| Course title | Machine Learning |
|---|---|
| Course code | FES/HSU |
| Organizational form of instruction | Lecture + Seminar |
| Level of course | Doctoral |
| Year of study | not specified |
| Semester | Winter and summer |
| Number of ECTS credits | 5 |
| Language of instruction | Czech |
| Status of course | Optional |
| Form of instruction | Face-to-face |
| Work placements | This is not an internship |
| Recommended optional programme components | None |
| Lecturer(s) |
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| Course content |
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Theory of learning and selected learning tasks. Generative and discriminative algorithms. Support vector machines and support vector regression. Theoretical issues of training data selection. Feature selection and extraction. Ensemble of algorithms for supervised and unsupervised learning. Combining supervised and unsupervised learning. Analysis of learning outcomes and the problem of accuracy and complexity. Machine learning in information retrieval and knowledge extraction from text. Applications of machine learning in processing large volumes of data.
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| Learning activities and teaching methods |
| unspecified |
| Learning outcomes |
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The aim of the course is to familiarize doctoral students with the latest approaches in the field of machine learning. current trends in the development of machine learning algorithms for various types of learning tasks are discussed, as well as selected applications of machine learning, particularly in the processing of large data volumes.
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| Prerequisites |
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unspecified
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| Assessment methods and criteria |
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unspecified
As part of the course, students will prepare an independent paper of the scope required for a scientific journal article. The topic of this paper will relate to the doctoral student's dissertation and the methods used will include one of the contemporary approaches to machine learning. Examination: Oral, with a minimum pass rate of 60%. |
| Recommended literature |
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| Study plans that include the course |
| Faculty | Study plan (Version) | Category of Branch/Specialization | Recommended semester |
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