Final CfP: LD4IE Linked Data for Information Extraction - ISWC2013 workshop

Apologise for multiple posting.

***********************************************

LD4IE 2013

The 1st international Workshop on Linked Data for Information Extraction
Sydney, Australia, October 21 -22, 2013

Workshop website: http://oak.dcs.shef.ac.uk/ld4ie2013/index.html
Twitter: @LD4IE2013 #LD4IE #LD4IE2013
Facebook page: https://www.facebook.com/Ld4ie2013

in conjunction with

ISWC 2013
The 12th International Semantic Web Conference
Sydney, Australia, October 21 -25, 2013
http://iswc2013.semanticweb.org/



*************** Call for Papers ***************

This workshop focuses on the exploitation of Linked Data for Web Scale  
Information Extraction (IE), which concerns extracting structured  
knowledge from unstructured/semi-structured documents on the Web. One  
of the major bottlenecks for the current state of the art in IE is the  
availability of learning materials (e.g., seed data, training  
corpora), which, typically are manually created and are expensive to  
build and maintain.

Linked Data (LD) defines best practices for exposing, sharing, and  
connecting data, information, and knowledge on the Semantic Web using  
uniform means such as URIs and RDF. It has so far been created a  
gigantic knowledge source of Linked Open Data (LOD), which constitutes  
a mine of learning materials for IE. However, the massive quantity  
requires efficient learning algorithms and the not guaranteed quality  
of data requires robust methods to handle redundancy and noise.

LD4IE intends to gather researchers and practitioners to address  
multiple challenges arising from the usage of LD as learning material  
for IE tasks, focusing on (i) modelling user defined extraction tasks  
using LD; (ii) gathering learning materials from LD assuring quality  
(training data selection, cleaning, feature selection etc.); (iii)  
robust learning algorithms for handling LD; (iv) publishing IE results  
to the LOD cloud.


*************** Topics ************************

Topics of interest include, but are not limited to:


***	Modelling Extraction Tasks
*	modelling extraction tasks (e.g. defining IE templates using LD ontologies)
*	extracting and building knowledge patterns based on LD
*	user friendly approaches for querying LD
***	Information Extraction
*	selecting relevant portions of LD as training data
*	selecting relevant knowledge resources from LD
*	IE methods robust to noise in LD as training data
*	Information Extractions tasks/applications exploiting LD (Wrapper  
induction, Table interpretation, IE from unstructured data, Named  
Entity Recognition, Relation Extraction…)
*	linking extracted information to existing LD datasets
***	Linked Data for Learning
*	assessing the quality of LD data for training
*	select optimal subset of LD to seed learning
*	managing heterogeneity, incompleteness, noise, and uncertainty of LD
*	scalable learning methods using LD
*	pattern extraction from LD


*************** Important Dates ***************

	Abstract submission deadline:	July 5, 2013 (Submissions accepted  
until July 12)
	Paper submission deadline:		July 12, 2013
	Acceptance Notification:		August 9, 2013
  	Camera-ready versions:			to be announced
  	Workshop date:				to be announced (21-22 October 2013)



*************** Submission ********************


We accept the following formats of submissions:

Full paper with a maximum of 12 pages including references
Short paper with a maximum of 6 pages including references
Poster with a maximum of 4 pages including references

All submissions must be written in English and must be formatted  
according to the information for LNCS Authors  
(http://www.springer.com/computer/lncs?SGWID=0-164-6-793341-0.).  
Please submit your contributions electronically in PDF format to  
EasyChair at https://www.easychair.org/conferences/?conf=ld4ie

Accepted papers will be published online via CEUR-WS.


*************** Workshop Chairs ***************


Anna Lisa Gentile, University of Sheffield, UK
Ziqi Zhang, University of Sheffield, UK
Claudia d'Amato, University of Bari, Italy
Heiko Paulheim, University of Mannheim, Germany


-- 
Dr. Heiko Paulheim
Research Group Data and Web Science
Universität Mannheim
B6, 26, Room C1.08
D-68131 Mannheim

Mail: heiko@informatik.uni-mannheim.de
Web: www.heikopaulheim.com

Received on Thursday, 4 July 2013 11:58:23 UTC