Catalog matching

Partition-based block matching of large class hierarchies

Authors: 
Hu, W; Zhao, Y; Qu, Y
Year: 
2006
Venue: 
The Semantic Web, ASWC 2006, LNCS 4185

Ontology matching is a crucial task of enabling interoperation between Web applications using different but related ontologies. Due to the size and the monolithic nature, large-scale ontologies regarding real world domains cause a new challenge to current ontology matching techniques. In this paper, we propose a method for partition-based block matching that is practically applicable to large class hierarchies, which are one of the most common kinds of large-scale ontologies.

Catalog integration for electronic commerce through category-hierarchy merging technique

Authors: 
Kim, D; Kim, J; Lee, S
Year: 
2002
Venue: 
Proc. RIDE

Internet marketplaces are now faced with new
challenges that arise from the need to seamlessly
integrate enormous number of product catalogs from
different sources. In order to help users find products
efficiently, Internet shops provide hierarchies of product
catalogs (called category hierarchies). However, the
absence of robust models (and well understood
semantics) for product catalogs and their hierarchies
severely impairs our ability to systematically support
structured operations.
In this paper, we present an extended catalog model

Matching hierarchies using shared objects

Authors: 
Ikeda, R; Zhao, K; Garcia-Molina, H
Year: 
2008
Venue: 
Proc. ECDL

One of the main challenges in integrating two hierarchies (e.g., of books or web pages) is determining the correspondence between the edges of each hierarchy. Traditionally, this process, which we call hierarchy matching, is done by comparing the text associated with each edge. In this paper we instead use the placement of objects present in both hierarchies to infer how the hierarchies relate.

Web taxonomy integration through co-bootstrapping

Authors: 
Zhang, D; Lee, WS
Year: 
2004
Venue: 
Proc. ACM SIGIR

We address the problem of integrating objects from a source taxonomy into a master taxonomy. This problem is not only currently pervasive on the web, but also important to the emerging semantic web. A straightforward approach to automating this process would be to learn a classifier that can classify objects from the source taxonomy into categories of the master taxonomy. The key insight is that the availability of the source taxonomy data could be helpful to build better classifiers for the master taxonomy if their categorizations have some semantic overlap.

A maximum likelihood framework for integrating taxonomies

Authors: 
Rajan, S; Punera, K; Ghosh, J
Year: 
2005
Venue: 
Proc. AAAI conf.

Many approaches have been proposed for the
of mapping categories (classes) from a source
to classes in a master taxonomy. Most of techniques,
however, ignore the hierarchical structure
taxonomies. In this paper, we propose a maximum likelihood
based framework which exploits the hierarchical
structure to obtain a more natural mapping between
source classes and the master taxonomy. Furthermore,
unlike previous work, our technique also inserts
classes into appropriate places of the master
creating new categories if required. We evaluate approach
on text and hyperspectral datasets.

HAMSTER: Using Search Clicklogs for Schema and Taxonomy Matching

Authors: 
Nandi, A; Bernstein, P
Year: 
2009
Venue: 
VLDB 2009

We address the problem of unsupervised matching of schema information from a large number of data sources into the

Semantic Web Complex Ontology Mapping

Authors: 
Silva, Nuno; Rocha, Jo
Year: 
2003
Venue: 
IEEE/WIC International Conference on Web Intelligence (WI'03), 2003
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