Applied Regression Analysis and Generalized Linear Models (Anglais) Relié – 16 avril 2008
Découvrez notre boutique Rentrée scolaire et universitaire : livres, agendas, fournitures, ordinateurs, ameublement...
|Neuf à partir de||Occasion à partir de|
Il y a une édition plus récente de cet article:
Aucun appareil Kindle n'est requis. Téléchargez l'une des applis Kindle gratuites et commencez à lire les livres Kindle sur votre smartphone, tablette ou ordinateur.
Pour obtenir l'appli gratuite, saisissez votre numéro de téléphone mobile.
Détails sur le produit
Si vous vendez ce produit, souhaitez-vous suggérer des mises à jour par l'intermédiaire du support vendeur ?
Meilleurs commentaires des clients
Un problème s'est produit lors du filtrage des commentaires. Veuillez réessayer ultérieurement.
Commentaires client les plus utiles sur Amazon.com
Having said that, the content is without any useful examples. Most of the work is presented in a conversational fashion, which is great for a history book, but puzzling for a statistics book. Ch. 7, for example, would reference a data model first developed in Ch. 3 with additional components developed in Ch. 4. So trying to understand the example presented requires hunting the previous chapters for bits of information.
There are sample problems at the end of the chapter - most people learn statistics with simple numerical problems and then build to more complex concepts. I had to use the internet and other texts to understand the material. A simple visual, for example, of a quartile plot with a right and left skewed distribution (instead of just describing it) is a lot more powerful to understanding the material.
This book will be a good addition to the book 'R Companion' by the same author, Econometrics (Jeffrey Wooldridge) and Guide to Econometrics (Kennedy).
I will strongly recommend this book to all serious researchers and PhD scholars.
However, the organization is poor. Linear algebra, matrices and vectors should be introduced in the more accurate place of chapter 3,4 versus far later. Further, as a teaching tool, this book lacks practice problems to help the student through the learning process relative to other pieces that I've used. Further, each topic is addressed in the brief, which is good if you know the topic, but bad if it's the first time you're really looking at the work. The examples used are a bit discipline specific, that while not obscure, would make it somewhat difficult for newbies to the field to really obtain the type of practice and deep understanding that is required to go on to the next topic with confidence.
Higher rated texts should split up the topics into multiple books or provide a greater number of examples and problem sets for students to build their skill set. I have seen some that include an accompanying CD of data and practice examples, that can be of great assistance to students struggling to learn this discipline.