From 1229689e36f8100369e7acc2d1ae0e8d576aca0f Mon Sep 17 00:00:00 2001
From: =?UTF-8?q?Simon=20Kl=C3=BCttermann?=
-Students who are enrolled in this Pro-Seminar will send their favorite topics (possibly with priorities) to simon.kluettermann(at)cs.tu-dortmund.de until the 08.04.2022. We will assign topic based on your choices until the 15.04.2022. If you are uncertain about which topic to choose, we will meet shortly before once and answer your questions. The exact date depends on when we can get a room, but will probably be in the first week of april.
+Students enrolled in this Pro-Seminar will send their favorite topics (possibly with priorities) to Simon Klüttermann (simon.kluettermann@cs.tu-dortmund.de write me) until 08.04.2022. We will assign topics based on your choices until 15.04.2022. If you are uncertain about your choice, we will meet shortly before the deadline and answer your questions (probably in the first week of April).
-After you are assigned a topic, you will also be assigned a supervisor from us to help you with questions you might have. If you have more general questions you can also always write to chiara.balestra(at)cs.tu-dortmund.de or to simon.kluettermann(at)cs.tu-dortmund.de.
+After you are assigned a topic, you will also be assigned a supervisor from us to help you with questions you might have. If you have general questions, you can also always write one of us (see Contacts below).
+We will not provide a presentation course; hence you must take the one offered by the faculty. Also, we will hold the course in English.
-We will not have a special presentation course, you will have to take the one offered by the faculty. Also we will hold the course in english.
+We will distribute the Presentations over 1-3 days in the second half of Juli. Every Presentation should be between 25 and 30 minutes long. Also, you will have to hand in a written report about your topic before the deadline on 16.09.2022. Finally, you shall learn to be critical with any given topic. To train this, we will assign to you two students' reports to critically comment until the end of the semester. You need to participate in every part of this seminar to pass it.
-We will distribute the Presentations over 1-3 days in the last week of Juli. Every Presentation should be between 25 and 30 minutes long.
-Finally you will have to hand in a written report about your topic until the mid of September (Friday the 16.09.2022)
-Finally, it is important to us, that you learn to be critical with any given topic. To train this, you will be given two reports of other students to critize until the end of the semester.
-You need to participate in every part of this seminar to be able to pass it.
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-In the Proseminar you shall learn how to work yourself into a topic, research related literature and answer questions to this topic. For this it is important to not rely on the chapter given to you and use different sources to verify all statements made.
-Also, by listening and engaging with the other presentations, you will get a wide understanding of interpretable machine learning methods.
+In the Proseminar, you will learn how to work yourself into a topic, research related literature, and answer questions to this topic. To this end, you need to read the chapters assigned to you and use different sources to verify and extend the statements made. Also, by listening and engaging with the other presentations, you will get a comprehensive understanding of interpretable machine learning methods.
Procedure
Goals and Criteria for a succesful seminar
@@ -54,116 +47,17 @@ All interpretation methods are explained in depth and discussed critically. How
Literature
-This Seminar is based on the book "Interpretable Machine Learning - A Guide for Making Black Box Models Explainable" by Christoph Molnar. This book is available for free here https://christophm.github.io/interpretable-ml-book/. -Please note that, as this book is only written by a single person and thus probably contains some errors. So finding alternative sources is extremely important here. +This seminar relies on the book Interpretable Machine Learning - A Guide for Making Black Box Models Explainable by Christoph Molnar. This book is available for free here https://christophm.github.io/interpretable-ml-book/. Please note that a single person wrote this book and thus probably contains some errors. So finding alternative sources is even more significant in this seminar.
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