184.768 Preferences in Artificial Intelligence
Diese Lehrveranstaltung ist in allen zugeordneten Curricula Teil der STEOP.
Diese Lehrveranstaltung ist in mindestens einem zugeordneten Curriculum Teil der STEOP.

2015S, VU, 2.0h, 3.0EC

Merkmale

  • Semesterwochenstunden: 2.0
  • ECTS: 3.0
  • Typ: VU Vorlesung mit Übung

Ziele der Lehrveranstaltung

The course will offer the student insight into state-of-the-art research on preferences in artificial
intelligence. This will allow the students to gain a profound understanding of the relevance of preferences for a large variety of applications. They become familiar with some of the most advanced preference modeling techniques. Moreover, they learn to analyze related problems in different subfields of artificial intelligence and knowledge representation. This will increase their ability to detect similarities among problems, even if they are presented from very different perspectives.

Inhalt der Lehrveranstaltung

Preferences are ubiquitous. They determine our decisions, from simple everyday decisions (such as having tea or coffee, ordering another glass of beer) to much more fundamental decisions (such as accepting a job offer, getting married, political participation). Preferences also play a tremendous role in many applications, such as logic programming, multi-agent systems, diagnosis etc. Given this, it is far from surprising that various subfields of artificial intelligence (AI) have come up with models for representing preferences and for reasoning and decision making based on these models. Whereas classical decision theory is based on a numerical representation of preferences (utilities), more recently qualitative as well as mixed qualitative/quantitative models of preferences have been a major focus of research.

The course will present the most influential preference models developed in various subfields of AI. In particular, it will cover preferences in constraint reasoning, CP nets, preferences in nonmonotonic reasoning, in argumentation and in logic programming. Moreover, we will explore the challenges of joint decision making based on preferences, a central problem in multi-agent systems.

Weitere Informationen

The course is based on two main parts. The first part will consist of 6 lectures which provide the necessary background and foundational material as well as an introduction to current research topics. In the second part, students have to apply the concepts and techniques presented in the lecture within a small project, which can either be concerned with a theoretical question or about implementation. Hereby, students will thus actively work with up to date
literature and participate in current research conducted at our group.

 

ECTS breakdown: 3 ECTS = 75 Hours

Lecture 15h
Project 60h

Vortragende Personen

Institut

LVA Termine

TagZeitDatumOrtBeschreibung
Mi.13:00 - 14:0015.04.2015Seminarraum FAV EG C (Seminarraum Gödel) Vorbesprechung
Mi.11:00 - 14:0006.05.2015Seminarraum FAV EG B (Seminarraum von Neumann) VO
Fr.12:30 - 15:3008.05.2015Seminarraum FAV 01 A (Seminarraum 183/2) VO
Mi.11:00 - 14:0013.05.2015Seminarraum FAV EG B (Seminarraum von Neumann) VO
Mi.11:00 - 13:0020.05.2015Seminarraum FAV EG B (Seminarraum von Neumann) VO
Fr.12:30 - 15:3022.05.2015Seminarraum FAV EG B (Seminarraum von Neumann) VO
Mi.11:00 - 15:0027.05.2015Seminarraum FAV EG B (Seminarraum von Neumann) VO

LVA-Anmeldung

Nicht erforderlich

Curricula

StudienkennzahlVerbindlichkeitSemesterAnm.Bed.Info
066 931 Computational Intelligence Gebundenes Wahlfach
066 936 Medizinische Informatik Gebundenes Wahlfach
066 937 Software Engineering & Internet Computing Gebundenes Wahlfach

Literatur

Es wird kein Skriptum zur Lehrveranstaltung angeboten.

Vorkenntnisse

The course is for master and PhD students with background in formal logic and complexity theory. Some experience with knowledge representation and/or artificial intelligence will be helpful, but is not a necessary precondition for successful participation.

Sprache

bei Bedarf in Englisch