Upload
fabrizio-orlandi
View
628
Download
1
Embed Size (px)
DESCRIPTION
@ NUI Galway - Research Day Short presentation
Citation preview
Copyright 2009 Digital Enterprise Research Institute. All rights reserved.
Digital Enterprise Research Institute www.deri.ie
Chapter
Semantic Search on Heterogeneous Wiki Systems
Fabrizio Orlandi, Alexandre PassantUSS, Unit Social Software
NUI Galway – Research Day15-04-2010
Digital Enterprise Research Institute www.deri.ie
Background
Social software allows people to connect, communicate or collaborate on the Web. Popular systems are discussion forums, blogs, wikis and online social networks
A wiki is a website that allows the easy and collaborative creation of any number of interlinked web pages via a web browser
Wikis are widely used both on the Web (e.g. Wikipedia) and in the workplace (e.g. project management or customer relationships)
By utilising Semantic Web technologies in social software systems, we can create new methods for connecting people to other people and also to the information that they have created
Digital Enterprise Research Institute www.deri.ie
Motivations
All wikis share a wide common knowledge, but they have different structures and implementations, platform dependent
They act as isolated systems, where information from one system cannot be easily integrated with information from another one
Several semantic models implemented within specific semantic wiki platforms
But they are all specific to wikis and not open to other social websites
We propose a new approach based on Linked Data principles to solve such issues and to enable semantic search across heterogeneous wiki systems
Digital Enterprise Research Institute www.deri.ie
Our Contribution
We developed a system to enable semantic search across heterogeneous wikis in a unified way using Semantic Web technologies
I) We designed a common semantic model, based on the SIOC ontology, for representing wiki structure and contributions in RDF - Resource Description Framework - encompassing previous models in the area
II) We extracted semantic data from wikis developing data exporters for popular wiki systems, translating wiki information in RDF annotations (based on our model) in real-time
III)We built an efficient application with a user-friendly interface enabling semantic searching and browsing capabilities on the top of different interlinked wikis
Digital Enterprise Research Institute www.deri.ie
Results
In total we collected more that 3000 wiki articles and 700 users from 5 different wiki sites
The system is capable to answer queries like:“What are the co-authors of user X and on which articles they collaborate?”“What are the topics and the wiki sites the user X contributed most in the past six months?”
The presented application allows for advanced and fast querying processes and hidden knowledge discovery
By applying Semantic Web technologies to wikis we show potentialities that cannot be obtained using the traditional Web 2.0 instruments
Digital Enterprise Research Institute www.deri.ie
Conclusions and Future Work
We showed an overall benefit on applying Semantic Web technologies to wikis, enabling end-users to access the information generated by this process in a simple and transparent way
The presented work goes exactly in the direction of creating a collective knowledge system on the Web in accordance to the Linking Open Data project
Future work: To develop this system as a stable online web service To provide more details about the content of wiki articles To add to the system architecture a real-time search
functionality