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Modelling and Data Analysis II

Code: 2MiF17     Acronym: MDA 2

Keywords
Classification Keyword
OFICIAL Management Studies

Instance: 2024/2025 - 1S Ícone do Moodle

Active? Yes
Responsible unit: Management
Course/CS Responsible: Master in Finance

Cycles of Study/Courses

Acronym No. of Students Study Plan Curricular Years Credits UCN Credits ECTS Contact hours Total Time
MIF 30 Official Syllabus after 2020-2021 2 - 6 42 162

Teaching Staff - Responsibilities

Teacher Responsibility
José Abilio de Oliveira Matos

Teaching - Hours

Theoretical and practical : 3,00
Type Teacher Classes Hour
Theoretical and practical Totals 1 3,00
José Abilio de Oliveira Matos 3,00

Teaching language

English

Objectives

The course aims to develop the skills to define and use data mining projects.

Learning outcomes and competences

The definition of a data mining project requires: knowing the different data mining tasks, knowing the different methods and algorithms for each task, understanding how the methods work, being able to apply these methods to new data mining problems, being able to evaluate and interpret the results.

Working method

Presencial

Program


  1. Introduction to Data Mining;

  2. Exploratory Data Analysis;

  3. Predictive modelling;

  4. Descriptive Modelling;

  5. Time series Analysis with Machine Learning;

  6. Data mining Process Methodologies and Ethics.


 

Mandatory literature

Ian H. Witten; Data mining. ISBN: 1-55860-552-5
Jiawei Han; Data mining. ISBN: 978-0-12-381479-1

Complementary Bibliography

João Manuel Portela da Gama; Extração de conhecimento de dados. ISBN: 978-972-618-914-5

Teaching methods and learning activities

The course is organized in lab sessions, based on modules. The teaching methodology in each module is structured as follows:


  • description of the financial problem to solve;

  • identification with explanation of the appropriate computacional methods for their resolution;

  • exercises (sedimentation and knowledge exploitation).

Software

Jupyter
Python
R

Evaluation Type

Distributed evaluation without final exam

Assessment Components

Designation Weight (%)
Apresentação/discussão de um trabalho científico 20,00
Teste 30,00
Trabalho prático ou de projeto 50,00
Total: 100,00

Amount of time allocated to each course unit

Designation Time (hours)
Estudo autónomo 60,00
Frequência das aulas 42,00
Trabalho escrito 20,00
Trabalho laboratorial 40,00
Total: 162,00

Eligibility for exams

According to the General Regulation for the Assessment of First Degreeand Master’s Degree students at the School of Economics and Management of the University of Porto all students enrolled in a course unit fulfill attendance requirements. (article 10th point 5)

Calculation formula of final grade

30% individual assessment + 70% group work (2 works with the same weight)
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