif du théorème de Bayes, i.e. enrichir a posteriori la connaissance a priori des données résultant d’une expérience, ce livre est indispensable : Le débutant est tenu par la main, et sa progression est tellement bien balisée qu’il ne peut pas ne pas comprendre... Je recommande vivement ce livre, qui démystifie totalement une technique de raisonnement probabiliste, non évidente au premier abord.
J**Z
Buen libro, aunque más bien estuvo creado para estar en línea y está es la impresión con sus errores por ello, el contenido es muy bueno.
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