BibSonomy :: bibtex  ::

tag user group author concept BibTeX key search:all search:wnpxrz
A blue social bookmark and publication sharing system.
tags · relations · groups · popular
help · blog · about
login · register
wnpxrz's BibTeX entry:  

Visualization of Heterogeneous Data

IEEE TRANSACTIONS ON VISUALIZATION AND COMPUTER GRAPHICS, 13(6)2007.
Authors: Mike Cammarano and Xin (. Dong and Bryan Chan and Jeff Klingner and Justin Talbot and Alon Halevy and Pat Hanrahan
Description: CiteULike: Visualization of Heterogeneous Data
Tags: rdf semanticweb visualization
Abstract: Both the Resource Description Framework (RDF), used in the semantic web, and Maya Viz u-forms represent data as a graph of objects connected by labeled edges. Existing systems for flexible visualization of this kind of data require manual specification of the possible visualization roles for each data attribute. When the schema is large and unfamiliar, this requirement inhibits exploratory visualization by requiring a costly up-front data integration step. To eliminate this step, we propose an automatic technique for mapping data attributes to visualization attributes. We formulate this as a schema matching problem, finding appropriate paths in the data model for each required visualization attribute in a visualization template.
| BibTeX  
@article{citeulike:1842781,
title = {Visualization of Heterogeneous Data},
author = {Mike Cammarano and Xin (. Dong and Bryan Chan and Jeff Klingner and Justin Talbot and Alon Halevy and Pat Hanrahan},
journal = {IEEE TRANSACTIONS ON VISUALIZATION AND COMPUTER GRAPHICS},
month = {November},
number = {6},
volume = {13},
year = {2007},
description = {CiteULike: Visualization of Heterogeneous Data},
abstract = {Both the Resource Description Framework (RDF), used in the semantic web, and Maya Viz u-forms represent data as a graph of objects connected by labeled edges. Existing systems for flexible visualization of this kind of data require manual specification of the possible visualization roles for each data attribute. When the schema is large and unfamiliar, this requirement inhibits exploratory visualization by requiring a costly up-front data integration step. To eliminate this step, we propose an automatic technique for mapping data attributes to visualization attributes. We formulate this as a schema matching problem, finding appropriate paths in the data model for each required visualization attribute in a visualization template.},
priority = {0}, citeulike-article-id = {1842781},
keywords = {rdf semanticweb visualization }
}