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Course module: BMB511818
BMB511818
Computational Statistics
Course info
Course codeBMB511818
EC1.5
Course goals
At the end of the course, the student:

will have developed advanced and computationally efficient R programming skills,
is able to conduct and report on simulation studies, comparing the performance of statistical methods in specific settings,
is able to implement and use methods for statistical inference such as the bootstrap and permutation test,
will be familiar with the Metropolis-Hastings algorithm, as an example of a Markov Chain Monte Carlo method,
is familiar with some widely used numerical methods,
will be able to translate new statistical methods from the literature into a usable R program.
Content
Period (from-till):
Education form Startdate Enddate Registration period
Face-2-Face 04-03-2024 08-03-2024 BMS_P3_A

Contact details: Educational Office Epidemiology
E-mail: msc-epidemiology@umcutrecht.nl

Registration:
Single courses — MSc Epidemiology (msc-epidemiology.nl)

Course coordinator:
Rene Eijkemans

Course description:
Computational statistics concerns the development, implementation and study of computationally intensive statistical methods. Such methods are often used e.g. in the fields of data visualization, the analysis of large datasets, Monte Carlo simulation, resampling methods such as the bootstrap, permutational methods, Markov Chain Monte Carlo methods and various numerical methods of equation solving such as the EM algorithm and Newton-Raphson iteration. A very powerful tool to implement such methods is the R statistical programming language.

This course will present essential methods in computational statistics in a practical manner, using real-world datasets and statistical problems. Examples will include e.g. 1) evaluating and comparing the performance of different statistical techniques in a specific setting using simulation, 2) implementing complex methods such as an EM algorithm to fit a joint model, 3) implementing the bootstrap to obtain a standard error estimate which is not available in closed-form. We will also develop advanced R programming skills

Literature/study material used:
-
  
Mandatory for students in own Master’s programme:
MIght be for a specialization programme of Epidemiology & Epidemiology Postgraduate
 
Optional for students in other GSLS Master’s programme:
Yes
 
Prerequisite knowledge:
Students will (preferably) have completed the courses Introduction to Statistic, Classical Methods in Data Analysis and Modern Methods in Data Analysis or their equivalents. Familiarity with the statistical package R is required.
 
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Kies de Nederlandse taal