R All-in-One For Dummies

R All-in-One For Dummies

Schmuller, Joseph

John Wiley & Sons Inc

02/2023

688

Mole

Inglês

9781119983699

15 a 20 dias

1232

Descrição não disponível.
Introduction 1

Book 1: Introducing R 5

Chapter 1: R: What It Does and How It Does It 7

Chapter 2: Working with Packages, Importing, and Exporting 37

Book 2: Describing Data 51

Chapter 1: Getting Graphic 53

Chapter 2: Finding Your Center 93

Chapter 3: Deviating from the Average 103

Chapter 4: Meeting Standards and Standings 113

Chapter 5: Summarizing It All 125

Chapter 6: What's Normal? 145

Book 3: Analyzing Data 163

Chapter 1: The Confidence Game: Estimation 165

Chapter 2: One-Sample Hypothesis Testing 181

Chapter 3: Two-Sample Hypothesis Testing 207

Chapter 4: Testing More than Two Samples 233

Chapter 5: More Complicated Testing 257

Chapter 6: Regression: Linear, Multiple, and the General Linear Model 279

Chapter 7: Correlation: The Rise and Fall of Relationships 315

Chapter 8: Curvilinear Regression: When Relationships Get Complicated 335

Chapter 9: In Due Time 359

Chapter 10: Non-Parametric Statistics 371

Chapter 11: Introducing Probability 393

Chapter 12: Probability Meets Regression: Logistic Regression 415

Book 4: Learning from Data 423

Chapter 1: Tools and Data for Machine Learning Projects 425

Chapter 2: Decisions, Decisions, Decisions 449

Chapter 3: Into the Forest, Randomly 467

Chapter 4: Support Your Local Vector 483

Chapter 5: K-Means Clustering 503

Chapter 6: Neural Networks 519

Chapter 7: Exploring Marketing 537

Chapter 8: From the City That Never Sleeps 557

Book 5: Harnessing R: Some Projects to Keep You Busy 573

Chapter 1: Working with a Browser 575

Chapter 2: Dashboards - How Dashing! 603

Index 639
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R programming; R language; coding in R; programming in R; R data analysis; R statistical analysis; R data visualization; R projects; R for beginners; introduction to R; basic R programming; R machine learning; R statistics; R data models; R practice