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The Comprehensive Statistics and Data Science with R Course

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  • 2,973 Students
  • Updated 10/2019
4.1
(261 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
19 Hour(s) 40 Minute(s)
Language
English
Taught by
Geoffrey Hubona, Ph.D.
Rating
4.1
(261 Ratings)

Course Overview

The Comprehensive Statistics and Data Science with R Course

Learn how to use R for data science tasks, all about R data structures, functions and visualizations, and statistics.

This course, The Comprehensive Statistics and Data Science with R Course, is mostly based on the authoritative documentation in the online "An Introduction to R" manual produced with each new R release by the Comprehensive R Archive Network (CRAN) development core team. These are the people who actually write, test, produce and release the R code to the general public by way of the CRAN mirrors. It is a rich and detailed 10-session course which covers much of the content in the contemporary 105-page CRAN manual. The ten sessions follow the outline in the An Introduction to R online manual and specifically instruct with respect to the following user topics:

1. Introduction to R; Inputting data into R

2. Simple manipulation of numbers and vectors

3. Objects, their modes and attributes

4. Arrays and matrices

5. Lists and data frames

6. Writing user-defined functions

7. Working with R as a statistical environment

8. Statistical models and formulae; ANOVA and regression

9. GLMs and GAMs

10. Creating statistical and other visualizations with R

It is a comprehensive and decidedly "hands-on" course. You are taught how to actually use R and R script to create everything that you see on-screen in the course videos. Everything is included with the course materials: all software; slides; R scripts; data sets; exercises and solutions; in fact, everything that you see utilized in any of the 200+ course videos are included with the downloadable course materials.

The course is structured for both the novice R user, as well as for the more experienced R user who seeks a refresher course in the benefits, tools and capabilities that exist in R as a software suite appropriate for statistical analysis and manipulation. The first half of the course is suited for novice R users and guides one through "hands-on" practice to master the input and output of data, as well as all of the major and important objects and data structures that are used within the R environment. The second half of the course is a detailed "hands-on" transcript for using R for statistical analysis including detailed data-driven examples of ANOVA, regression, and generalized linear and additive models. Finally, the course concludes with a multitude of "hands-on" instructional videos on how to create elegant and elaborate statistical (and other) graphics visualizations using both the base and gglot visualization packages in R.

The course is very useful for any quantitative analysis professional who wishes to "come up to speed" on the use of R quickly. It would also be useful for any graduate student or college or university faculty member who also seeks to master these data analysis skills using the popular R package.

Course Content

  • 10 section(s)
  • 219 lecture(s)
  • Section 1 Introduction to R and Inputting Data into R
  • Section 2 Manipulating Numbers and Vectors
  • Section 3 Objects and Classes: Their Modes and Attributes
  • Section 4 Arrays and Matrices
  • Section 5 List and Data Frame Structures
  • Section 6 User-Defined Functions
  • Section 7 Working with R as a Statistical Environment
  • Section 8 Statistical Models and Formulae, ANOVA and Regression
  • Section 9 Generalized Linear Models (GLMs) and Generalized Additive Models (GAMS)
  • Section 10 Creating Visualizations with R

What You’ll Learn

  • Students will understand what R is, and how to input and output data files into their R sessions.
  • Students will know how to manipulate numbers and vectors, and will understand objects and classes.
  • Students will understand how to create data structures in R: vectors
  • arrays and matrices
  • lists and data frames.
  • Students will know how to use R as a statistical environment following many examples.
  • Students will understand how to create, estimate and interpret ANOVA, regression, GLM and GAM statistical models with many examples of each.
  • Students will learn how to create statistical and other visualizations using both the base and ggplot graphics capabilities in R.


Reviews

  • Y
    Yejin Son
    3.5

    The course was good for a beginner for R statistics.But, I think each lecture should have been more organized,not coming backward the material and repeating it again. The exercise works were quite not dealt in the lecture; I needed to look up more functions on my own. The lecturer was very knowledgeable, but when it comes to complex functions, he needed to explain them in more details.

  • B
    Benhur Kessete Asefaw
    5.0

    This course really Helped me to upgrade my self in the Data Science world. I am looking forward for the next lecture in Data science with R.

  • C
    Chandan Singh
    3.0

    This course is little lengthy, I was expecting where a person will teach you every thing in systematically; first give you the basic and then take some exercise and after that make a project. but more or less it is not that bad.

  • K
    Kamil Osesik
    3.5

    Trochę zbyt chaotycznie, ale może to tylko wstęp do podstaw, a trudniejsze rzeczy będą omawiane dokładniej :)

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