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WI II - Wirtschaftsinformatik im Dienstleistungsbereich    |   Services - Processes - Intelligence    |   Prof. Dr. Freimut Bodendorf

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Universität Erlangen-Nürnberg
Lehrstuhl Wirtschaftsinformatik II
Lange Gasse 20
90403 Nürnberg
Germany

phone number(0911)_ 5302_ - 450
telefax number(0911)_ 5302_ - 379
room numberRoom 4.446
Freimut Bodendorf
Angelika Helle
Lucas Calmbach
Haithem Derouiche
Carolin Durst
Andreas Hamper
Jan Hofmann
Sebastian Huber
Johannes Kröckel
Matthias Kurz
Matthias Lederer
Alexander Piazza
Sven Schwarz
Sabine Schlick
Janine Viol
Christian Zagel

Master

Courses summer term 2012:
Master programs: IIS, IBS, Informatik, Management, Marketing, Wing, Wipäd, Wima

Important dates:

research overview

Research Overview

Research at the Department of Information Systems II focuses on new technologies as well as innovative strategies and solutions in the fields of Service Business.
Examined are especially systems and technologies to optimize processes (Business Process Management) and harness information resources (Business Intelligence).

Research Projects

List of the current research projects at WI II

Recent Publications

Matthias Kurz: BPM 2.0; Ein Business Case bei einem Unternehmen des Großanlagenbaus und ein Use Case bei einem Unternehmen der Automobilindustrie. In: 2nd Open Processes Community Meeting, Open-Processes.org, Koblenz 2012.
Matthias Kurz; Sebastian Huber; Bernd Hilgarth: ProcessWiki; A Contribution for Bridging the Last Mile Problem in Automotive Retail. In: S-BPM ONE 2012, Springer, Vienna 2012, S. 151-167.
Matthias Kurz; Gunnar Billing; Karl Hettling; Holger von Jouanne-Diedrich: PCA-C; A Process-Centric Approach for Integrating and Managing Cloud Services. In: Christian Stary (Hrsg.): S-BPM ONE 2012, Springer, Vienna 2012, S. 127-144.

Kontakte zu Wirtschaft und Wissenschaft

Der Lehrstuhl Wirtschaftsinformatik II kooperiert im Rahmen von Forschung und Lehre mit einer Vielzahl an Unternehmen, Universitäten und Forschungsinstituten.

Kooperationsmöglichkeiten bestehen unter anderem im Rahmen von:

  • Forschungsprojekten
  • Gastvorträgen
  • Abschlussarbeiten
  • Exkursionen
  • Fallstudien
industry partners

Collective Intelligence Services

Abstract

Customers interact in online-communities to help each other sharing their knowledge. Thereby they advise each other or develop solutions commonly interacting in groups.

Goal is the creation of new individualized customer-services. Therefore, the interactive knowledge exchange is examined and the knowledge of the individuals as well as the knowledge of the group is extracted and analyzed by data mining algorithms. With the aid of this new generated knowledge, customer needs are detected and new knowledge about products and services is developed. Afterwards new services are conceptualized, fitting the individual customer needs.

Research Picture

Research Picture

 

Project description

In the context of this research topic an online-travel platform is designed. The platform enables users to input their former trips, recommend travels to each other and search for interesting trips. Additionally the users are motivated by playful elements to input their travel data. Customers use the travel community to share their own knowledge and experiences. Moreover they learn from the experiences of other users before planning their trips. Caused by this interactive knowledge exchange new collective knowledge about travel destinations arises. By talking about insider tips, customers share new knowledge, travel providers haven´t known before. Furthermore they state their own travel preferences.

Actual studies

Measuring customer needs using images:

Goal is to determine the relation between images users load up in online-communities and their characteristics.

 

  • Is it possible to conclude user characteristics from the pictures they like? It is determined if users who choose similar pictures also have similar characteristics (e.g. being sociable) or travel behavior.

 

  • Another step is to recognize relations between pictures users load up in online communities and their characteristics and travel behavior automatically. Therefor profile-pictures, travel-pictures as well as data about former travel behavior and characteristics are collected in several experiments. Afterwards, different data and image mining algorithms are used for pattern recognition.

 

Automatically generated individual travel recommendation

Another study deals with automatically generated travel recommendations. Therefore several input data and algorithms are used in order to optimize the recommendations. A special focus is the involvement of human recommendation to optimize the machine generated recommendations.

 

Related Student Reports (excerpt)

  • Analyse des Zusammenhangs zwischen Reiseverhalten und Bildern
    (Lena Schumm; Bachelor Thesis; 2012)
  • Messung von Kundenbedürfnissen auf der Basis von Bildern
    (Nicola Baumgartner; Bachelor Thesis; 2012)
  • Optimierung eines Online-Reiseempfehlungssystems durch maschinelles Lernen
    (Sara Mayer; Bachelor Thesis; 2012)
  • Analyse von menschlichen Kundenempfehlungen zur Optimierung eines Online-Reiseempfehlungssystems
    (Tanja Schmid; Bachelor Thesis; 2012)
  • Concept of Travel Recommendation Application
    (Yining Chen, Xia Wu; Seminar Paper; 2011)
  • Nutzenpotentiale von Social Media Daten zur Gewinnung von Kundenwissen am Beispiel einer Online-Reiseplattform
    (Christian Burger; Diploma Thesis; 2011)
  • Social Knowledge Service für individuelle Reiseempfehlungen
    (Sabine Ensslen, Franziska Hartmann, Martha Kift, Alexander Sankowski, Veronika Wacker; Seminar Paper)

last edited by Sabine Schlick on 2012-01-31 16:11:31     |     Sitemap     |     Intranet     |     Imprint