Research Projects
Sorry - this document is available in German only.
Im Folgenden finden Sie einige Informationen über abgeschlossene bzw. aktuell laufende Forschungsprojekte an der Fakultät, welche über das Forschungsinformationssystem zur Verfügung gestellt werden. Darüber hinaus finden Sie weitere Informationen zu Projekten auch über die Webseiten der jeweiligen Institute und Professuren.
2016
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011
2015
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011
2014
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011
2013
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011
2012
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011
2011
AUGUR
Titel (Englisch)
AUGUR
Kurzbeschreibung (Deutsch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Kurzbeschreibung (Englisch)
Due to the increasing trend of data gathering, data clustering has become an inevitable and highly used analysis technique in many application domains. From the end user’s perspective, the wide variety of available algorithms and their technical parameterization bring major diffculties in the determination of a user-satisfying clustering result. AUGUR aims to overcome this issue in the context of largescale analysis by developing a novel feedback-driven clustering process.rnrnThis clustering process contains two main elements: An algorithmic platform and a visual-interactive interface. The algorithmic basis of AUGUR is derived from the concept of ensemble-clustering, which offers robust result with increased quality. In contrast to traditional algorithms, AUGUR substitutes technical parameterization with a compact set of intuitive and user-friendly feedback operations. These operations are applied via a visual interface that displays clustering results and guides the user in choosing appropriate feedback to refine the obtained results. While the algorithmic component of AUGUR runs on stationary high-performance hardware, the visual interface is a lightweight android application that can be used anytime and anywhere.rnrn
Zeitraum
01/2011
Art der Finanzierung
Drittmittel
Projektleiter
- Herr Prof. Dr.-Ing. Wolfgang Lehner
Projektmitarbeiter
- Herr Dr.-Ing. Martin Hahmann
Kooperationspartnerschaft
keine
Website zum Projekt
Relevant für den Umweltschutz
Nein
Relevant für Multimedia
Nein
Relevant für den Technologietransfer
Nein
Schlagwörter
data gathering, data clustering , lightweight android application
Berichtsjahr
2011