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start [2011/04/27 12:22] smaug My bib. note |
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- | A more detailed outline is presented below: | + | A more detailed outline is presented below ([[http://semantic.cs.put.poznan.pl/SDM-tutorial2011/slides/sdm-tutorial.pdf|Download the whole set of slides]]): |
- | **Part I Introduction to semantic data mining** (presenters: Nada Lavrac, Anze Vavpetic) | + | **Part I Introduction to semantic data mining** (presenters: Nada Lavrac, Anze Vavpetic) [[http://semantic.cs.put.poznan.pl/SDM-tutorial2011/slides/SDM-ECML2011tutorial-Part1NadaAndAnze.pdf|Download slides]] [[http://kt.ijs.si/anze_vavpetic/SDM/ecml_demo.wmv|Download demo]] |
* Framework for semantic data mining | * Framework for semantic data mining | ||
* Semantic subgroup discovery | * Semantic subgroup discovery | ||
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- | **Part II Learning from description logics** (presenters: Agnieszka Lawrynowicz, Jedrzej Potoniec) | + | **Part II Learning from description logics** (presenters: Agnieszka Lawrynowicz, Jedrzej Potoniec) [[http://semantic.cs.put.poznan.pl/SDM-tutorial2011/slides/SDMtutorial_Part2_FINAL.pdf|Download slides]] [[http://semantic.cs.put.poznan.pl/RMonto/|RMonto website]] |
* Refinement operators for DL-learning | * Refinement operators for DL-learning | ||
* Concept learning | * Concept learning | ||
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* Presentation of developed tool for DL-learning | * Presentation of developed tool for DL-learning | ||
- | **Part III Semantic meta-mining** (presenters: Melanie Hilario, Alexandros Kalousis) | + | **Part III Semantic meta-mining** (presenters: Melanie Hilario, Alexandros Kalousis) [[http://semantic.cs.put.poznan.pl/SDM-tutorial2011/slides/part3-semantic-meta-mining.pdf|Download slides]] |
* Meta-mining problem definition | * Meta-mining problem definition | ||
* Goals and applications of data mining ontologies | * Goals and applications of data mining ontologies | ||
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of ECCAI (1996-98), and is member of the International Machine Learning Society board (IMLS, since 2001), and Artificial Intelligence in Medicine board (AIME, since 1999). | of ECCAI (1996-98), and is member of the International Machine Learning Society board (IMLS, since 2001), and Artificial Intelligence in Medicine board (AIME, since 1999). | ||
- | **Anže Vavpetič** is currently working at the Jožef Stefan Institute at the Department of Knowledge Technologies as an undergraduate student of the Faculty of Computer and | + | **Anže Vavpetič** received his BSc in computer science at the Faculty of Computer and Information Science, University of Ljubljana in 2011. Currently he is a PhD student working at the Jožef Stefan Institute at the Department of Knowledge Technologies in Slovenia. He is interested in various topics of data mining and machine learning like relational data mining, inductive logic programming and subgroup discovery. |
- | Information Science, University of Ljubljana, working on his BSc thesis. He is interested in various topics of data mining and machine learning like relational data mining, ILP and | + | |
- | subgroup discovery. | + | |
**Agnieszka Ławrynowicz** is Assistant Professor at the Institute of Computing Science at Poznan University of Technology where she also did her Ph.D. on the topic of the tutorial | **Agnieszka Ławrynowicz** is Assistant Professor at the Institute of Computing Science at Poznan University of Technology where she also did her Ph.D. on the topic of the tutorial |