Code: | M4136 | Acronym: | M4136 |
Keywords | |
---|---|
Classification | Keyword |
CNAEF | Mathematics and statistics |
Active? | Yes |
Responsible unit: | Department of Mathematics |
Course/CS Responsible: | Computational Statistical Modelling |
Acronym | No. of Students | Study Plan | Curricular Years | Credits UCN | Credits ECTS | Contact hours | Total Time |
---|---|---|---|---|---|---|---|
E:MEC | 5 | PE_Computational Statistical Modelling | 1 | - | 6 | 42 | 162 |
Upon completing this course, the student should:
- have a practical understanding of several computational methods, in particular know how these tools may be used in the statistical analysis of different types of data;
- have a theoretical knowledge of the most relevant computational methods, such as Monte Carlo methods, enabling its use in the development of statistical methods and inference models;
- be able to implement computational tools by means of adequate software and languages, such as R.
Introduction to the statistical programming language R.
Introduction to computational inference. Permutation tests.
Monte Carlo methods in statistical inference.
Resampling methods.
Numerical methods in R, including classical estimation methods and algorithms.
Visualisation of multivariate data.
Lectures TP where the topics of the syllabus are presented, exercises and related problems are solved. Classes are accompanied by material provided by teachers.
Two project works to be developed in team. The discussion of the works is open, all students are encouraged to participate.
designation | Weight (%) |
---|---|
Exame | 33,30 |
Trabalho escrito | 66,70 |
Total: | 100,00 |
designation | Time (hours) |
---|---|
Estudo autónomo | 96,00 |
Frequência das aulas | 42,00 |
Trabalho escrito | 24,00 |
Total: | 162,00 |
Practical assignments submitted within the fixed schedules. Marks for each evaluation component greater than or equal to 6.0 points (0-20 points).