Skip to main content

User account menu

  • Log in
DBS-Logo

Database Group Leipzig

within the department of computer science

ScaDS-Logo Logo of the University of Leipzig

Main navigation

  • Home
  • Study
    • Exams
      • Hinweise zu Klausuren
    • Courses
      • Current
    • Modules
    • LOTS-Training
    • Abschlussarbeiten
    • Masterstudiengang Data Science
    • Oberseminare
    • Problemseminare
    • Top-Studierende
  • Research
    • Projects
      • Benchmark datasets for entity resolution
      • FAMER
      • HyGraph
      • Privacy-Preserving Record Linkage
      • GRADOOP
    • Publications
    • Prototypes
    • Annual reports
    • Cooperations
    • Graduations
    • Colloquia
    • Conferences
  • Team
    • Erhard Rahm
    • Member
    • Former employees
    • Associated members
    • Gallery

iFuice - Information Fusion utilizing Instance Correspondences and Peer Mappings

Breadcrumb

  • Home
  • iFuice - Information Fusion utilizing Instance Correspondences and Peer Mappings

Rahm, E. ; Thor, A. ; Aumüller, D. ; Do, H. ; Golovin, N. ; Kirsten, T.

iFuice - Information Fusion utilizing Instance Correspondences and Peer Mappings

Proc. 8th Intl. Workshop on the Web and Databases (WebDB), 2005

2005 / 06

Paper

Abstract

We present a new approach to information fusion of web data
sources. It is based on peer-to-peer mappings between sources and
utilizes correspondences between their instances. Such correspondences
are already available between many sources, e.g. in the
form of web links, and help combine the information about specific
objects and support a high quality data fusion. Sources and
mappings relate to a domain model to support a semantically focused
information fusion. The iFuice architecture incorporates a
mapping mediator offering both an interactive and a script-driven,
workflow-like access to the sources and their mappings. The
script programmer can use powerful generic operators to execute
and manipulate mappings and their results. The paper motivates
the new approach and outlines the architecture and its main components,
in particular the domain model, source and mapping
model, and the script operators and their usage.

For further information see the <a href="/projekte/DATAINT/index.html">iFuice project homepage</a>.

Recent publications

  • 2025 / 9: Generating Semantically Enriched Mobility Data from Travel Diaries
  • 2025 / 8: Slice it up: Unmasking User Identities in Smartwatch Health Data
  • 2025 / 7: MPGT: Multimodal Physics-Constrained Graph Transformer Learning for Hybrid Digital Twins
  • 2025 / 6: Leveraging foundation models and goal-dependent annotations for automated cell confluence assessment
  • 2025 / 6: SecUREmatch: Integrating Clerical Review in Privacy-Preserving Record Linkage

Footer menu

  • Directions
  • Contact
  • Impressum