Coordinators:
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This lecture
series will provide an introduction to advanced data analysis
techniques developed in computer science and their current or
potential applications in High Energy Physics. The lectures will cover basic topics of Machine Learning Techniques and detailed discussions of how to prepare data, how to extract meaningful attributes, and how to evaluate algorithms performance. Artificial Neural Networks and their current status in High Energy Physics will be presented as an example of a technique becoming more and more common in this field. Other state of the art algorithms such as Support Vector Machines and new developments in Evolutionary Computation will also be introduced and their prospects in High Energy Physics will be discussed. |
Slot | Lecture | Description | Lecturer |
Monday 6 March |
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09:30- 10:00 |
Introduction | Liliana Teodorescu | |
10:00 - 11:00 |
Lecture 1 |
Anselm Vossen | |
11:30 - 12:25 |
Lecture 2 |
Jaroslaw Prybyszewski | |
12:30 - 14:00 |
Lunch |
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14:00 - 14:55 |
Lecture 3 |
Liliana Teodorescu | |
15:05 - 16:00 |
Lecture 4 |
Anselm Vossen | |
16:30 - 17:25 |
Lecture 5 |
Liliana Teodorescu | |
17:30 |
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Adjourn |