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Statistics and Data Analysis

Code: M4114     Acronym: M4114     Level: 400

Keywords
Classification Keyword
OFICIAL Mathematics

Instance: 2022/2023 - 2S Ícone do Moodle

Active? Yes
Responsible unit: Department of Mathematics
Course/CS Responsible: Master in Data Science

Cycles of Study/Courses

Acronym No. of Students Study Plan Curricular Years Credits UCN Credits ECTS Contact hours Total Time
M:DS 28 Official Study Plan since 2018_M:DS 1 - 6 42 162

Teaching language

English

Objectives

Train students in multivariate data analysis methods in order to extract essential information from a potentially voluminous set of data with a focus on supervised and unsupervised learning methods.

Learning outcomes and competences

1. Understanding  the theoretical foundations of the methodologies taught.
2. Ability to extract  essential information from a set of real data, using the methodologies taught

And in particular:
- Recognize different problems of unsupervised classification and supervised classification and solve them using the methods addressed and using software R;
- Prepare, solve and present computational data mining projects, where the various models presented are discussed, evaluated and compared in concrete cases.
- Solve computational and non-computational exercises on the methodologies addressed

Working method

Presencial

Pre-requirements (prior knowledge) and co-requirements (common knowledge)

Previous knowledge on random variables, probability distribution, sample statistics, confidence intervals and hypothesis tests is required. Those are usual contents of an introductory course on Probability and Statistics for undergrduate students. 

Program

1    Brief summary of random vectors. Multivariate normal distribution.
Resampling methods.
Selection of Linear Models and Regularization (Ridge and Lasso Regression). Bias-variance tradeoff.
Feature screening for ultrahigh dimensional predictors.
Clustering: Partition methods, hierarchical methods, probabilistic method and model based clustering.
Statistical decision theory. Bayes rules of minimum error and minimum cost.
Linear and quadratic discriminant analysis.
Logistic regression.
Nonparametric estimation of probability density functions: kernel and the kth nearest neighbor methods.
Factorial Analysis: Principal Component Analysis, Simple and Multiple Correspondence Analysis.
Multidimensional Scaling.

Mandatory literature

apontamentos escritos disponibilizados pelos professores
James Gareth 070; An introduction to statistical learning. ISBN: 978-1-4614-7137-0
Everitt Brian S.; Applied multivariate data analysis. ISBN: 978-0-470-71117-0
000040365. ISBN: 0-387-95284-5

Complementary Bibliography

000098707. ISBN: 978-0-521-86116-8
Sharma, Subhash; Applied multivariate techniques. ISBN: 0-471-31064-6
Hair Jr Joseph F.; Multivariate data analysis. ISBN: 0-13-515309-3
Jianqing Fan and Runze Li and Cun-Hui Zhang ; Statistical Foundation of Data Science , Chapman and Hall/CRC; 1 edition, 2019. ISBN: 978-1466510845

Teaching methods and learning activities

Classes will be simultaneously theoretical and practical, with several examples of application and always making use of statistical software. The used software will be SPSS or the free programming language R (depending on the masters course).

Software

R Project

keywords

Physical sciences > Mathematics > Statistics

Evaluation Type

Distributed evaluation with final exam

Assessment Components

designation Weight (%)
Teste 60,00
Trabalho escrito 40,00
Total: 100,00

Amount of time allocated to each course unit

designation Time (hours)
Estudo autónomo 120,00
Frequência das aulas 42,00
Total: 162,00

Eligibility for exams

Attendency is not mandatory. The computational projects, which must be presented by the students, are mandatory.

Calculation formula of final grade

1. Evaluation will be distributed with a final examination. There is also  an exam in  the second evaluation period (“época de recurso”).

2. Grade Improvement: Students who want to improve their final classification can attend the second exam ("época de recriuso") and they must  complete both parts. The work cannot be improved.

The subject is divided into two parts; Parte I corresponding to about 1/3 of the classes and Part II to 2/3. Each part consists of a practical work and an exam. For each student the marks of the works and exams are given by:
Scores_of_works: max (1/3*work1 +2/3*work2, 1/2*work1+1/2*work2)
Scores_of_exams (or tests): max (1/3*Exam1 +2/3*Exam2, 1/2*Exam1+1/2*Exam2)

Final Score: 0.6* Scores_of_exams+0.4*Scores_of_works. The same procedure applies in the case of the two parts of the second  exam ("época de recurso").

Approval is subject to the value of Score_of_exams (tests)   being equal to or higher than 7.0 values (on a scale of 0 to 20).

The practical works consist of the analysis of a real database, using the methods taught, using software.
It should be done by groups of 2 students.

Classification improvement

Improvement of the final mark: students that  have succeed and attend the exam  (“época de recurso”) in order to improve their final mark, have to take both parts. The mark obtained in the written assignment/project cannot be improved in any evaluation period. The evaluation formula is the same (see above).
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