Difference between revisions of "Software tutorial"
Jump to navigation
Jump to search
Kevin Dunn (talk | contribs) m |
Kevin Dunn (talk | contribs) |
||
Line 1: | Line 1: | ||
This tutorial will | This tutorial is intended to be a self-directed learning experience for the [http://en.wikipedia.org/wiki/R_(programming_language) R statistical language]. We will provide a similar tutorial for Python in 2014/2015. | ||
# [[Software tutorial/About the course software | About the course software]] | # [[Software tutorial/About the course software | About the course software]] |
Revision as of 02:51, 5 February 2014
This tutorial is intended to be a self-directed learning experience for the R statistical language. We will provide a similar tutorial for Python in 2014/2015.
- About the course software
- Software installation
- Getting started
- Reading data into R
- Basic data manipulation in R
- Basic plots in R
- Plots with multiple series, colour, and legends
- Histograms
- Annotating plots: grid lines, arrows, lines, and identifying interesting points
- Dealing with factors (categorical variables)
- Calculating statistics from a data sample
- Dealing with distributions
- Extending R with packages
- Programming in R: loops and flow control
- Vectors and matrices
- Building a least squares model in R
- Extracting information from a linear model in R
- Testing a linear model in R
- Transformation of data in a linear model
- Investigating outliers, discrepancies and other influential points
- Linear models with multiple X-variables (MLR)
- Linear models with integer variables
- Want tutorials on other topics: please email me
- A note about the videos in this tutorial: they are from Roger Peng's YouTube channel on R Videos. He is running a MOOC on Computing for Data Analysis which started on 2 January, and has recently finished (February 2012).
Not every aspect about R can be covered with our tutorial (above). Here are some additional resources.
- Cookbook for R: how to work with numbers, manipulate data, statistical analysis, graphs, debug scripts
- Another good tutorial, Quick-R: follow the links on the left-hand side
- The two-minute tutorials on many R-related aspects