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C**N
I'm extremely disappointed.
The organization of the book is confusing. You can't use the table of contents to decide what to read. After reading the first 4 chapters, I'm extremely disappointed.
S**R
Great value
Very good book, well written, and the best pas, as with all of Miller's books that I have purchased, is that it comes with real code examples in both Python and R. Great way to get up and running.
B**
wot! no code samples on line?
good book, but....no data sets to work with. Seems critical for a source code heavy book (ie almost every chapter has pages of code). We would prefer not to scan, then try to run the code ourselves. Read the appendix first at that seems to be where the theory is then go back to the chapters for practical work. Borrowed this book from the library....its really expensive otherwiseupdate: OK --kept reading, and paying overdue fines at the library, so I bought the book. Really worth the read if you're serious about focusing on marketing data science. Great starting read for technical marketers who want to do something in this field.Glad the code samples are now available. Will have to test and see. One thing I noticed about the content. Every time something got interesting Prof. Miller would quote a reference for further reading (ie. details). That's sort of OK, but leaves me wanting and having to go dig elsewhere. Suggestion: one more paragraph for such situations would put my curiosity at rest. A lot of content around product development, positioning, recommending, but a little light on broader examples - It might be helpful to describe a broader range of techniques (ie. list them), then drill down on one or two. It just seems too narrow, like drinking from a straw when really a funnel is needed with the huge alternatives. Enjoyed the book (looks like a text book but reads like a novel - that's a good thing)
L**S
Second to none
If you want to have just one book on Marketing Data Science, this is the one.
M**N
Helpful
Updated my rating from 2 to 5 stars as the code has become available on FTPress. I received an email from the publisher last week. Not sure why it took over 6 months for them to post this.
K**M
Good book, very well explained examples (the R and ...
Good book, very well explained examples (the R and the Python codes are very well written) but if you have read other books from Prof. Miller, you would be able to remember some exacts paragraphs across some books.
A**N
Data Available Now
Now that the data is available I will go through this book and do a proper review. But in general I do not like this book as much as this one R for Marketing Research and Analytics (Use R!)
H**S
Very dense, will not teach R, Python, or Marketing - just how to utilize these languages for data-driven market analysis
This is a difficult book to review, and I struggled with it a bit. On one hand, it is well written with good use of hypothetical and relevant examples (.e.g Amazon, AT&T). On the other hand, it reads like a programming class - lectures and all, which can be dense and difficult to glean information from - not exactly the rapid fire approach many data scientists I work with/am use (caveat: I'm in life sciences).Pros:-Wealth of information - book is dense-Covers topics based on marketing not programming approaches (e.g. Recommending Products with approaches rather than Building Network Diagrams with marketing examples of how to use this technique)-Uses my two favorite languages - R & Python - very common and can be applied to modeling, charting and analytics more readily than other languages - they work well together - Python for building interfaces and specific R packages for doing the deep statistical/data crunching & visualization/presentation (at least that is how I use them)-Plenty of example code that can be readily used - sample data described in text available for download-I like that there is a list of Tables in the front of the book - makes it easy to rapidly find the right examplesCons:-This book is difficult to go through - you need to be comfortable with both R and Python-Book also assumes familiarity with common statistical/analytical approachesBottom line: as this book does not cover fundamentals of any of the core subjects (marketing, Python, R, Predictive Analytics) my gut is that to approach this topic you would be better served learning first predictive analytics and marketing concepts prior to this book being of full utility. That said it is incredibly informative and I found it a fascinating.
M**A
Uno de los dos libros imprescindibles para DS interesados en el mundo Marketing
Es un libro caro pero merece la pena si eres DS, tienes conocimientos de R/Python (ya que el autor los usa indistintamente en todo el libro, según las necesidades del problema) y quieres aplicar las técnicas al mundo del Marketing, Digital Sales y demás. Este, junto al libro "R for Marketing Research and Analytics" serían los dos "must" que no puedes dejar de comprar.
P**H
Lots of useful code, but explanations are lacking
The book reads like a survey paper. While references are in plenty, covering the last 38 pages, these are primarily references to other books rather than papers. The author assumes readers will read these to understand models and methods. This implies that the reader can make use of this book only if she is willing to use pointers to find things out on her own; or if she's happy laying her hands on code -- and to hell with the theory. For Python users, a word of caution though; the author uses statsmodels with R syntax, reducing comprehensibility. While the author appears to be extremely knowledgeable, the book comes across as a lazy, half-hearted effort in knowledge dissemination.
A**D
Useful collection of marketing concepts and R code
It contains a useful collection of marketing concepts and R code. I did not try Python code but it also included in the book.The book mentions the concepts briefly and moves on to the code. Additional reading is required from other books and research papers. The book provides a whole bunch of references for the concepts mentioned in each chapter.If one prefers SPSS Statistics and SPSS Modeler, then the R/Python code is not required at all !
M**I
Good read
Good description on how the models could be used in real business scenario..It's a good read to get exposed about the possibilities of Data science for marketing strategies
A**R
Inspirational, but require some data engineering/science basics
When you know how to deal with data already but wonder how to help business guys then you find it very inspirational. Recipes in Python and R help double confirm your understanding of plain text. The book is not about learning how algorithms work but how to practically use broad family of data mining and machine learning methods in real life cases.
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