Data Mining and Neural Networks (B-KUL-G9X29A)
Aims
- The student must understand basic and more advanced techniques of neural networks for datamining, as well as related methods of nonlinear modeling.
- The student must be able to apply the methods to real data sets and constructively work towards good solutions.
Identical courses
This course is identical to the following courses:
G9X29B : Data Mining and Neural Networks
Is included in these courses of study
- Master handelsingenieur in de beleidsinformatica (Leuven) 120 ects.
- Master handelsingenieur in de beleidsinformatica (Leuven) (Minor: Data science) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (European Master of Official Statistics (EMOS)) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (Statistics and Data Science for Biometrics) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (Statistics and Data Science for Business) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (Statistics and Data Science for Industry) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (Statistics and Data Science for Social, Behavioral and Educational Sciences) 120 ects.
- Master of Statistics and Data Science (on campus) (Leuven) (Theoretical Statistics and Data Science) 120 ects.
- Courses for Exchange Students Faculty of Science (Leuven)
- Master of Business and Information Systems Engineering (Leuven) 120 ects.
- Master of Business and Information Systems Engineering (Leuven) (Minor: Data Science) 120 ects.
Activities
1 ects. Data Mining and Neural Networks: Preparatory Reading (B-KUL-G0T65a)
Content
Preparatory reading to the exercise sessions
Is also included in other courses
2.5 ects. Data Mining and Neural Networks: Lectures, Part 1 (B-KUL-H05R4a)
Content
Lectures:
1. Introduction
2. Multilayer feedforward networks and backpropagation
3. Nonlinear modelling and time-series prediction
4. Classification and Bayesian decision theory
5. Generalization, Bayesian learning of neural networks
6. Vector quantization, self-organizing maps, regularization theory
7. Basic principles of support vector machines and kernel-based models
8. Nonlinear principal component analysis, autoencoders, deep learning with stacked autoencoders and convolutional neural networks
9. Generative models: deep Boltzmann machines, generative adversarial networks, variational autoencoders, others
10. Normalization, attention, transformers
Course material
- English course text in toledo
- Slides of the lectures are available in toledo
Format: more information
- Lectures and computer exercise sessions
- Report of the exercise sessions
Is also included in other courses
0.5 ects. Data Mining and Neural Networks: Training Sessions, Part 1 (B-KUL-H05R6a)
Content
computer exercise sessions
Format: more information
Report of the exercise sessions
Is also included in other courses
Evaluation
Evaluation: Data Mining and Neural Networks (B-KUL-G2X29a)
Explanation
The exam consists of an oral discussion of the report of the exercise sessions during the examination period.