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http://dx.doi.org/10.5351/KJAS.2007.20.3.619

Teaching Statistical Graphics using R  

Park, Dong-Ryeon (Department of Statistics, Hanshin University)
Publication Information
The Korean Journal of Applied Statistics / v.20, no.3, 2007 , pp. 619-634 More about this Journal
Abstract
It is well known that graphical display is critical to data analysis. A lot of research for data visualization has been done, so many effective graphical tools are now available. With the proper use of these graphical tools, we can penetrate the complex structure of data set easily. To enjoy the benefit of the powerful graphical display, the choice of the statistical software is very crucial. R is a popular open source software tool for statistical analysis and graphics, and can provide the very powerful graphics facilities. Moreover, many researchers believe that R is the best software for statistical graphics. In this paper, we would like to discuss what we teach and how we teach in statistical graphics course using R.
Keywords
Data analysis tool; statistical graphics; R;
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