Machine Learning & Data Mining

Semester: Α,
ECTS: 7.5

Fotios Kokkoras

(Course Coordinator)

Syllabus

Week 1: Machine Learning (Types, Tasks, and Applications)
Week 2: Classification/Regression Trees.
Week 3: Evaluating a Model.
Week 4: Instance Based Learning (k-NN, weighted distance k-NN).
Week 5: Designing an ML System, Data Mining Systems.
Week 6: Regression, Ensemble Methods (Bagging, Boosting, Stacking).
Week 7: Clustering (K-means, hierarchical clustering, density-based).
Week 8: Bayesian Learning.
Week 9: Association Rules.
Week 10: Neural Networks: Perceptrons, Multi-Layer Perceptrons, Back Propagation.
Week 11: Issues in Neural Network Training.
Week 12: Deep Learning / Deep Neural Networks.
Week 13: The KDD process – Issues in Knowledge Discovery.

Suggested Bibliography