By Günther Sawitzki
Suitable for a compact direction or self-study, Computational statistics: An advent to R illustrates how one can use the freely on hand R software program package deal for information research, statistical programming, and pix. Integrating R code and examples all through, the textual content in basic terms calls for uncomplicated wisdom of data and computing.
This advent covers one-sample research and distribution diagnostics, regression, two-sample difficulties and comparability of distributions, and multivariate research. It makes use of a number examples to illustrate how R may be hired to take on statistical difficulties. furthermore, the convenient appendix features a selection of R language components and services, serving as a brief reference and place to begin to entry the wealthy details that comes bundled with R.
Accessible to a huge viewers, this booklet explores key themes in facts research, regression, statistical distributions, and multivariate information. choked with examples and with a colour insert, it is helping readers get to grips with R.
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Extra resources for Computational Statistics: An Introduction to R
Computational Statistics: An Introduction to R by Günther Sawitzki