Monday, September 20, 2010

[Z402.Ebook] Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

It won't take more time to obtain this Applied Predictive Modeling, By Max Kuhn, Kjell Johnson It will not take more cash to print this e-book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson Nowadays, people have been so clever to utilize the technology. Why don't you use your gizmo or various other gadget to conserve this downloaded soft documents book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson Through this will certainly allow you to consistently be gone along with by this e-book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson Certainly, it will certainly be the most effective pal if you review this e-book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson till finished.

Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

Applied Predictive Modeling, by Max Kuhn, Kjell Johnson



Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

Find more encounters and expertise by checking out the book entitled Applied Predictive Modeling, By Max Kuhn, Kjell Johnson This is a book that you are seeking, right? That corrects. You have pertained to the ideal website, after that. We always offer you Applied Predictive Modeling, By Max Kuhn, Kjell Johnson as well as one of the most favourite books around the world to download and install as well as delighted in reading. You could not neglect that seeing this set is a purpose and even by unexpected.

As recognized, book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson is popular as the window to open up the world, the life, as well as extra point. This is just what individuals currently need a lot. Even there are many people who do not like reading; it can be an option as recommendation. When you actually require the ways to produce the following motivations, book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson will really assist you to the means. In addition this Applied Predictive Modeling, By Max Kuhn, Kjell Johnson, you will certainly have no remorse to get it.

To get this book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson, you could not be so confused. This is on the internet book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson that can be taken its soft file. It is various with the online book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson where you can purchase a book and then the seller will send out the published book for you. This is the area where you can get this Applied Predictive Modeling, By Max Kuhn, Kjell Johnson by online and after having handle getting, you could download Applied Predictive Modeling, By Max Kuhn, Kjell Johnson by yourself.

So, when you need fast that book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson, it does not should get ready for some days to receive the book Applied Predictive Modeling, By Max Kuhn, Kjell Johnson You can directly get the book to conserve in your gadget. Even you like reading this Applied Predictive Modeling, By Max Kuhn, Kjell Johnson almost everywhere you have time, you could enjoy it to check out Applied Predictive Modeling, By Max Kuhn, Kjell Johnson It is definitely practical for you who wish to get the more valuable time for reading. Why don't you spend five minutes as well as invest little cash to get guide Applied Predictive Modeling, By Max Kuhn, Kjell Johnson right here? Never allow the brand-new point quits you.

Applied Predictive Modeling, by Max Kuhn, Kjell Johnson

Winner of the 2014 Technometrics Ziegel Prize for Outstanding Book

Applied Predictive Modeling covers the overall predictive modeling process, beginning with the crucial steps of data preprocessing, data splitting and foundations of model tuning.  The text then provides intuitive explanations of numerous common and modern regression and classification techniques, always with an emphasis on illustrating and solving real data problems.  Addressing practical concerns extends beyond model fitting to topics such as handling class imbalance, selecting predictors, and pinpointing causes of poor model performance―all of which are problems that occur frequently in practice.
 
The text illustrates all parts of the modeling process through many hands-on, real-life examples.  And every chapter contains extensive R code for each step of the process.  The data sets and corresponding code are available in the book's companion AppliedPredictiveModeling R package, which is freely available on the CRAN archive.
 
This multi-purpose text can be used as an introduction to predictive models and the overall modeling process, a practitioner's reference handbook, or as a text for advanced undergraduate or graduate level predictive modeling courses.  To that end, each chapter contains problem sets to help solidify the covered concepts and uses data available in the book's R package.
 
Readers and students interested in implementing the methods should have some basic knowledge of R.  And a handful of the more advanced topics require some mathematical knowledge.

  • Sales Rank: #29338 in Books
  • Brand: Brand: Springer
  • Published on: 2013-09-15
  • Original language: English
  • Number of items: 1
  • Dimensions: 9.21" h x 1.31" w x 6.14" l, 2.20 pounds
  • Binding: Hardcover
  • 600 pages
Features
  • Used Book in Good Condition

Review
"There are a wide variety of books available on predictive analytics and data modeling around the web...we've carefully selected the following 10 books, based on relevance, popularity, online ratings, and their ability to add value to your business.  1.  Applied Predictive Modeling."  (Timothy King, Business Intelligence Solutions Review, solutions-review.com, June, 2015)

"I used this as a supplement in teaching a data science course that I use a range of different resources because I need to cover working with data, model evaluation, and machine learning methods. The next time I teach this course, I will use only this book because it covers all of these aspects of the field."  (Louis Luangkesorn, lugerpitt.blogspot.com, June, 2015)

"This is such a good book it has taken me awhile to work through the book.  All the while finding examples of why people should read the book...Well thought out examples with the R packages and example code. Take your time and work through this book."  (Mary Anne, Cats and Dogs with Data, maryannedata.com, February, 2015)

"This monograph presents a very friendly practical course on prediction techniques for regression and classification models...The authors are recognized experts in modeling and forecasting , as well as developers of R packages and statistical methodologies...It is a well-written book very useful to students and practitioners who need an immediate and helpful way to apply complex statistical techniques."  (Stan Lipovetsky, Technometrics, Vol. 56 (3), August, 2014)

"There are hundreds of books that have something worthwhile to say about predictive modeling. However, in my judgment, Applied Predictive Modeling by Max Kuhn and Kjell Johnson (Springer 2013) ought to be at the very top of the reading list ...They come across like coaches who really, really want you to be able to do this stuff. They write simply and with great clarity...Applied Predictive Modeling is a remarkable text...it is the succinct distillation of years of experience of two expert modelers...."  (Joseph Rickert, blog.revolutionanalytics.com, June, 2014)

“…In teaching a data science course…I use a range of different resources because I need to cover working with data, model evaluation, and machine learning methods. The next time I teach this course, I will use only this book because it covers all of these aspects of the field.” (Louis Luangkesorn, lugerpitt.blogspot.com, June 2015)

“There are a wide variety of books available on predictive analytics and data modeling around the web…we’ve carefully selected the following 10 books, based on relevance, popularity, online ratings, and their ability to add value to your business. 1. Applied Predictive Modeling.” (Timothy King, Business Intelligence Solutions Review, solutions-review.com, June 2015)

"Applied Predictive Modeling aims to expose many of these techniques in a very readable and self-contained book. This is a very applied and hands-on book. It guides the reader through many examples that serve to illustrate main points, and it raises possible issues and considerations that are oftentimes overlooked or not sufficiently reflected upon. Highly recommended." (Bojan Tunguz, tunguzreview.com, June 2015)

“This monograph presents a very friendly practical course on prediction techniques for regression and classification models… It is a well-written book very useful to students and practitioners who need an immediate and helpful way to apply complex statistical techniques.” (Stan Lipovetsky, Technometrics, Vol. 56 (3), August 2014)

“In my judgment, Applied Predictive Modeling by Max Kuhn and Kjell Johnson (Springer 2013) ought to be at the very top of the reading list …They come across like coaches who really, really want you to be able to do this…Applied Predictive Modeling is a remarkable text…it is the succinct distillation of years of experience of two expert modelers…” (Joseph Rickert, blog.revolutionanalytics.com, June 2014)

Review

"This strong, technical, hands-on treatment clearly spells out the concepts, and illustrates its themes tangibly with the language R, the most popular open source analytics solution." (Eric Siegel, Ph.D. Founder, Predictive Analytics World, Author, Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die)

From the Back Cover
This text is intended for a broad audience as both an introduction to predictive models as well as a guide to applying them. Non-mathematical readers will appreciate the intuitive explanations of the techniques while an emphasis on problem-solving with real data across a wide variety of applications will aid practitioners who wish to extend their expertise. Readers should have knowledge of basic statistical ideas, such as correlation and linear regression analysis. While the text is biased against complex equations, a mathematical background is needed for advanced topics.

Most helpful customer reviews

123 of 127 people found the following review helpful.
Solid
By Dimitri Shvorob
I read "Applied predictive modeling" (which I will shorten to APM) shortly after I read "Introduction to statistical learning" (ISL) by James, Witten, Hastie and Tibshirani, and find that book both closest to APM, and helpful in highlighting APM's strengths.

The two books cover the same broad subject. If you google "kuhn caret", you will find Max Kuhn's (very informative) presentation of his "caret" R package, and its first slide will tell you that he uses "predictive modeling" as a synonym of "machine learning" - what Hastie and Tibshirani call "statistical learning". Adopting H&T's terminology choice, I will say that both books combine theory of "statistical learning" with hands-on illustrations and exercises implemented in R; the get-your-hands-dirty, try-it-out element is, in fact, ISL's key difference from the earlier, venerable "Elements of statistical learning".

Both books, inevitably, go over a catalog of statistical-learning techniques. The shorter ISL, in my opinion, is superior at explaining the concepts and communicating the principles, while APM takes the more straightforward approach of "beefing up" the catalog, by spending more pages on each item and including more items. While ISL is by design very accessible, APM can be more technical - the detail will surely be appreciated by any practitioner - and, as it talks about the various methods, it can and does discuss recent extensions, offering an extensive and "fresh" bibliography. R-wise, APM's advantage is not decisive (if you look at content, not line count) but big; the book naturally favors "caret" - which has a useful role, "wrapping" a plethora of third-party R packages, and providing a common interface, plus helpful utilities - but both references and uses the specialist packages as well.

If you are wondering why I am not giving APM five stars, it's because the book jumped into the catalog mode a bit too briskly, and delivered on the "applied" promise mostly by defining "applied" as "illustrated with R examples". I wish there were more chapters like Chapter 16, which talks about the very common problem of effective classification in highly unbalanced samples. Nonetheless, I am impressed by "Applied predictive modeling" and recommend it as a sensible follow-up, or maybe even alternative, to "Introduction to statistical learning".

0 of 1 people found the following review helpful.
Four Stars
By Kattamuri S. Sarma
Good

41 of 47 people found the following review helpful.
A peek over the shoulder of Professional Predictive Data Analysts
By Stephen Oates
tl;dr: A brilliant book covering Predictive modelling in R. With a strong practical bent it walks the reader through the application of modern classification and regression techniques to a broad number of varied and interesting data sets. It uses existing packages where possible so you can jump straight in (great for Kagglers) but there is a lot here to master. It is especially strong on preprocessing (both unsupervised and supervised), model tuning and model assessment. Should not be your first book on R or data analytics but the best balance of Practical application without foregoing theory that I have seen. It is wonderful to see how professional data analysts approach predictive modelling tasks. The data sets are not toy models to highlight approaches but interesting and complex problems from a wide variety of disciplines.(Note that this book does not cover Time Series, Generalised Additive Models and Ensemble's of different models).

Review:
Data science has become very popular due to the increase in computing power (including things like AWS), the amount of data that is accessible on the internet and a number of open-source tools (R and Python for example) that allow even relative beginners to complete quite sophisticated models. Coursera allows for one to complete courses on Machine Learning for free and sites like Kaggle have even turned it into something of a sport where people compete to create predictive models for money or even job interviews. Part of the excitement is that Predictive models can be applied to almost any field you can think of.

Given the easy access to predict things using sophisticated techniques, the number of books on machine learning, data mining and predictive data analytics has grown to fill the demand of people looking to learn about the field. As data science is itself a combination of many different disciplines (statistics, computer science, artificial intelligence etc) there are many different points of entry. For this reason books can often be placed on a spectrum from straightforward examples of already constructed programs to theoretical textbooks with lots of mathematical background and constructing approaches from scratch. "Applied Predictive Modeling" tries to find a middle ground between these two approaches though it unashamedly sides with the practical. In contrast to many other works though, it utilises existing packages (notably caret) rather than having the reader construct the approaches themselves in code.

Applied Predictive Modeling contains 20 Chapters set out to be quasi-independent whilst still being a coherent book. An abstract opens each chapter followed by sections discussing the approaches used. The writing is excellent, very easy to follow and wonderfully informative with an excellent choice of example data sets. The discussions are not afraid to highlight the problems of different approaches - in one of the latter chapters noise is deliberately added to a data set so the differing impact can be seen on a range of models. Theory is discussed insofar as it is useful for understanding the use of certain approaches and references to further reading are clearly given. The chapters conclude with a summary before containing a computation section which contains all of the R code used for the chapters with some discussion where important. Finally most chapters have a section containing exercises. Usefully these exercises use different data sets so are not merely regurgitation of what one has just read. The chapters also have independent Bibliographies which is a little annoying when reading the book cover to cover, but makes it excellent as a reference book.

After a few chapters of overview the chapters largely work through the components in the process of Data Analytics; data-splitting, pre-processing chapters cover transforming, centering, dealing with missing values and setting up the data for the application of models. The next section of the book covers Regression models. It utilises a Pharmaceutical dataset and works through the creation of models of increasing complexity. A chapter then works through an example of concrete strength prediction based on ingredients to show clearly how regression applications work end to end. A number of chapters then look at classification algorithms using the construction of a data model from a kaggle competition from late 2010 on University Grants. This highlights what this book offers that I have not seen in other comparable books - real life examples on the steps a professional analyst takes in the construction of a model. The reader is almost always watching the construction of a real model throughout the discussion of the differing approaches. The book does discuss theory where it is useful. But rather then going into the miniature of constructing things directly in code to highlight the underlying structure, existing packages are used where possible. This lowers the barrier to getting started on using the techniques. Finally the book is rounded out with chapters on model tuning, detecting variable importance, how to handle class imbalances and some broader issues in modelling all again using real data sets from different fields.

The authors have created an R package for the book containing the code and data sets used and an excellent website and blog. The book ranges broadly across disciplines and includes separate data sets for the exercises, in all I count 21 data sets ranging from concrete strength to caravan insurance that are either covered in the book or are given as exercises in the chapters.

In short I congratulate the authors on an excellent book that I look forward to working through in depth over the coming months. If you are looking to improve your predictive modelling and are short of professional standard, this is the book you are looking for. Whilst there are loads to learn and master - you can jump in and use things from the book very quickly thanks to its use of impressive packages. One area I would love to see added to future editions would be the ensembling of different models.

See all 52 customer reviews...

Applied Predictive Modeling, by Max Kuhn, Kjell Johnson PDF
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson EPub
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Doc
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson iBooks
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson rtf
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Mobipocket
Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Kindle

[Z402.Ebook] Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Doc

[Z402.Ebook] Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Doc

[Z402.Ebook] Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Doc
[Z402.Ebook] Ebook Applied Predictive Modeling, by Max Kuhn, Kjell Johnson Doc

No comments:

Post a Comment