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عنوان
Introduction to machine learning with R :

پدید آورنده
Scott V. Burger.

موضوع
R (Computer program language),Statistics-- Data processing.,COMPUTERS-- Programming Languages-- General.,R (Computer program language),Statistics-- Data processing.

رده
QA76
.
73
.
R3
B87
2018

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

INTERNATIONAL STANDARD BOOK NUMBER

(Number (ISBN
149197639X
(Number (ISBN
1491976411
(Number (ISBN
1491976438
(Number (ISBN
1491976446
(Number (ISBN
9781491976395
(Number (ISBN
9781491976418
(Number (ISBN
9781491976432
(Number (ISBN
9781491976449
Erroneous ISBN
9781491976449

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Introduction to machine learning with R :
General Material Designation
[Book]
Other Title Information
rigorous mathematical analysis /
First Statement of Responsibility
Scott V. Burger.

EDITION STATEMENT

Edition Statement
First edition.

.PUBLICATION, DISTRIBUTION, ETC

Place of Publication, Distribution, etc.
Sebastopol, CA :
Name of Publisher, Distributor, etc.
O'Reilly Media, Inc.,
Date of Publication, Distribution, etc.
2018.

PHYSICAL DESCRIPTION

Specific Material Designation and Extent of Item
1 online resource (200 pages)

CONTENTS NOTE

Text of Note
Cover; Copyright; Table of Contents; Preface; Who Should Read This Book?; Scope of the Book; Conventions Used in This Book; O'Reilly Safari; How to Contact Us; Acknowledgments; Chapter 1. What Is a Model?; Algorithms Versus Models: What's the Difference?; A Note on Terminology; Modeling Limitations; Statistics and Computation in Modeling; Data Training; Cross-Validation; Why Use R?; The Good; R and Machine Learning; The Bad; Summary; Chapter 2. Supervised and Unsupervised Machine Learning; Supervised Models; Regression; Training and Testing of Data; Classification; Logistic Regression
Text of Note
Naive Bayes ClassificationBayesian Statistics in a Nutshell; Application of Naive Bayes; Principal Component Analysis; Linear Discriminant Analysis; Support Vector Machines; k-Nearest Neighbors; Regression Using kNN; Classification Using kNN; Summary; Chapter 8. Machine Learning with the caret Package; The Titanic Dataset; Data Wrangling; caret Unleashed; Imputation; Data Splitting; caret Under the Hood; Model Training; Comparing Multiple caret Models; Summary; Appendix A. Encyclopedia of Machine Learning Models in caret; Index; About the Author; Colophon
Text of Note
Neural Networks for ClassificationNeural Networks with caret; Regression; Classification; Summary; Chapter 6. Tree-Based Methods; A Simple Tree Model; Deciding How to Split Trees; Tree Entropy and Information Gain; Pros and Cons of Decision Trees; Tree Overfitting; Pruning Trees; Decision Trees for Regression; Decision Trees for Classification; Conditional Inference Trees; Conditional Inference Tree Regression; Conditional Inference Tree Classification; Random Forests; Random Forest Regression; Random Forest Classification; Summary; Chapter 7. Other Advanced Methods
Text of Note
Polynomial RegressionGoodness of Fit with Data--The Perils of Overfitting; Root-Mean-Square Error; Model Simplicity and Goodness of Fit; Logistic Regression; The Motivation for Classification; The Decision Boundary; The Sigmoid Function; Binary Classification; Multiclass Classification; Logistic Regression with Caret; Summary; Linear Regression; Logistic Regression; Chapter 5. Neural Networks in a Nutshell; Single-Layer Neural Networks; Building a Simple Neural Network by Using R; Multiple Compute Outputs; Hidden Compute Nodes; Multilayer Neural Networks; Neural Networks for Regression
Text of Note
Supervised Clustering MethodsMixed Methods; Tree-Based Models; Random Forests; Neural Networks; Support Vector Machines; Unsupervised Learning; Unsupervised Clustering Methods; Summary; Chapter 3. Sampling Statistics and Model Training in R; Bias; Sampling in R; Training and Testing; Roles of Training and Test Sets; Why Make a Test Set?; Training and Test Sets: Regression Modeling; Training and Test Sets: Classification Modeling; Cross-Validation; k-Fold Cross-Validation; Summary; Chapter 4. Regression in a Nutshell; Linear Regression; Multivariate Regression; Regularization
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8
8
8
8

SUMMARY OR ABSTRACT

Text of Note
Machine learning can be a difficult subject if you're not familiar with the basics. With this book, you'll get a solid foundation of introductory principles used in machine learning with the statistical programming language R. You'll start with the basics like regression, then move into more advanced topics like neural networks, and finally delve into the frontier of machine learning in the R world with packages like Caret. By developing a familiarity with topics like understanding the difference between regression and classification models, you'll be able to solve an array of machine learning problems. Knowing when to use a specific model or not can mean the difference between a highly accurate model and a completely useless one. This book provides copious examples to build a working knowledge of machine learning. Understand the major parts of machine learning algorithms Recognize how machine learning can be used to solve a problem in a simple manner Figure out when to use certain machine learning algorithms versus others Learn how to operationalize algorithms with cutting edge packages

ACQUISITION INFORMATION NOTE

Source for Acquisition/Subscription Address
OverDrive, Inc.
Stock Number
75BF2633-FBC9-4E61-A275-9D4547262A93

OTHER EDITION IN ANOTHER MEDIUM

Title
Introduction to machine learning with R.

TOPICAL NAME USED AS SUBJECT

R (Computer program language)
Statistics-- Data processing.
COMPUTERS-- Programming Languages-- General.
R (Computer program language)
Statistics-- Data processing.

(SUBJECT CATEGORY (Provisional

COM-- 051010

DEWEY DECIMAL CLASSIFICATION

Number
005
.
13/3
Edition
23

LIBRARY OF CONGRESS CLASSIFICATION

Class number
QA76
.
73
.
R3
Book number
B87
2018

PERSONAL NAME - PRIMARY RESPONSIBILITY

Burger, Scott, V.

ORIGINATING SOURCE

Date of Transaction
20200823033054.0
Cataloguing Rules (Descriptive Conventions))
pn

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

[Book]

Y

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