Regression Analysis for Statistics & Machine Learning in R
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Regression Analysis for Statistics & Machine Learning in R
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What you'll learn
Understand the principles of Ordinary Least Square (OLS) regression and its application in R.
Analyze and evaluate statistical and ML-based regression models to address issues like multicollinearity.
Apply techniques for variable selection and evaluate model accuracy using cross-validation methods.
Create and interpret Generalized Linear Models (GLMs), utilizing logistic regression as a binary classifier.
Skills you'll gain
- Data Transformation
- Logistic Regression
- Machine Learning
- Classification And Regression Tree (CART)
- Data Wrangling
- Random Forest Algorithm
- Model Evaluation
- Model Training
- Machine Learning Methods
- Advanced Analytics
- Statistical Machine Learning
- Statistical Programming
- Data Cleansing
- Applied Machine Learning
- Statistical Modeling
- Statistical Analysis
- Data Preprocessing
- Statistical Methods
Tools you'll learn
Details to know
9 assignments
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There are 7 modules in this course
Updated in May 2025.
This course now features Coursera Coach! A smarter way to learn with interactive, real-time conversations that help you test your knowledge, challenge assumptions, and deepen your understanding as you progress through the course. This course delves into regression analysis using R, covering key concepts, software tools, and differences between statistical analysis and machine learning. - You'll learn data reading, cleaning, exploratory data analysis, and ordinary least squares (OLS) regression modeling, including theory, implementation, and result interpretation. - You'll tackle multicollinearity with techniques like principal component regression and LASSO regression, and cover variable and model selection for performance evaluation. - You'll handle OLS violations through data transformations and robust regression, and explore generalized linear models (GLMs) for logistic regression and count data analysis. - Advanced sections include non-linear and non-parametric techniques such as polynomial regression, GAMs, regression trees, and random forests. Ideal for statisticians, data analysts, and machine learning practitioners with basic R knowledge, this course blends theory with hands-on practice to enhance your regression analysis skills.
In this module, we will introduce you to the essential concepts and tools for regression analysis in R. You'll learn the differences between statistical analysis and machine learning, get familiar with R and R Studio, and start working with data. We'll guide you through the steps of data cleaning and perform some initial exploratory data analysis to set a solid foundation for your future learning.
What's included
8 videos1 reading1 assignment
8 videosβ’Total 81 minutes
- Introduction to the Course: The Key Concepts and Software Toolsβ’7 minutes
- Difference Between Statistical Analysis & Machine Learningβ’6 minutes
- Getting Started with R and R Studioβ’7 minutes
- Reading in Data with Rβ’15 minutes
- Data Cleaning with Rβ’17 minutes
- Some More Data Cleaning with Rβ’8 minutes
- Basic Exploratory Data Analysis in Rβ’19 minutes
- Conclusion to Section 1β’2 minutes
1 readingβ’Total 10 minutes
- Full Course Resourcesβ’10 minutes
1 assignmentβ’Total 15 minutes
- Get Started with Practical Regression Analysis in R Assessmentβ’15 minutes
In this module, we will delve into Ordinary Least Squares (OLS) regression, covering both theory and practical implementation in R. You will learn how to interpret OLS results, calculate and apply confidence intervals, and explore various OLS regression techniques, including models without intercepts, ANOVA, and multiple linear regression with interaction and dummy variables. Additionally, we will discuss the essential conditions that OLS models must satisfy to ensure accurate and reliable results.
What's included
12 videos1 assignment
12 videosβ’Total 90 minutes
- OLS Regression- Theoryβ’11 minutes
- OLS-Implementationβ’9 minutes
- More on Result Interpretationsβ’8 minutes
- Confidence Interval-Theoryβ’6 minutes
- Calculate the Confidence Interval in Rβ’5 minutes
- Confidence Interval and OLS Regressionsβ’7 minutes
- Linear Regression without Interceptβ’4 minutes
- Implement ANOVA on OLS Regressionβ’4 minutes
- Multiple Linear Regressionβ’6 minutes
- Multiple Linear regression with Interaction and Dummy Variablesβ’15 minutes
- Some Basic Conditions that OLS Models Have to Fulfillβ’13 minutes
- Conclusions to Section 2β’3 minutes
1 assignmentβ’Total 15 minutes
- Ordinary Least Square Regression Modelling Assessmentβ’15 minutes
In this module, we will address the challenge of multicollinearity in OLS regression models. You will learn how to detect multicollinearity and manage regression analyses with correlated predictors. The module covers advanced regression techniques such as Principal Component Regression, Partial Least Square Regression, Ridge Regression, and LASSO Regression, providing you with a comprehensive toolkit to handle multicollinearity effectively in R.
What's included
7 videos1 assignment
7 videosβ’Total 54 minutes
- Identify Multicollinearityβ’17 minutes
- Doing Regression Analyses with Correlated Predictor Variablesβ’6 minutes
- Principal Component Regression in Rβ’11 minutes
- Partial Least Square Regression in Rβ’8 minutes
- Ridge Regression in Rβ’7 minutes
- LASSO Regressionβ’4 minutes
- Conclusion to Section 3β’2 minutes
1 assignmentβ’Total 15 minutes
- Deal with Multicollinearity in OLS Regression Models Assessmentβ’15 minutes
In this module, we will explore the critical aspects of variable and model selection in regression analysis. You will understand why selection is essential, learn how to choose the most appropriate OLS regression model, and identify model subsets. We'll cover evaluating regression model accuracy from a machine learning perspective and assessing performance using diverse metrics. Additionally, you will implement LASSO Regression for variable selection and analyze the contribution of predictors in explaining the variation in the outcome variable.
What's included
8 videos1 assignment
8 videosβ’Total 62 minutes
- Why Do Any Kind of Selection?β’5 minutes
- Select the Most Suitable OLS Regression Modelβ’13 minutes
- Select Model Subsetsβ’8 minutes
- Machine Learning Perspective on Evaluate Regression Model Accuracyβ’7 minutes
- Evaluate Regression Model Performanceβ’14 minutes
- LASSO Regression for Variable Selectionβ’4 minutes
- Identify the Contribution of Predictors in Explaining the Variation in Yβ’9 minutes
- Conclusions to Section 4β’2 minutes
1 assignmentβ’Total 15 minutes
- Variable & Model Selection Assessmentβ’15 minutes
In this module, we will tackle common violations of OLS regression model assumptions. You will learn how to apply data transformations to correct issues, use robust regression methods to manage outliers, and address heteroscedasticity to ensure the reliability and validity of your regression models. This module equips you with essential techniques to refine your analysis and improve model performance.
What's included
4 videos1 assignment
4 videosβ’Total 28 minutes
- Data Transformationsβ’12 minutes
- Robust Regression-Deal with Outliersβ’7 minutes
- Dealing with Heteroscedasticityβ’7 minutes
- Conclusions to Section 5β’1 minute
1 assignmentβ’Total 15 minutes
- Dealing with Other Violations of the OLS Regression Models Assessmentβ’15 minutes
In this module, we will introduce you to Generalized Linear Models (GLMs) and their various applications. You will learn the fundamentals of GLMs, including logistic regression for binary response variables, multinomial logistic regression, and regression techniques for count data. Additionally, we will cover methods to evaluate the goodness of fit for these models. This module will enhance your understanding of how GLMs extend traditional linear regression models to handle a wider range of data types and distributions.
What's included
7 videos1 assignment
7 videosβ’Total 49 minutes
- What are GLMs?β’5 minutes
- Logistic regressionβ’16 minutes
- Logistic Regression for Binary Response Variableβ’9 minutes
- Multinomial Logistic Regressionβ’6 minutes
- Regression for Count Dataβ’6 minutes
- Goodness of fit testingβ’4 minutes
- Conclusions to Section 6β’2 minutes
1 assignmentβ’Total 15 minutes
- Generalized Linear Models (GLMs) Assessmentβ’15 minutes
In this module, we will explore advanced methods for working with non-parametric and non-linear data. You will learn to implement polynomial and non-linear regression techniques, use Generalized Additive Models (GAMs) and their boosted versions, and develop Multivariate Adaptive Regression Splines (MARS) models. We will also cover CART regression trees, Conditional Inference Trees, Random Forests, and Gradient Boosting Regression. Additionally, you will gain insights into selecting suitable machine learning models for complex data scenarios, enhancing your ability to handle diverse data structures in R.
What's included
10 videos3 assignments
10 videosβ’Total 77 minutes
- Polynomial and Non-linear regressionβ’10 minutes
- Generalized Additive Models (GAMs) in Rβ’13 minutes
- Boosted GAM Regressionβ’6 minutes
- Multivariate Adaptive Regression Splines (MARS)β’8 minutes
- CART-Regression Trees in Rβ’11 minutes
- Conditional Inference Treesβ’6 minutes
- Random Forest(RF)β’12 minutes
- Gradient Boosting Regressionβ’4 minutes
- ML Model Selectionβ’6 minutes
- Conclusions to Section 7β’2 minutes
3 assignmentsβ’Total 90 minutes
- Working with Non-Parametric and Non-Linear Data Assessmentβ’15 minutes
- Full Course Assessmentβ’60 minutes
- Full Course Practice Assessmentβ’15 minutes
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Yes, you can preview the first video and view the syllabus before you enroll. You must purchase the course to access content not included in the preview.
If you decide to enroll in the course before the session start date, you will have access to all of the lecture videos and readings for the course. Youβll be able to submit assignments once the session starts.
Once you enroll and your session begins, you will have access to all videos and other resources, including reading items and the course discussion forum. Youβll be able to view and submit practice assessments, and complete required graded assignments to earn a grade and a Course Certificate.
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