Regression Analysis for Statistics & Machine Learning in R
About this 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.Created by: Packt

Related Online Courses
This three-course specialization introduces learners to Apigee, Google Cloud\'s full-lifecycle API management platform. Using a combination of presentations, hands-on labs, and supplemental... more
This comprehensive course ensures you develop a foundational understanding of MongoDB, covering its principles, architecture, and essential operations. You\'ll gain hands-on skills installing... more
This course, developed at the Darden School of Business at the University of Virginia and taught by top-ranked faculty, focuses on the common human resource (\"people\") challenges faced by... more
Ready to imagine and create human-centered mobility futures? Using cycling as a lens to view pressing mobility and sustainability issues of today, this 3 course specialization is about opening... more
The purpose of this course is to review the material covered in the Fundamentals of Engineering (FE) exam to enable the student to pass it. It will be presented in modules corresponding to the FE... more