Seminar: Explainable Machine Learning

This seminar is concerned with explainable machine learning in computer security. Learning-based systems often are difficult to interpret, and their decisions are opaque to practitioners. This lack of transparency is a considerable problem in computer security, as black-box learning systems are hard to audit and protect from attacks. The module introduces students to the emerging field of explainable machine learning and teaches them to work up results from recent research. To this end, the students will read up on a sub-field, prepare a seminar report, and present their work at the end of the term to their colleagues. Topics cover different aspects of the explainability of machine learning methods for the application in computer security in particular. More information can be found at https://intellisec.de/teaching/eml
Offline

Zusammenfassung

This seminar is concerned with explainable machine learning in computer security. Learning-based systems often are difficult to interpret, and their decisions are opaque to practitioners. This lack of transparency is a considerable problem in computer security, as black-box learning systems are hard to audit and protect from attacks.

The module introduces students to the emerging field of explainable machine learning and teaches them to work up results from recent research. To this end, the students will read up on a sub-field, prepare a seminar report, and present their work at the end of the term to their colleagues.

Topics cover different aspects of the explainability of machine learning methods for the application in computer security in particular.

More information can be found at https://intellisec.de/teaching/eml

Allgemein

Sprache
Deutsch
Copyright
This work has all rights reserved by the owner.

Verfügbarkeit

Zugriff
1. Sep 2021, 00:00 - 2. Mär 2022, 00:00
Aufnahmeverfahren
Sie können diesem Kurs direkt beitreten.
Zeitraum für Beitritte
Bis: 26. Okt 2021, 09:15
Veranstaltungszeitraum
18. Okt 2021 - 11. Feb 2022

Für Kursadministratoren freigegebene Daten

Daten des Persönlichen Profils
Anmeldename
Vorname
Nachname
E-Mail
Matrikelnummer

Zusätzliche Informationen

Objekt-ID
2147164