UnivIS
Informationssystem der Otto-Friedrich-Universität Bamberg © Config eG 
Zur Titelseite der Universität Bamberg
  Sammlung/Stundenplan Home  |  Anmelden  |  Kontakt  |  Hilfe 
Suche:      Semester:   
 Lehr-
veranstaltungen
   Personen/
Einrichtungen
   Räume   Telefon &
E-Mail
 
 
 Darstellung
 
Druckansicht

 
 
 Außerdem im UnivIS
 
Vorlesungsverzeichnis

 
 
Veranstaltungskalender

 
 
Einrichtungen >> Fakultät Wirtschaftsinformatik / Angewandte Informatik >>

  xAI-Sem-M1: Masterseminar Erklärbares Maschinelles Lernen (xAI-ML4H)

Dozent/in
Prof. Dr. Christian Ledig

Angaben
Seminar
Rein Präsenz
2 SWS, benoteter Schein
Zeit und Ort: Di 16:00 - 18:00, WE5/05.003; Bemerkung zu Zeit und Ort: Wir streben an, diese Veranstaltung in Präsenz durchzuführen.

Voraussetzungen / Organisatorisches
Interest and registration
If you have questions or for registration, please send an Email to christian.ledig@uni-bamberg.de
For registration include name and matriculation number.

Requirements:
completed course "Lernende System / Machine Learning" or "Einführung in die KI / Introduction into AI" bestanden

Inhalt
Focus Topic in SS 2022: Machine Learning for Healthcare

Motivation
Machine Learning holds great promise to transform key aspects of healthcare. The motivation is that AI-powered systems have the potential to substantially increase access to affordable healthcare, allow individualized patient-focused treatment plans and support clinical decision makers to reach more accurate and objective decisions faster. However, there are key challenges when translating AI technology into practice. Those challenges include (among others) technical integration, data privacy, generalization, robustness, transparency, interpretability and patient communication.

Goals and Topics
You will learn about the potential as well as current challenges when translating AI systems into healthcare systems. The focus of the seminar will be biased towards approaches based on computer vision algorithms and medical image processing. Specifically you will learn about the state of the art in specific clinical applications such as pathology, negative examples of AI systems that failed to deliver on promises, regulatory constraints, patient privacy and data management. The seminar will allow you, based on your interest, to focus on a wide spectrum of aspects ranging from recently published technical solutions to the state of affairs on the policy level.

Format
We will meet in the beginning of the semester to discuss possible work areas and assign concrete topics to each participant. You will be provided pointers to literature and then independently familiarize yourself with the assigned topic. Towards the end of the semester you will:
  • present your topic as a 30 minute presentation and
  • submit a written report of approximately 8 pages.
  • The goal is to run the seminar in English including presentations and the written report.
The presentations will be conducted as a block seminar towards the end of the semester. The weekly hours mentioned in the module description are an optional time slot to get support, guidance and feedback on your topic (as required).

Expected workload & Grading
The time (work load) of this module is expected to be roughly as follows:
  • Attendance of seminar / presentation: 20h
  • Literature review and familiarization with topic: 25h
  • Preparation of presentation: 15h
  • Written report: 30h
The grade will be determined in equal parts based on the presentation and report. Attendance of the presentations is mandatory.

Englischsprachige Informationen:
Title:
xAI-Sem-M1: Masterseminar Explainable Machine Learning

Credits: 3

Zusätzliche Informationen
Erwartete Teilnehmerzahl: 15

Institution: Lehrstuhl für Erklärbares Maschinelles Lernen

Hinweis für Web-Redakteure:
Wenn Sie auf Ihren Webseiten einen Link zu dieser Lehrveranstaltung setzen möchten, verwenden Sie bitte einen der folgenden Links:

Link zur eigenständigen Verwendung

Link zur Verwendung in Typo3

UnivIS ist ein Produkt der Config eG, Buckenhof