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Applied Statistics in Science and Engineering

Code: M4083     Acronym: M4083

Keywords
Classification Keyword
OFICIAL Mathematics

Instance: 2019/2020 - 1S Ícone do Moodle

Active? Yes
Responsible unit: Department of Mathematics
Course/CS Responsible: Master in Mathematical Engineering

Cycles of Study/Courses

Acronym No. of Students Study Plan Curricular Years Credits UCN Credits ECTS Contact hours Total Time
M:ENM 16 Official Study Plan since 2013-2014 1 - 6 56 162

Teaching language

Portuguese

Objectives

It is expected that at the end of the course the students will attain knowledge on:

a)     a) data collection

b)    b)  most used statistical models in the context of Science and Engineering, 

           including its application with the free software R

c)     c) the choice of the statistical model given different contexts

d)     d) the interpretation of the results obtained by the application of the learnt methods.

Learning outcomes and competences

Referred in the previous item.

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. A brief review of these topics will be given. 

Program

1     0. Brief review of probability and statistics.
1.
Topics on data analysis with R 

2.       2. Simple linear regression and correlation

3.     3. Multiple linear regression. The model, parameter estimation, hypothesis tests for the parameters, methods for selection of variables, model comparisons, diagnostics.

4.     4. Nonparametric tests.

5.     5. Analysis of variance: 1 and 2 factors.

6.     6. Generalized linear models. Poisson regression, binomial (including logistic) regression, multinomial logistic regression, ordinal logistic regression.
7. Introduction to principal component analysis.
8. Simple and multiple correspondence analysis.
9. Factorial analysis.
10. Multidimensional scaling.

8.A

Mandatory literature

apontamentos escritos disponibilizados pelos professores
Julian Faraway; Extending the Linear Model with R: Generalized Linear, Mixed Effects and Nonparametric Regression Models, Chapman & Hall/CRC Texts in Statistical Science, 2006. ISBN: 158488424X

Complementary Bibliography

000083800. ISBN: 1-58488-029-5
000040469. ISBN: 0-387-95475-9
000098707. ISBN: 978-0-521-86116-8
000074783. ISBN: 0-387-95187-3
000040365. ISBN: 0-387-95284-5
000102543. ISBN: 1-58488-325-1
000040221. ISBN: 0-387-98218-3
Julian Faraway; Linear Models with R, Taylor and Francis, 2009. ISBN: 1584884258

Teaching methods and learning activities

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

Software

R Project
SPSS

keywords

Physical sciences > Mathematics > Statistics

Evaluation Type

Evaluation with final exam

Assessment Components

designation Weight (%)
Exame 100,00
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.

Calculation formula of final grade

1. Evaluation will be distributed with two final examinations.

Classification improvement

Improvement of the final mark: students that  have succeed can attend the exam  (“época de recurso”) in order to improve their final mark.
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