Data Mining
Áreas Científicas |
Classificação |
Área Científica |
OFICIAL |
Informática |
Ocorrência: 2023/2024 - 2S
Ciclos de Estudo/Cursos
Sigla |
Nº de Estudantes |
Plano de Estudos |
Anos Curriculares |
Créditos UCN |
Créditos ECTS |
Horas de Contacto |
Horas Totais |
BINF |
25 |
Study Plan |
2 |
- |
5 |
67,5 |
135 |
Docência - Responsabilidades
Língua de trabalho
Portuguese
Objetivos
- Understand the main concepts related with Business Intelligence, namely DataWarehouse, ETL and Reporting Tools and the technological infrastructure;
- Understand the importance of Business Analytics as a practice of iterative data exploration, to enable the decision making.
- Understand the importance of Data Mining in organizations
- Knowledge Discover in Databases through Data Mining techniques;
- Understand the main concepts, methodologies and Data Mining techniques.
Resultados de aprendizagem e competências
- Understand the main concepts related with Business Intelligence, namely DataWarehouse, ETL and Reporting Tools and the technological infrastructure;
- Understand the importance of Business Analytics as a practice of iterative data exploration, to enable the decision making.
- Understand the importance of Data Mining in organizations
- Knowledge Discover in Databases through Data Mining techniques;
- Understand the main concepts, methodologies and Data Mining techniques.
Modo de trabalho
Presencial
Programa
1. The challenges of Data Modeling and Analysis in Bioinformatics
2. Business Intelligence and Infrastructure
3. Fundamentals of Data Mining
4. Data Mining and Bioinformatics
5. Current and Future Trends
Bibliografia Obrigatória
Han, J., Kamber, M.; Data Mining – Concepts and Techniques, Morgan Kaufmann , 2011
He, Z.; Data Mining for Bioinformatics Applications, Elsevier Ltd., 2015
Larose, D. e Larose C.; Data Mining and Predictive Analytics, John Wiley & Sons, Inc, 2015
Provost, F. e Fawcett, T.; Data Science for Business: What you need to know about data mining and data-analytic thinking., O'Reilly Media, 2013
Sharda, R.; Delen, D. and Turban, E.; Business Intelligence, Analytics and Data Science: A Managerial Approach, Pearson, 2018
Shmueli,G.; Bruce,P.; Gedeck, P.; Patel, N.; Data Mining for Business Analytics: Concepts, Techniques and Applications in Python, Wiley, 2020
Bramer, M,; Principles of Data Mining, Springer, 2020
Tan; P.-N.; Steinbach,M.; Karpatne, A. and Kuumar, V.; Introduction to Data Mining, Pearson Education, 2019
Métodos de ensino e atividades de aprendizagem
Methodologies:
- Expository and Participatory to promote learning by discovery, through individual and group exploration about the Business Intelligence importance, the supporting infrastructure, and concepts application and practical use cases resolution, supported by exercises that allow concretization of the main concepts of Business Intelligence application and Knowledge Discovery in Databases through Data Mining techniques application.
To foster group skills development, a workgroup will be carried out and respective discussion in the specific learning area will take place.
Software
Python
Orange Data Mining
Microsoft PowerBI
Anaconda - Jupyter Notebook
R Studio
Tipo de avaliação
Distributed evaluation with final exam
Componentes de Avaliação
Designation |
Peso (%) |
Apresentação/discussão de um trabalho científico |
20,00 |
Teste |
50,00 |
Trabalho escrito |
20,00 |
Participação presencial |
10,00 |
Total: |
100,00 |
Componentes de Ocupação
Designation |
Tempo (Horas) |
Trabalho escrito |
34,00 |
Apresentação/discussão de um trabalho científico |
1,00 |
Estudo autónomo |
40,00 |
Frequência das aulas |
60,00 |
Total: |
135,00 |
Obtenção de frequência
NA
Fórmula de cálculo da classificação final
Continuous assessment comprises:
- Preparation, presentation and discussion of the workgroup (WG) - 40%;
- two individual tests (T) - 50% and
- activities during classes (AC) - 10%.
Final Grade = 40%WG + 50% T (average of the 2 tests) + 10% ACTo get approval in this unit the final grade must be equal to or greater than 10 points
a minimum grade of 2 tests - 9,5 points.
a minimum grade of workgroup - 8 points.
Exam Assessment:
NF = 100 % Exam".
Provas e trabalhos especiais
If the individual knowledge assessment test is done in distance learning mode, and if the student obtains in this assessment test a classification equal to or higher than 17 points, the student must take an oral assessment to defend the obtained classification.
Avaliação especial (TE, DA, ...)
Individual final exam (theoretical and practical exam) - 100%.
Melhoria de classificação
The improved classification includes an individual final exam (theoretical and practical exam) - 100%
Observações
In case of irregular situation detection (fraud) in the assessment process will be applied the Students Disciplinary Regulations of the Polytechnic Institute of Setúbal (Despacho No. 13714/2016, published in Diário da República, 2nd series, No. 219 on November 15th) taking also into consideration the Despacho No. 40/Presidente/2021 "Measures to be adopted in situations associated with fraud in the evaluation processes of the courses taught in IPS schools".