Machine Learning with R, the tidyverse, and mlr Machine Learning with R, the tidyverse, and mlr

Machine Learning with R, the tidyverse, and mlr

    • US$36.99
    • US$36.99

출판사 설명

Summary

Machine learning (ML) is a collection of programming techniques for discovering relationships in data. With ML algorithms, you can cluster and classify data for tasks like making recommendations or fraud detection and make predictions for sales trends, risk analysis, and other forecasts. Once the domain of academic data scientists, machine learning has become a mainstream business process, and tools like the easy-to-learn R programming language put high-quality data analysis in the hands of any programmer. Machine Learning with R, the tidyverse, and mlr teaches you widely used ML techniques and how to apply them to your own datasets using the R programming language and its powerful ecosystem of tools. This book will get you started!

Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.

About the book

Machine Learning with R, the tidyverse, and mlr gets you started in machine learning using R Studio and the awesome mlr machine learning package. This practical guide simplifies theory and avoids needlessly complicated statistics or math. All core ML techniques are clearly explained through graphics and easy-to-grasp examples. In each engaging chapter, you’ll put a new algorithm into action to solve a quirky predictive analysis problem, including Titanic survival odds, spam email filtering, and poisoned wine investigation.

What's inside

    Using the tidyverse packages to process and plot your data
    Techniques for supervised and unsupervised learning
    Classification, regression, dimension reduction, and clustering algorithms
    Statistics primer to fill gaps in your knowledge

About the reader

For newcomers to machine learning with basic skills in R.

About the author

Hefin I. Rhys is a senior laboratory research scientist at the Francis Crick Institute. He runs his own YouTube channel of screencast tutorials for R and RStudio.
 

Table of contents:

PART 1 - INTRODUCTION

1.Introduction to machine learning

2. Tidying, manipulating, and plotting data with the tidyverse

PART 2 - CLASSIFICATION

3. Classifying based on similarities with k-nearest neighbors

4. Classifying based on odds with logistic regression

5. Classifying by maximizing separation with discriminant analysis

6. Classifying with naive Bayes and support vector machines

7. Classifying with decision trees

8. Improving decision trees with random forests and boosting

PART 3 - REGRESSION

9. Linear regression

10. Nonlinear regression with generalized additive models

11. Preventing overfitting with ridge regression, LASSO, and elastic net

12. Regression with kNN, random forest, and XGBoost

PART 4 - DIMENSION REDUCTION

13. Maximizing variance with principal component analysis

14. Maximizing similarity with t-SNE and UMAP

15. Self-organizing maps and locally linear embedding

PART 5 - CLUSTERING

16. Clustering by finding centers with k-means

17. Hierarchical clustering

18. Clustering based on density: DBSCAN and OPTICS

19. Clustering based on distributions with mixture modeling

20. Final notes and further reading

장르
컴퓨터 및 인터넷
출시일
2020년
3월 20일
언어
EN
영어
길이
536
페이지
출판사
Manning
판매자
Simon & Schuster Digital Sales LLC
크기
20.6
MB
Hands-On Machine Learning with R Hands-On Machine Learning with R
2019년
INTRODUCTION TO MACHINE LEARNING AND QUANTITATIVE FINANCE INTRODUCTION TO MACHINE LEARNING AND QUANTITATIVE FINANCE
2021년
Data Science for Mathematicians Data Science for Mathematicians
2020년
Fundamentals of Machine Learning for Predictive Data Analytics, second edition Fundamentals of Machine Learning for Predictive Data Analytics, second edition
2020년
Machine Learning Using R Machine Learning Using R
2016년
Training Systems Using Python Statistical Modeling Training Systems Using Python Statistical Modeling
2019년