Get Free Shipping on orders over $79
Feature Engineering and Selection : A Practical Approach for Predictive Models - Max Kuhn

Feature Engineering and Selection

A Practical Approach for Predictive Models

By: Max Kuhn, Kjell Johnson

Paperback | 30 June 2021 | Edition Number 1

At a Glance

Paperback


$181.75

or 4 interest-free payments of $45.44 with

 or 

Ships in 15 to 25 business days

The process of developing predictive models includes many stages. Most resources focus on the modeling algorithms but neglect other critical aspects of the modeling process. This book describes techniques for finding the best representations of predictors for modeling and for nding the best subset of predictors for improving model performance. A variety of example data sets are used to illustrate the techniques along with R programs for reproducing the results.

Industry Reviews

"The book is timely and needed. The interest in all things 'data science' morphed into everybody pretending to do, or know, Machine Learning. Kuhn and Johnson happen to actually know this-as evidenced by their earlier and still-popular tome entitled 'Applied Predictive Modeling.' The proposed 'Feature Engineering and Selection' builds on this and extends it. I expect it to become as popular with a wide reach as both a textbook, self-study material, and reference."
~Dirk Eddelbuettel, University of Illinois at Urbana-Champaign

"As a reviewer, it has been exciting and edifying to see this book develop into what is likely to become one of the foundational works on feature engineering. It is launching propitiously on the current tide of interest in both interpretable models and AutoML."
~Robert Horton, Microsoft

"In recent years, the statistics literature has featured new developments in modeling and predictive analytics. Approaches such as cross-validation and statistical/machine learning techniques have become widespread. The author's previous book ("Applied Predictive Modeling", APM) provided a wide-ranging introduction and integration of these methods and suggested a workflow in R to carry out exploratory and confirmation analyses. With this project, the authors have identified an important and interesting component of these methods that describes building better models by focusing on the predictors (feature engineering)...The authors focus on the variables that go into the model (and how they are represented) and argue that such issues are as important (or more important) than the particular methods that are applied to an analysis...The proposed book is likely to serve as a textbook (for a number of undergraduate and graduate courses in a variety of disciplines) and reference (for a large number of statisticians seeking principled and well-organized modeling)."
~Nicholas Horton, Amherst College

"I think this book is great and a joy to read...I like the pragmatic and practical approach taken in the book, and the examples given are very illustrative. The emphasis on how and when to use resampling is refreshing and something that the community needs to hear more."
~Andreas C. Muller, Columbia University


"The book is timely and needed. The interest in all things 'data science' morphed into everybody pretending to do, or know, Machine Learning. Kuhn and Johnson happen to actually know this-as evidenced by their earlier and still-popular tome entitled 'Applied Predictive Modeling.' The proposed 'Feature Engineering and Selection' builds on this and extends it. I expect it to become as popular with a wide reach as both a textbook, self-study material, and reference."
~Dirk Eddelbuettel, University of Illinois at Urbana-Champaign

"As a reviewer, it has been exciting and edifying to see this book develop into what is likely to become one of the foundational works on feature engineering. It is launching propitiously on the current tide of interest in both interpretable models and AutoML."
~Robert Horton, Microsoft

"In recent years, the statistics literature has featured new developments in modeling and predictive analytics. Approaches such as cross-validation and statistical/machine learning techniques have become widespread. The author's previous book ("Applied Predictive Modeling", APM) provided a wide-ranging introduction and integration of these methods and suggested a workflow in R to carry out exploratory and confirmation analyses. With this project, the authors have identified an important and interesting component of these methods that describes building better models by focusing on the predictors (feature engineering)...The authors focus on the variables that go into the model (and how they are represented) and argue that such issues are as important (or more important) than the particular methods that are applied to an analysis...The proposed book is likely to serve as a textbook (for a number of undergraduate and graduate courses in a variety of disciplines) and reference (for a large number of statisticians seeking principled and well-organized modeling)."
~Nicholas Horton, Amherst College

"I think this book is great and a joy to read...I like the pragmatic and practical approach taken in the book, and the examples given are very illustrative. The emphasis on how and when to use resampling is refreshing and something that the community needs to hear more."
~Andreas C. Muller, Columbia University

More in Computer Science

Microsoft 365 Excel All-in-One For Dummies : Excel for Dummies - David H. Ringstrom
The Singularity is Nearer : When We Merge with AI - Ray Kurzweil

RRP $26.99

$22.99

15%
OFF
Microsoft 365 Excel For Dummies : For Dummies (Computer/Tech) - David H. Ringstrom
Supremacy : AI, ChatGPT and the Race that Will Change the World - Parmy Olson
Creative Machines : AI, Art & Us - Maya Ackerman

RRP $57.95

$44.75

23%
OFF
New Beginnings : why change is so difficult and how to achieve it - Stefan Klein
The Tech Coup : How to Save Democracy from Silicon Valley - Marietje Schaake
The Shortest History of AI - Toby Walsh

RRP $27.99

$22.75

19%
OFF
Artificial Intelligence : A Modern Approach, 4th Global Edition - Peter Norvig
Life 3.0 : Being Human in the Age of Artificial Intelligence - Max Tegmark
Genesis : Artificial Intelligence, Hope, and the Human Spirit - Eric Schmidt
Python All-in-One For Dummies : 3rd Edition - Alan Simpson

RRP $74.95

$55.75

26%
OFF