ECTS
4 crédits
Composante
IAE Savoie Mont Blanc
Objectifs
The course initiates students to Machine Learning methods and their applications. The students will learn the different steps involved in the design of ML methods to answer questions from a dataset. Further, through formal definitions and a number of examples, students will see the differences between different models and learn when and how to apply them. The core objective of the course is to initiate student to Machine Learning methods and their applications and initiates them to how to develop a model from scratch. At the end of the course, students should be capable of independently design models to answer questions given a dataset.
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Heures d'enseignement
- Introduction to Machine Learning - CMCours Magistral13,5h
- Introduction to Machine Learning - TDTravaux Dirigés13,5h
Pré-requis obligatoires
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Plan du cours
· Supervised and unsupervised methods · Linear regression · Logistic regression · Naive Bayes · Nearest Neighbor / Decision tree / Random Forests · Clustering · Support Vector Machines - Deep Learning and neural network - Clustering - PCA - Deep learning |
Compétences visées
- Understand, clean, and prepare a dataset
- Design features
- Train and evaluate ML models
Bibliographie
https://intelligent-optimization.org/LIONbook/lionbook_3v0.pdf