
Data Mining II
Code
200028
Academic unit
NOVA Information Management School
Credits
7.5
Teacher in charge
Roberto André Pereira Henriques
Teaching language
Portuguese. If there are Erasmus students, classes will be taught in English
Objectives
1 - Make predictions from data. 2 - Know the main problems related to predictions based on data ("data driven") 3 - Know the main techniques: 3.1 - Classical methods: regression, interpolation, extrapolation 3.2 - Bayesian Decisions 3.3 - 3.4 instances based Systems - Decision trees 3.6 - 3.6 Neural networks - Ensambles
Prerequisites
Data Mining I is not a prerequisite.
Subject matter
The course is organized in seven Learning Units (UA):
UA1. Introduction to forecasting methods in Data Mining
UA2. Data pre-processing and error estimates
UA3. Decision theory and Bayesian
UA4 Learning and classification systems
UA5 Decision trees
UA6. Neural Networks
UA7. Ensambles
Bibliography
Mitchell, T., (1997) ¿Machine Learning¿, McGraw Hill.; Berry, M.J.A. and G.S. Linoff, ¿Data Mining Techniques; for marketing, sales and customer support¿. 1997, John Wiley & Sons.; Hand, D. J., Mannila, H., Smyth, P. (2001) ¿Principles of Data Mining (Adaptive Computation and Machine Learning)¿, MIT Press; 0; 0
Teaching method
The course is mainly based on lecture and practical classes. The practical sessions include exposure of concepts and methodologies, sample resolution, discussion and interpretation of results. Practical work, which is very significant in this course is done by students outside the classroom, but is evaluated.
Evaluation method
The evaluation is done through homework (20% of final grade), a practical group (20%), and one final exam (60%)
Courses
- PostGraduate in Information Analysis and Management
- PostGraduate Information Systems and Technologies Management
- PostGraduate in Knowledge Management and Business Intelligence
- PostGraduate in Information Systems Governance
- PostGraduate in Marketing Research e CRM
- PostGraduate in Intelligence Management and Security
- PostGraduate in Marketing Intelligence
- PostGraduate in Enterprise Information Systems
- PostGraduate in Digital Enterprise Management
- PostGraduate Marketing Research e CRM
- PostGraduate in Information Systems and Technologies Management
- PostGraduate Risk Analysis and Management
- PostGraduate in Smart Cities
- PostGraduate in Information Management and Business Intelligence in Healthcare
- PostGraduate Digital Marketing and Analytics