MSc:AdvancedStatistics old
Advanced Statistics
- Course name: Advanced Statistics
- Course number: DS-03
- Area of instruction: Math
Administrative details
- Faculty: Computer Science and Engineering
- Year of instruction: 1st year of MSc
- Semester of instruction: 2nd semester
- No. of Credits: 5 ECTS
- Total workload on average: 180 hours overall
- Frontal lecture hours: 2 hours per week.
- Frontal tutorial hours: 0 hours per week.
- Lab hours: 2 hours per week.
- Individual lab hours: 2 hours per week.
- Frequency: weekly throughout the semester.
- Grading mode: letters: A, B, C, D.
Course outline
The course covers substantially two topics: most of the course (about 80%) is about nonparametric statistics, especially with reference to non parametric tests and bootstrap; then the courses discusses Gamma analysis and sequence analysis (20%). For the labs, Python is used together with its statistical packages.
Expected learning outcomes
- To understand the problems related to analyse statistically data not distributed normally
- To know the more recent computationally-intensive techniques that can help to describe samples and to infer properties of populations in absence of normality
- To identify situations when the data is on nominal scales so alternative techniques should be use, and act accordingly.
- To be able to run experiment to evaluate hypotheses for situation of scarce data, distributed non normally, on different kinds of scales.
- None.
Required background knowledge
Fundamental knowledge of statistics, including parametric tests, (multilinear) regression, logistic regression, and inference.
Prerequisite courses
It is recommended that the students have passed all the courses of a BS in Computer Engineering, Electrical Engineering, Computer Science, or Applied Mathematics, and then have taken specific courses in Empirical Methods.
Detailed topics covered in the course
- Review of basic concepts (Bernoulli and binomial distributions, convergence, statistical hypothesis testing)
- Estimation of the CDF
- Jackknife
- Bootstrap. Bootstrap Confidence Intervals.
- Smoothing: General Concepts
- Nonparametric Regression
- Nonparametric Classification
- Kernels
- Gamma Analysis
- Sequence Analysis
Textbook
Reference material
Required computer resources
Students should have laptops. A Mac or Window’s PC capable of running a scientific python development environment.
Evaluation
- Weekly Assignments (10%)
- Mid-term exam (20%)
- Final written exam (30%)
- Final oral exam (35%)
- Participation (5%)