Abstract
This text provides a practical introduction to randomness and data analysis,
in particular in the context of computer simulations.
At the beginning, the most basics concepts of probability are given, in
particular discrete and continuous random variables. Next, generation of pseudo
random numbers is covered, such as uniform generators, discrete random numbers,
the inversion method, the rejection method and the Box-Mueller Method. In the
third section, estimators, confidence intervals, histograms and resampling
using Bootstrap are explained. Furthermore, data plotting using the freely
available tools gnuplot and xmgrace is treated. In the fifth section, some
foundations of hypothesis testing are given, in particular the chi-squared
test, the Kolmogorov-Smirnov test and testing for statistical (in-)dependence.
Finally, the maximum-likelihood principle and data fitting are explained.
The text is basically self-contained, comes with several example C programs
and contains eight practical (mainly programming) exercises.
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