Machine learning seminar [ LINGI2379 ]
3.0 crédits ECTS
30.0 h
2q
Teacher(s) |
Verleysen Michel ;
Dupont Pierre (coordinator) ;
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Language |
English
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Place of the course |
Louvain-la-Neuve
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Online resources |
> https://icampus.uclouvain.be/claroline/course/index.php?cid=lingi2379
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Prerequisites |
having passed at least one of the following courses:
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INGI2262 Machine Learning
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ELEC2870 Artificial neural networks
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SINF2275 Data mining and decision making
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Main themes |
Themes are chosen in the domain of machine learning
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Aims |
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To study in groups current issues in machine learning, pattern recognition or data analysis
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To summarize a technical or scientific paper of the domain, convey it to colleagues, and discuss it with a critical viewpoint
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Evaluation methods |
The evaluation focuses on the quality of the presentations made ''by each student in front of to other participants in the seminar.
The overall grade consists of:
- 50% on the educational quality of the presentation
- 50% on the accuracy of the scientific content of the presentation
In the second session, the evaluation is 100% on a written report to the teacher the first day of the examination session.
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Teaching methods |
The course is organised as a seminar where student meet regularly to present and discuss recent scientific papers.
Les séminaires pourront être présentés en anglais ou en français par les étudiants.
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Content |
Illustrative examples:
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Semi-supervised learning methods
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Structured data mining (graphs, trees, sequences, etc.)
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Kernel methods for classification and regression
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Variable selection methods
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Hidden Markov models and their applications
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Boosting and bagging algorithms
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Automata induction techniques
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Bibliography |
Scientific articles in Machine Learning, supplemented by one or the other textbooks depending on the choice of students's topics.
Examples:
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Statistics for High-Dimensional Data: Methods, Theory and Applications, Bühlmann and van Geer, Springer, 2011.
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Nonlinear Dimensionality Reduction, Lee and Verleysen, Springer, 2007.
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Computational Methods of Feture Selection, Liu and Motoda, Chapman & Hall / CRC, 2008.
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Cycle et année d'étude |
> Master [120] in Computer Science and Engineering
> Master [120] in Computer Science
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Faculty or entity in charge |
> INFO
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