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Regression Analysis in R for Data Science: from Zero to Hero

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  • 9,612 Students
  • Updated 11/2023
4.2
(57 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
4 Hour(s) 32 Minute(s)
Language
English
Taught by
Kate Alison, Georg Müller
Rating
4.2
(57 Ratings)

Course Overview

Regression Analysis in R for Data Science: from Zero to Hero

Learn Complete Hands-On Regression Analysis in R for Machine Learning, Statistical Analysis, Data Science, Deep Learning

Master Regression Analysis in R for Machine Learning & Data Science

Welcome to this comprehensive course on Regression Analysis for Machine Learning & Data Science in R. This course is designed to be your hands-on guide to understanding, applying, and mastering supervised machine learning techniques, with a primary focus on regression analysis using the R-programming language.

Course Highlights:

Theory and Practical Applications:

This course stands out by offering more than just guided demonstrations of R-scripts. It dives deep into the theoretical background, providing you with a comprehensive understanding of regression analysis. You'll not only apply machine learning models but also gain the knowledge required to fully comprehend and utilize regression analysis techniques such as Linear Regression, Random Forest, K-Nearest Neighbors (KNN), and more using R. We will cover various R packages, including the caret package, to enrich your skill set.

Comprehensive Coverage:

This course covers all essential aspects of practical data science related to Machine Learning, specifically focusing on regression analysis. By enrolling in this course, you'll save both time and money, as you won't need to invest in expensive materials related to R-based Data Science and Machine Learning.

Course Outline:

The course spans 8 sections, ensuring comprehensive coverage of both theory and practice. You'll:

  • Fully understand the basics of Regression Analysis, including parametric and non-parametric methods.

  • Apply parametric and non-parametric regression techniques in R.

  • Learn to accurately implement regression models and assess them in R.

  • Discover how to select the most suitable statistical and machine learning models for your specific tasks.

  • Engage in coding exercises and an independent project assignment.

  • Acquire fundamental R-programming skills.

  • Gain access to all scripts used throughout the course.

No Prior Knowledge Required:

This course is tailored for individuals with no prior knowledge of R, statistics, or machine learning. It starts with foundational concepts and gradually progresses to more complex topics.

Practical Learning and Implementable Solutions:

Unlike other training resources, each lecture aims to enhance your Regression modeling and Machine Learning skills through practical and easy-to-follow methods, providing you with solutions that you can readily apply.

Ideal for Professionals:

This course is ideal for professionals who need to incorporate cluster analysis, unsupervised machine learning, and R into their work.

Hands-On Exercises:

Practical exercises are a significant part of this course. You'll receive precise instructions and datasets to run Machine Learning algorithms using R tools.

Join This Course Today:

Unlock the potential of Regression Analysis in R and elevate your Machine Learning and Data Science skills. Enroll now to embark on your learning journey!

Course Content

  • 7 section(s)
  • 50 lecture(s)
  • Section 1 Introduction to the course, Machine Learning & Regression Analysis
  • Section 2 Software used in this course R-Studio and Introduction to R
  • Section 3 R Crash Course - get started with R-programming in R-Studio
  • Section 4 Linear Regression Analysis for Supervised Machine Learning in R
  • Section 5 More types of regression models
  • Section 6 Non-Linear Regression Analysis in R: Polynomial & Spline regression, GAMs
  • Section 7 Non-Parametric Regression Analysis in R: Random Forest, Decision Trees and more

What You’ll Learn

  • Your comprehensive guide to Regression Analysis & supervised machine learning using R-programming language
  • Graphically representing data in R before and after analysis
  • It covers the theory and applications of supervised machine learning with the focus on regression analysis using the R-programming language in R-Studio
  • Implement Ordinary Least Square (or simple linear) regression, Random FOrest Regression, Decision Trees, Logistic regression and others using R
  • Perform model's variable selection and assess regression model's accuracy
  • Build machine learning based regression models and test their performance in R
  • Compare different different machine learning models for regression tasks in R
  • Learn how to select the best statistical & machine learning model for your task
  • Learn when and how machine learning models should be applied
  • Carry out coding exercises & your independent project assignment

Reviews

  • A
    Alasdair
    2.5

    Some of it is good, some of the videos are repeats, and some of the videos have mistakes in them

  • S
    Salavat
    5.0

    The instructor has in-depth knowledge of the subject and her presentation is superb and engaging.

  • E
    Elena Dudkina
    5.0

    The course contains valuable information about R and has been well presented.

  • I
    Ihar Lakisyk
    5.0

    This R course is highly beneficial for me. It will significantly add quality to my work.

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