Alice Paul
Mastering Health Data Science Using R
Alice Paul
Mastering Health Data Science Using R
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This book provides a practical, application-driven guide to using R for public health and health data science, accessible to both beginners and those with some coding experience. Each module starts with data as the driver of analysis before introducing and breaking down the programming concepts needed to tackle the analysis.
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This book provides a practical, application-driven guide to using R for public health and health data science, accessible to both beginners and those with some coding experience. Each module starts with data as the driver of analysis before introducing and breaking down the programming concepts needed to tackle the analysis.
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Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 368
- Erscheinungstermin: 2. Juli 2025
- Englisch
- Abmessung: 234mm x 156mm
- Gewicht: 453g
- ISBN-13: 9781032729930
- ISBN-10: 1032729937
- Artikelnr.: 72803244
- Herstellerkennzeichnung
- Produktsicherheitsverantwortliche/r
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 368
- Erscheinungstermin: 2. Juli 2025
- Englisch
- Abmessung: 234mm x 156mm
- Gewicht: 453g
- ISBN-13: 9781032729930
- ISBN-10: 1032729937
- Artikelnr.: 72803244
- Herstellerkennzeichnung
- Produktsicherheitsverantwortliche/r
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Alice Paul is an Assistant Professor of Biostatistics and Teaching Scholar, holding a Ph.D. in Operations Research from Cornell University. With six years of teaching experience at the undergraduate, master's, and Ph.D. levels, she instructed students in diverse fields, including biostatistics, engineering, computer science, and data science at both Brown University and Olin College of Engineering.
Preface Acknowledgments 1 Getting Started with R 1.1 Why R? 1.1.1
Installation of R and RStudio 1.2 The R Console 1.2.1 Basic Computations
and Objects 1.2.2 Naming Conventions 1.3 RStudio and Quarto 1.3.1 Panes
1.3.2 Calling Functions 1.3.3 Working Directories and Paths 1.3.4
Installing and Loading Packages 1.4 RStudio Projects and RStudio Global
Options 1.5 Tips and Reminders 2 Data Structures in R 2.1 Data Types 2.2
Vectors 2.2.1 Indexing a Vector 2.2.2 Modifying a Vector and Calculations
2.2.3 Practice Question 2.2.4 Common Vector Functions 2.3 Factors 2.4
Matrices 2.4.1 Indexing a Matrix 2.4.2 Modifying a Matrix 2.4.3 Practice
Question 2.5 Data Frames 2.5.1 Indexing a Data Frame 2.5.2 Modifying a Data
Frame 2.5.3 Practice Question 2.6 Lists 2.7 Exercises 3 Working with Data
Files in R 3.1 Importing and Exporting Data 3.2 Summarizing and Creating
Data Columns 3.2.1 Column Summaries 3.2.2 Practice Question 3.2.3 Other
Summary Functions 3.2.4 Practice Question 3.2.5 Missing, Infinite, and NaN
Values 3.2.6 Dates in R 3.3 Using Logic to Subset, Summarize, and Transform
3.3.1 Practice Question 3.3.2 Other Selection Functions 3.4 Exercises I
Introduction to R 4 Intro to Exploratory Data Analysis 4.1 Univariate
Distributions 4.1.1 Practice Question 4.2 Bivariate Distributions 4.2.1
Practice Question 4.3 Autogenerated Plots 4.4 Tables 4.5 Exercises 5 Data
Transformations and Summaries 5.1 Tibbles and Data Frames 5.2 Subsetting
Data 5.2.1 Practice Question 5.3 Updating Rows and Columns 5.3.1 Practice
Question 5.4 Summarizing and Grouping 5.4.1 Practice Question 5.5 Exercises
6 Case Study: Cleaning Tuberculosis Screening Data 7 Merging and Reshaping
Data 7.1 Tidy Data 7.2 Reshaping Data 7.2.1 Practice Question 7.3 Merging
Data with Joins 7.3.1 Practice Question 7.4 Exercises 8 Visualization with
ggplot2 8.1 Intro to ggplot 8.1.1 Practice Question 8.2 Adjusting the Axes
and Aesthetics 8.3 Adding Groups 8.3.1 Practice Question 8.4 Extra Options
8.5 Exercises 9 Case Study: Exploring Early COVID-19 Data 9.1
Pre-processing 9.2 Mobility and Cases Over Time II Exploratory Analysis 10
Probability Distributions in R 10.1 Probability Distributions in R 10.1.1
Random Samples 10.1.2 Density Function 10.1.3 Cumulative Distribution
10.1.4 Quantile Distribution 10.1.5 Reference List for Probability
Distributions 10.1.6 Practice Question 10.2 Empirical Distributions and
Sampling Data 10.2.1 Practice Question 10.3 Exercises 11 Hypothesis Testing
11.1 Univariate Distributions and One-Sample Tests 11.1.1 Practice Question
11.2 Correlation and Covariance 11.3 Two-Sample Tests for Continuous
Variables 11.3.1 Practice Question 11.3.2 Two-Sample Variance Tests 11.4
Two-Sample Tests for Categorical Variables 11.4.1 Practice Question 11.5
Adding Hypothesis Tests to Summary Tables 11.6 Exercises 12 Case Study:
Analyzing Blood Lead Level and Hypertension III Distributions and
Hypothesis Testing 13 Linear Regression 13.1 Simple Linear Regression
13.1.1 Practice Question 13.2 Multiple Linear Regression 13.3 Diagnostic
Plots and Measures 13.3.1 Normality 13.3.2 Homoscedasticity, Linearity, and
Collinearity 13.3.3 Practice Question 13.3.4 Leverage and Influence 13.4
Interactions and Transformations 13.4.1 Practice Question 13.5 Evaluation
Metrics 13.6 Stepwise Selection 13.7 Exercises 14 Logistic Regression 14.1
Generalized Linear Models in R 14.1.1 Practice Question 14.2 Residuals,
Discrimination, and Calibration 14.2.1 Receiver Operating Characteristic
(ROC) Curve 14.2.2 Calibration Plot 14.2.3 Practice Question 14.3 Variable
Selection and Likelihood Ratio Tests 14.4 Extending Beyond Binary Outcomes
14.5 Exercises 15 Model Selection 15.1 Regularized Regression 15.2 Elastic
Net 15.3 Best Subset 15.4 Exercises 16 Case Study: Predicting Tuberculosis
Risk 16.1 Model Selection 16.2 Evaluate Model on Validation Data IV
Regression 17 Logic and Loops 17.1 Logic and Conditional Expressions 17.1.1
Practice Question 17.2 Loops 17.2.1 Practice Question 17.3 Avoiding Control
Flows with Functions 17.4 Exercises 18 Functions 18.1 Components of a
Function 18.1.1 Arguments 18.1.2 Practice Question 18.1.3 Return Values
18.1.4 Scope of Objects 18.1.5 Functions within Functions and Returning
Functions 18.2 Documenting Functions 18.2.1 Practice Question 18.3
Debugging and Testing 18.3.1 Unit tests 18.3.2 Practice Question 18.4
Exercises 19 Case Study: Designing a Simulation Study 19.1 Outlining Our
Approach 19.2 Coding Our Simulation Study 19.3 Results 20 Writing Efficient
Code 20.1 Use Fast and Vectorized Functions 20.1.1 Practice Question 20.2
Avoid Copies and Duplicates objects!copies 20.2.1 Practice Question 20.3
Parallel Programming 20.4 Exercises V Writing Larger Programs 21 Expanding
your R Skills 21.1 Reading Documentation for New Packages 21.2 Trying
Simple Examples 21.3 Deciphering Error Messages and Warnings 21.3.1
Debugging Code 21.4 General Programming Tips 21.5 Exercises 22 Writing
Reports in Quarto 22.1 Starting a Quarto file 22.1.1 Adding Code Chunks
22.1.2 Customizing Chunks 22.2 Formatting Text in Markdown 22.3 Formatting
Figures and Tables 22.3.1 Using References 22.4 Adding in Equations 22.5
Exercises References
Installation of R and RStudio 1.2 The R Console 1.2.1 Basic Computations
and Objects 1.2.2 Naming Conventions 1.3 RStudio and Quarto 1.3.1 Panes
1.3.2 Calling Functions 1.3.3 Working Directories and Paths 1.3.4
Installing and Loading Packages 1.4 RStudio Projects and RStudio Global
Options 1.5 Tips and Reminders 2 Data Structures in R 2.1 Data Types 2.2
Vectors 2.2.1 Indexing a Vector 2.2.2 Modifying a Vector and Calculations
2.2.3 Practice Question 2.2.4 Common Vector Functions 2.3 Factors 2.4
Matrices 2.4.1 Indexing a Matrix 2.4.2 Modifying a Matrix 2.4.3 Practice
Question 2.5 Data Frames 2.5.1 Indexing a Data Frame 2.5.2 Modifying a Data
Frame 2.5.3 Practice Question 2.6 Lists 2.7 Exercises 3 Working with Data
Files in R 3.1 Importing and Exporting Data 3.2 Summarizing and Creating
Data Columns 3.2.1 Column Summaries 3.2.2 Practice Question 3.2.3 Other
Summary Functions 3.2.4 Practice Question 3.2.5 Missing, Infinite, and NaN
Values 3.2.6 Dates in R 3.3 Using Logic to Subset, Summarize, and Transform
3.3.1 Practice Question 3.3.2 Other Selection Functions 3.4 Exercises I
Introduction to R 4 Intro to Exploratory Data Analysis 4.1 Univariate
Distributions 4.1.1 Practice Question 4.2 Bivariate Distributions 4.2.1
Practice Question 4.3 Autogenerated Plots 4.4 Tables 4.5 Exercises 5 Data
Transformations and Summaries 5.1 Tibbles and Data Frames 5.2 Subsetting
Data 5.2.1 Practice Question 5.3 Updating Rows and Columns 5.3.1 Practice
Question 5.4 Summarizing and Grouping 5.4.1 Practice Question 5.5 Exercises
6 Case Study: Cleaning Tuberculosis Screening Data 7 Merging and Reshaping
Data 7.1 Tidy Data 7.2 Reshaping Data 7.2.1 Practice Question 7.3 Merging
Data with Joins 7.3.1 Practice Question 7.4 Exercises 8 Visualization with
ggplot2 8.1 Intro to ggplot 8.1.1 Practice Question 8.2 Adjusting the Axes
and Aesthetics 8.3 Adding Groups 8.3.1 Practice Question 8.4 Extra Options
8.5 Exercises 9 Case Study: Exploring Early COVID-19 Data 9.1
Pre-processing 9.2 Mobility and Cases Over Time II Exploratory Analysis 10
Probability Distributions in R 10.1 Probability Distributions in R 10.1.1
Random Samples 10.1.2 Density Function 10.1.3 Cumulative Distribution
10.1.4 Quantile Distribution 10.1.5 Reference List for Probability
Distributions 10.1.6 Practice Question 10.2 Empirical Distributions and
Sampling Data 10.2.1 Practice Question 10.3 Exercises 11 Hypothesis Testing
11.1 Univariate Distributions and One-Sample Tests 11.1.1 Practice Question
11.2 Correlation and Covariance 11.3 Two-Sample Tests for Continuous
Variables 11.3.1 Practice Question 11.3.2 Two-Sample Variance Tests 11.4
Two-Sample Tests for Categorical Variables 11.4.1 Practice Question 11.5
Adding Hypothesis Tests to Summary Tables 11.6 Exercises 12 Case Study:
Analyzing Blood Lead Level and Hypertension III Distributions and
Hypothesis Testing 13 Linear Regression 13.1 Simple Linear Regression
13.1.1 Practice Question 13.2 Multiple Linear Regression 13.3 Diagnostic
Plots and Measures 13.3.1 Normality 13.3.2 Homoscedasticity, Linearity, and
Collinearity 13.3.3 Practice Question 13.3.4 Leverage and Influence 13.4
Interactions and Transformations 13.4.1 Practice Question 13.5 Evaluation
Metrics 13.6 Stepwise Selection 13.7 Exercises 14 Logistic Regression 14.1
Generalized Linear Models in R 14.1.1 Practice Question 14.2 Residuals,
Discrimination, and Calibration 14.2.1 Receiver Operating Characteristic
(ROC) Curve 14.2.2 Calibration Plot 14.2.3 Practice Question 14.3 Variable
Selection and Likelihood Ratio Tests 14.4 Extending Beyond Binary Outcomes
14.5 Exercises 15 Model Selection 15.1 Regularized Regression 15.2 Elastic
Net 15.3 Best Subset 15.4 Exercises 16 Case Study: Predicting Tuberculosis
Risk 16.1 Model Selection 16.2 Evaluate Model on Validation Data IV
Regression 17 Logic and Loops 17.1 Logic and Conditional Expressions 17.1.1
Practice Question 17.2 Loops 17.2.1 Practice Question 17.3 Avoiding Control
Flows with Functions 17.4 Exercises 18 Functions 18.1 Components of a
Function 18.1.1 Arguments 18.1.2 Practice Question 18.1.3 Return Values
18.1.4 Scope of Objects 18.1.5 Functions within Functions and Returning
Functions 18.2 Documenting Functions 18.2.1 Practice Question 18.3
Debugging and Testing 18.3.1 Unit tests 18.3.2 Practice Question 18.4
Exercises 19 Case Study: Designing a Simulation Study 19.1 Outlining Our
Approach 19.2 Coding Our Simulation Study 19.3 Results 20 Writing Efficient
Code 20.1 Use Fast and Vectorized Functions 20.1.1 Practice Question 20.2
Avoid Copies and Duplicates objects!copies 20.2.1 Practice Question 20.3
Parallel Programming 20.4 Exercises V Writing Larger Programs 21 Expanding
your R Skills 21.1 Reading Documentation for New Packages 21.2 Trying
Simple Examples 21.3 Deciphering Error Messages and Warnings 21.3.1
Debugging Code 21.4 General Programming Tips 21.5 Exercises 22 Writing
Reports in Quarto 22.1 Starting a Quarto file 22.1.1 Adding Code Chunks
22.1.2 Customizing Chunks 22.2 Formatting Text in Markdown 22.3 Formatting
Figures and Tables 22.3.1 Using References 22.4 Adding in Equations 22.5
Exercises References
Preface Acknowledgments 1 Getting Started with R 1.1 Why R? 1.1.1
Installation of R and RStudio 1.2 The R Console 1.2.1 Basic Computations
and Objects 1.2.2 Naming Conventions 1.3 RStudio and Quarto 1.3.1 Panes
1.3.2 Calling Functions 1.3.3 Working Directories and Paths 1.3.4
Installing and Loading Packages 1.4 RStudio Projects and RStudio Global
Options 1.5 Tips and Reminders 2 Data Structures in R 2.1 Data Types 2.2
Vectors 2.2.1 Indexing a Vector 2.2.2 Modifying a Vector and Calculations
2.2.3 Practice Question 2.2.4 Common Vector Functions 2.3 Factors 2.4
Matrices 2.4.1 Indexing a Matrix 2.4.2 Modifying a Matrix 2.4.3 Practice
Question 2.5 Data Frames 2.5.1 Indexing a Data Frame 2.5.2 Modifying a Data
Frame 2.5.3 Practice Question 2.6 Lists 2.7 Exercises 3 Working with Data
Files in R 3.1 Importing and Exporting Data 3.2 Summarizing and Creating
Data Columns 3.2.1 Column Summaries 3.2.2 Practice Question 3.2.3 Other
Summary Functions 3.2.4 Practice Question 3.2.5 Missing, Infinite, and NaN
Values 3.2.6 Dates in R 3.3 Using Logic to Subset, Summarize, and Transform
3.3.1 Practice Question 3.3.2 Other Selection Functions 3.4 Exercises I
Introduction to R 4 Intro to Exploratory Data Analysis 4.1 Univariate
Distributions 4.1.1 Practice Question 4.2 Bivariate Distributions 4.2.1
Practice Question 4.3 Autogenerated Plots 4.4 Tables 4.5 Exercises 5 Data
Transformations and Summaries 5.1 Tibbles and Data Frames 5.2 Subsetting
Data 5.2.1 Practice Question 5.3 Updating Rows and Columns 5.3.1 Practice
Question 5.4 Summarizing and Grouping 5.4.1 Practice Question 5.5 Exercises
6 Case Study: Cleaning Tuberculosis Screening Data 7 Merging and Reshaping
Data 7.1 Tidy Data 7.2 Reshaping Data 7.2.1 Practice Question 7.3 Merging
Data with Joins 7.3.1 Practice Question 7.4 Exercises 8 Visualization with
ggplot2 8.1 Intro to ggplot 8.1.1 Practice Question 8.2 Adjusting the Axes
and Aesthetics 8.3 Adding Groups 8.3.1 Practice Question 8.4 Extra Options
8.5 Exercises 9 Case Study: Exploring Early COVID-19 Data 9.1
Pre-processing 9.2 Mobility and Cases Over Time II Exploratory Analysis 10
Probability Distributions in R 10.1 Probability Distributions in R 10.1.1
Random Samples 10.1.2 Density Function 10.1.3 Cumulative Distribution
10.1.4 Quantile Distribution 10.1.5 Reference List for Probability
Distributions 10.1.6 Practice Question 10.2 Empirical Distributions and
Sampling Data 10.2.1 Practice Question 10.3 Exercises 11 Hypothesis Testing
11.1 Univariate Distributions and One-Sample Tests 11.1.1 Practice Question
11.2 Correlation and Covariance 11.3 Two-Sample Tests for Continuous
Variables 11.3.1 Practice Question 11.3.2 Two-Sample Variance Tests 11.4
Two-Sample Tests for Categorical Variables 11.4.1 Practice Question 11.5
Adding Hypothesis Tests to Summary Tables 11.6 Exercises 12 Case Study:
Analyzing Blood Lead Level and Hypertension III Distributions and
Hypothesis Testing 13 Linear Regression 13.1 Simple Linear Regression
13.1.1 Practice Question 13.2 Multiple Linear Regression 13.3 Diagnostic
Plots and Measures 13.3.1 Normality 13.3.2 Homoscedasticity, Linearity, and
Collinearity 13.3.3 Practice Question 13.3.4 Leverage and Influence 13.4
Interactions and Transformations 13.4.1 Practice Question 13.5 Evaluation
Metrics 13.6 Stepwise Selection 13.7 Exercises 14 Logistic Regression 14.1
Generalized Linear Models in R 14.1.1 Practice Question 14.2 Residuals,
Discrimination, and Calibration 14.2.1 Receiver Operating Characteristic
(ROC) Curve 14.2.2 Calibration Plot 14.2.3 Practice Question 14.3 Variable
Selection and Likelihood Ratio Tests 14.4 Extending Beyond Binary Outcomes
14.5 Exercises 15 Model Selection 15.1 Regularized Regression 15.2 Elastic
Net 15.3 Best Subset 15.4 Exercises 16 Case Study: Predicting Tuberculosis
Risk 16.1 Model Selection 16.2 Evaluate Model on Validation Data IV
Regression 17 Logic and Loops 17.1 Logic and Conditional Expressions 17.1.1
Practice Question 17.2 Loops 17.2.1 Practice Question 17.3 Avoiding Control
Flows with Functions 17.4 Exercises 18 Functions 18.1 Components of a
Function 18.1.1 Arguments 18.1.2 Practice Question 18.1.3 Return Values
18.1.4 Scope of Objects 18.1.5 Functions within Functions and Returning
Functions 18.2 Documenting Functions 18.2.1 Practice Question 18.3
Debugging and Testing 18.3.1 Unit tests 18.3.2 Practice Question 18.4
Exercises 19 Case Study: Designing a Simulation Study 19.1 Outlining Our
Approach 19.2 Coding Our Simulation Study 19.3 Results 20 Writing Efficient
Code 20.1 Use Fast and Vectorized Functions 20.1.1 Practice Question 20.2
Avoid Copies and Duplicates objects!copies 20.2.1 Practice Question 20.3
Parallel Programming 20.4 Exercises V Writing Larger Programs 21 Expanding
your R Skills 21.1 Reading Documentation for New Packages 21.2 Trying
Simple Examples 21.3 Deciphering Error Messages and Warnings 21.3.1
Debugging Code 21.4 General Programming Tips 21.5 Exercises 22 Writing
Reports in Quarto 22.1 Starting a Quarto file 22.1.1 Adding Code Chunks
22.1.2 Customizing Chunks 22.2 Formatting Text in Markdown 22.3 Formatting
Figures and Tables 22.3.1 Using References 22.4 Adding in Equations 22.5
Exercises References
Installation of R and RStudio 1.2 The R Console 1.2.1 Basic Computations
and Objects 1.2.2 Naming Conventions 1.3 RStudio and Quarto 1.3.1 Panes
1.3.2 Calling Functions 1.3.3 Working Directories and Paths 1.3.4
Installing and Loading Packages 1.4 RStudio Projects and RStudio Global
Options 1.5 Tips and Reminders 2 Data Structures in R 2.1 Data Types 2.2
Vectors 2.2.1 Indexing a Vector 2.2.2 Modifying a Vector and Calculations
2.2.3 Practice Question 2.2.4 Common Vector Functions 2.3 Factors 2.4
Matrices 2.4.1 Indexing a Matrix 2.4.2 Modifying a Matrix 2.4.3 Practice
Question 2.5 Data Frames 2.5.1 Indexing a Data Frame 2.5.2 Modifying a Data
Frame 2.5.3 Practice Question 2.6 Lists 2.7 Exercises 3 Working with Data
Files in R 3.1 Importing and Exporting Data 3.2 Summarizing and Creating
Data Columns 3.2.1 Column Summaries 3.2.2 Practice Question 3.2.3 Other
Summary Functions 3.2.4 Practice Question 3.2.5 Missing, Infinite, and NaN
Values 3.2.6 Dates in R 3.3 Using Logic to Subset, Summarize, and Transform
3.3.1 Practice Question 3.3.2 Other Selection Functions 3.4 Exercises I
Introduction to R 4 Intro to Exploratory Data Analysis 4.1 Univariate
Distributions 4.1.1 Practice Question 4.2 Bivariate Distributions 4.2.1
Practice Question 4.3 Autogenerated Plots 4.4 Tables 4.5 Exercises 5 Data
Transformations and Summaries 5.1 Tibbles and Data Frames 5.2 Subsetting
Data 5.2.1 Practice Question 5.3 Updating Rows and Columns 5.3.1 Practice
Question 5.4 Summarizing and Grouping 5.4.1 Practice Question 5.5 Exercises
6 Case Study: Cleaning Tuberculosis Screening Data 7 Merging and Reshaping
Data 7.1 Tidy Data 7.2 Reshaping Data 7.2.1 Practice Question 7.3 Merging
Data with Joins 7.3.1 Practice Question 7.4 Exercises 8 Visualization with
ggplot2 8.1 Intro to ggplot 8.1.1 Practice Question 8.2 Adjusting the Axes
and Aesthetics 8.3 Adding Groups 8.3.1 Practice Question 8.4 Extra Options
8.5 Exercises 9 Case Study: Exploring Early COVID-19 Data 9.1
Pre-processing 9.2 Mobility and Cases Over Time II Exploratory Analysis 10
Probability Distributions in R 10.1 Probability Distributions in R 10.1.1
Random Samples 10.1.2 Density Function 10.1.3 Cumulative Distribution
10.1.4 Quantile Distribution 10.1.5 Reference List for Probability
Distributions 10.1.6 Practice Question 10.2 Empirical Distributions and
Sampling Data 10.2.1 Practice Question 10.3 Exercises 11 Hypothesis Testing
11.1 Univariate Distributions and One-Sample Tests 11.1.1 Practice Question
11.2 Correlation and Covariance 11.3 Two-Sample Tests for Continuous
Variables 11.3.1 Practice Question 11.3.2 Two-Sample Variance Tests 11.4
Two-Sample Tests for Categorical Variables 11.4.1 Practice Question 11.5
Adding Hypothesis Tests to Summary Tables 11.6 Exercises 12 Case Study:
Analyzing Blood Lead Level and Hypertension III Distributions and
Hypothesis Testing 13 Linear Regression 13.1 Simple Linear Regression
13.1.1 Practice Question 13.2 Multiple Linear Regression 13.3 Diagnostic
Plots and Measures 13.3.1 Normality 13.3.2 Homoscedasticity, Linearity, and
Collinearity 13.3.3 Practice Question 13.3.4 Leverage and Influence 13.4
Interactions and Transformations 13.4.1 Practice Question 13.5 Evaluation
Metrics 13.6 Stepwise Selection 13.7 Exercises 14 Logistic Regression 14.1
Generalized Linear Models in R 14.1.1 Practice Question 14.2 Residuals,
Discrimination, and Calibration 14.2.1 Receiver Operating Characteristic
(ROC) Curve 14.2.2 Calibration Plot 14.2.3 Practice Question 14.3 Variable
Selection and Likelihood Ratio Tests 14.4 Extending Beyond Binary Outcomes
14.5 Exercises 15 Model Selection 15.1 Regularized Regression 15.2 Elastic
Net 15.3 Best Subset 15.4 Exercises 16 Case Study: Predicting Tuberculosis
Risk 16.1 Model Selection 16.2 Evaluate Model on Validation Data IV
Regression 17 Logic and Loops 17.1 Logic and Conditional Expressions 17.1.1
Practice Question 17.2 Loops 17.2.1 Practice Question 17.3 Avoiding Control
Flows with Functions 17.4 Exercises 18 Functions 18.1 Components of a
Function 18.1.1 Arguments 18.1.2 Practice Question 18.1.3 Return Values
18.1.4 Scope of Objects 18.1.5 Functions within Functions and Returning
Functions 18.2 Documenting Functions 18.2.1 Practice Question 18.3
Debugging and Testing 18.3.1 Unit tests 18.3.2 Practice Question 18.4
Exercises 19 Case Study: Designing a Simulation Study 19.1 Outlining Our
Approach 19.2 Coding Our Simulation Study 19.3 Results 20 Writing Efficient
Code 20.1 Use Fast and Vectorized Functions 20.1.1 Practice Question 20.2
Avoid Copies and Duplicates objects!copies 20.2.1 Practice Question 20.3
Parallel Programming 20.4 Exercises V Writing Larger Programs 21 Expanding
your R Skills 21.1 Reading Documentation for New Packages 21.2 Trying
Simple Examples 21.3 Deciphering Error Messages and Warnings 21.3.1
Debugging Code 21.4 General Programming Tips 21.5 Exercises 22 Writing
Reports in Quarto 22.1 Starting a Quarto file 22.1.1 Adding Code Chunks
22.1.2 Customizing Chunks 22.2 Formatting Text in Markdown 22.3 Formatting
Figures and Tables 22.3.1 Using References 22.4 Adding in Equations 22.5
Exercises References