Code: | CC4018 | Acronym: | CC4018 | Level: | 400 |
Keywords | |
---|---|
Classification | Keyword |
OFICIAL | Computer Science |
Active? | Yes |
Responsible unit: | Department of Computer Science |
Course/CS Responsible: | Master in Computer Science |
Acronym | No. of Students | Study Plan | Curricular Years | Credits UCN | Credits ECTS | Contact hours | Total Time |
---|---|---|---|---|---|---|---|
M:A_ASTR | 4 | Plano de Estudos oficial desde_2013/14 | 1 | - | 6 | 42 | 162 |
2 | |||||||
M:CC | 31 | Study plan since 2014/2015 | 1 | - | 6 | 42 | 162 |
M:ERSI | 9 | Official Study Plan since 2021_M:ERSI. | 1 | - | 6 | 42 | 162 |
This unit has as main objectives to provide an introduction to the main data science methodologies and also to convey knowledge on programming and tools for data analysis, such as the R language.
This unit should provide the students with:
1. theoretical competences on several basic methodologies of data science.
2. competences for developing software for data science tasks.
3. practical competences on applying data science techniques to specific problems.
1. Introduction to Data Science:
• the CRISP-DM model
• data, models and patterns
• data science tasks.
2. Data Pre-Processing:
• importing data
• cleaning data
• transforming and creating variables
• dimensionality reduction techniques
3. Exploring and Visualizing Data
• data summarization
• data visualization
4. Descriptive Models
• clustering methods: partitional methods, hierarchical methods
5. Predictive Models
• classification and regression tasks
• evaluation metrics
• linear regression models, naive Bayes, k-nearest neighbours
• tree-based models: classification and regression trees, pruning methods
• neural networks and deep learning
• support vector machines
• ensembles: bagging, random forests, boosting, AdaBoost, Xgboost
6. Methodologies for Evaluating and Comparing Models
• evaluation measures
• estimation methods
• significance tests
The lectures are based on the oral exposition of the topics that are part of the syllabus, as well as illustrations with concrete data mining case studies.
designation | Weight (%) |
---|---|
Teste | 35,00 |
Trabalho prático ou de projeto | 30,00 |
Exame | 35,00 |
Total: | 100,00 |
designation | Time (hours) |
---|---|
Elaboração de projeto | 35,00 |
Estudo autónomo | 84,00 |
Apresentação/discussão de um trabalho científico | 1,00 |
Frequência das aulas | 42,00 |
Total: | 162,00 |
The practical assignment is mandatory with a minimum grade of 30%.
The assessment of the course is distributed, consisting of a midterm test during the semester, a final exam and a practical assignment at the end of the semester.
The final grade is calculated by the weighted average of the practical and theoretical grades through the formula:
NF = 0.35 * TI + 0.35 * Ex + 0.30 * TP
on what,
TI is the midterm test grade
Ex is final exam grade and
TP is the practical assignment grade.
Students who do not obtain a minimum of 30% in each component, i.e. 6 out of 20, will not be approved.
The supplementary exam will be quoted to 70% (14 out of 20) of the final grade.
The midterm test will take place in one of the classes, in the middle of the semester.
The practical assignment will be announced in the middle of the semester and should be completed by the end of the semester.
The evaluation of the practical assignment is not subject to improvement.
The student can improve in the theoretical grade by taking the supplementary exam.
All of the provided material (e.g. slides, recommended books) is given in English and if there are foreign students the classes will also be given in English.