Udemy

Comprehensive Linear Modeling with R

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  • 2,466 Students
  • Updated 9/2020
4.2
(145 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
14 Hour(s) 16 Minute(s)
Language
English
Taught by
Geoffrey Hubona, Ph.D.
Rating
4.2
(145 Ratings)
1 views

Course Overview

Comprehensive Linear Modeling with R

Learn to model with R: ANOVA, regression, GLMs, survival analysis, GAMs, mixed-effects, split-plot and nested designs

Comprehensive Linear Modeling with R provides a wide overview of numerous contemporary linear and non-linear modeling approaches for the analysis of research data. These include basic, conditional and simultaneous inference techniques; analysis of variance (ANOVA); linear regression; survival analysis; generalized linear models (GLMs); parametric and non-parametric smoothers and generalized additive models (GAMs); longitudinal and mixed-effects, split-plot and other nested model designs. The course showcases the use of R Commander in performing these tasks. R Commander is a popular GUI-based "front-end" to the broad range of embedded statistical functionality in R software. R Commander is an 'SPSS-like' GUI that enables the implementation of a large variety of statistical and graphical techniques using both menus and scripts. Please note that the R Commander GUI is written in the RGtk2 R-specific visual language (based on GTK+) which is known to have problems running on a Mac computer.

The course progresses through dozens of statistical techniques by first explaining the concepts and then demonstrating the use of each with concrete examples based on actual studies and research data. Beginning with a quick overview of different graphical plotting techniques, the course then reviews basic approaches to establish inference and conditional inference, followed by a review of analysis of variance (ANOVA). The course then progresses through linear regression and a section on validating linear models. Then generalized linear modeling (GLM) is explained and demonstrated with numerous examples. Also included are sections explaining and demonstrating linear and non-linear models for survival analysis, smoothers and generalized additive models (GAMs), longitudinal models with and without generalized estimating equations (GEE), mixed-effects, split-plot, and nested designs. Also included are detailed examples and explanations of validating linear models using various graphical displays, as well as comparing alternative models to choose the 'best' model. The course concludes with a section on the special considerations and techniques for establishing simultaneous inference in the linear modeling domain.

The rather long course aims for complete coverage of linear (and some non-linear) modeling approaches using R and is suitable for beginning, intermediate and advanced R users who seek to refine these skills. These candidates would include graduate students and/or quantitative and/or data-analytic professionals who perform linear (and non-linear) modeling as part of their professional duties.


Course Content

  • 10 section(s)
  • 104 lecture(s)
  • Section 1 Data Analysis with R Commander Graphical Displays
  • Section 2 Simple and Conditional Inference
  • Section 3 Analysis of Variance (ANOVA)
  • Section 4 Linear Modeling
  • Section 5 Validating Linear Models (aka 'Model Checking')
  • Section 6 Generalized Linear Modeling (GLMs)
  • Section 7 Survival Analysis
  • Section 8 Smoothers and Generalized Additive Modeling (GAMs)
  • Section 9 Linear Mixed-Effects Models
  • Section 10 Generalized Estimating Equations (GEE)

What You’ll Learn

  • Understand, use and apply, estimate, interpret and validate: ANOVA
  • regression
  • survival analysis
  • GLMs
  • smoothers and GAMs
  • longitudinal, mixed-effects, split-plot and nested model designs using their own data and R software.
  • Achieve proficiency using the popular no-cost and versatile R Commander GUI as an interface to the broad statistical and graphical capabilities in R.
  • Know and use tests for simple, conditional, and simultaneous inference.
  • Apply various graphs and plots to validate linear models.
  • Be able to compare and choose the 'best' among multiple competing models.

Reviews

  • S
    Safaa A Kadhum
    5.0

    Clear voice and Good knowledge

  • T
    Tim Clark
    4.0

    This is a good course and excellent value for money. Unfortunately, unlike other courses the tutor does not work through the exercises.

  • A
    Arturo Torres
    3.0

    The course is not structured well. The instructor sometimes cuts explanations short and moves on to the next topic. His section on GAMs was quite interesting.

  • B
    Bimal Sajeewa Amaradasa
    4.0

    This is a course with a lot of information. Needs basic statistics and R knowledge to follow. The course content I downloaded doesn't have contents in folders "day 1, day 2, etc". But throughout the lectures I heard these words. So initially you might have to spend a little more time getting familiarize with given content. I recommend this course but it can be confusing because instructor has taken lectures from other online courses as well. There are repetitions due to this.

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