IB031 Introduction to Machine Learning

Faculty of Informatics
Spring 2022
Extent and Intensity
2/2/0. 3 credit(s) (plus extra credits for completion). Recommended Type of Completion: zk (examination). Other types of completion: z (credit).
Teacher(s)
doc. RNDr. Tomáš Brázdil, Ph.D. (lecturer)
doc. RNDr. Lubomír Popelínský, Ph.D. (lecturer)
Bc. Aleš Calábek (seminar tutor)
RNDr. Jaroslav Čechák, Ph.D. (seminar tutor)
RNDr. Tomáš Effenberger, Ph.D. (seminar tutor)
Mgr. Adam Hájek (seminar tutor)
Mgr. Adam Ivora (seminar tutor)
Mgr. Marek Kadlčík (seminar tutor)
RNDr. Filip Lux (seminar tutor)
doc. Mgr. Bc. Vít Nováček, PhD (seminar tutor)
Bc. Michal Starý (seminar tutor)
Mgr. et Mgr. Bc. Pavla Wernerová (assistant)
Guaranteed by
doc. RNDr. Tomáš Brázdil, Ph.D.
Department of Machine Learning and Data Processing – Faculty of Informatics
Supplier department: Department of Machine Learning and Data Processing – Faculty of Informatics
Timetable
Tue 15. 2. to Tue 10. 5. Tue 8:00–9:50 D1
  • Timetable of Seminar Groups:
IB031/01: Mon 14. 2. to Mon 9. 5. Mon 14:00–15:50 B130, T. Brázdil, J. Čechák
IB031/02: Mon 14. 2. to Mon 9. 5. Mon 10:00–11:50 B130, J. Čechák, A. Ivora
IB031/03: Thu 17. 2. to Thu 12. 5. Thu 10:00–11:50 B130, J. Čechák, V. Nováček
IB031/04: Thu 17. 2. to Thu 12. 5. Thu 8:00–9:50 B130, F. Lux, V. Nováček
IB031/05: Tue 15. 2. to Tue 10. 5. Tue 10:00–11:50 B130, A. Hájek, V. Nováček
Prerequisites
Recommended courses are MB102 a MB103.
Course Enrolment Limitations
The course is also offered to the students of the fields other than those the course is directly associated with.
fields of study / plans the course is directly associated with
Course objectives
By the end of the course, students should know basic methods of machine learning and understand their basic theoretical properties, implementation details, and key practical applications. Also, students should understand the relationship among machine learning and other sub-areas of mathematics and computer science such as statistics, logic, artificial intelligence and optimization.
Learning outcomes
By the end of the course, students
- will know basic methods of machine learning;
- will understand their basic theoretical properties, implementation details, and key practical applications;
- will understand the relationship among machine learning and other sub-areas of mathematics and computer science such as statistics, logic, artificial intelligence and optimization;
- will be able to implement and validate a simple machine learning method.
Syllabus
  • Basic machine learning: classification and regression, clustering, (un)supervised learning, simple examples
  • Decision trees: learning of decision trees and rules
  • Logic and machine learning: specialization and generalization, logical entailment
  • Evaluation: training and test sets, overfitting, cross-validation, confusion matrix, learning curve, ROC curve; sampling, normalisation
  • Probabilistic models: Bayes rule, MAP, MLE, naive Bayes; introduction to Bayes networks
  • Linear regression (classification): least squares, relationship wih MLE, regression trees
  • Kernel methods: SVM, kernel transformation, kernel trick, kernel SVM
  • Neural networks: multilayer perceptron, backpropagation, non-linear regression, bias vs variance, regularization
  • Lazy learning: nearest neighbor method; Clustering: k-means, hierarchical clustering, EM
  • Practical machine learning: Data pre-processing: attribute selection and construction, sampling. Ensemble methods. Bagging. Boosting. Tools for machine learning.
  • Advanced methods: Inductive logic programming, deep learning.
Literature
    recommended literature
  • MITCHELL, Tom M. Machine learning. Boston: McGraw-Hill, 1997, xv, 414. ISBN 0070428077. info
    not specified
  • GÉRON, Aurélien. Hands-on machine learning with Scikit-Learn, Keras, and TensorFlow : concepts, tools, and techniques to build intelligent systems. Second edition. Beijing: O'Reilly, 2019, xxv, 819. ISBN 9781492032649. info
  • ROGERS, Simon and Mark GIROLAMI. A first course in machine learning. Boca Raton: CRC Press/Taylor & Francis Group, 2012, xx, 285. ISBN 9781439824146. info
  • FLACH, Peter A. Machine learning : the art and science of algorithms that make sense of data. New York: Cambridge University Press, 2012, xvii, 396. ISBN 1107422221. info
  • Pattern recognition and machine learning. Edited by Christopher M. Bishop. New York: Springer, 2006, xx, 738. ISBN 0387310738. info
  • BERKA, Petr. Dobývání znalostí z databází. Vyd. 1. Praha: Academia, 2003, 366 s. ISBN 8020010629. info
Bookmarks
https://is.muni.cz/ln/tag/FI:IB031!
Teaching methods
Lectures + practical exercises + project
Assessment methods
Intrasemestral exam, project, final exam.
Language of instruction
Czech
Follow-Up Courses
Further Comments
The course is taught annually.
The course is also listed under the following terms Spring 2015, Spring 2016, Spring 2017, Spring 2018, Spring 2019, Spring 2020, Spring 2021, Spring 2023, Spring 2024, Spring 2025.
  • Enrolment Statistics (Spring 2022, recent)
  • Permalink: https://is.muni.cz/course/fi/spring2022/IB031