News Story
Stefan Rueger named Programme Co-Chair for Web Intelligence 2013
Stefan Rueger, Wednesday 7 Nov 2012KMi Professor Stefan Rueger has been named PC Co-Chair of The 2013 IEEE/WIC/ACM International Conference on Web Intelligence. The conference will be held next November in Atlanta, Georgia.
Web intelligence is commonly seen as a combination of applied artificial intelligence and information technology in the context of the web with a view to study and characterise emerging – or design new – Web-empowered products, systems, services, and activities. The Web Intelligence conference, held for the 12th time since 2001, has recognised these new directions and provides a scientific forum for researchers and practitioners to further topics such as web intelligence foundations; world wide wisdom web (W4); web information retrieval and filtering; semantics and ontology engineering; web mining and farming; social networks and ubiquitous intelligence; knowledge grids and grid intelligence; web agents; web services; intelligent human-web interaction; web support systems; intelligent e-technology; intelligent cloud web systems for big data mining; Intelligent green web systems; and other related areas.
The 2013 IEEE/WIC/ACM International Conference on Web Intelligence (WI13) and its sister conference, the 2013 IEEE/WIC/ACM International Conference on Intelligent Agent Technology (IAT-13), will be held in Atlanta, USA, Nov. 17-20, 2013. The two co-located conferences are sponsored by IEEE Computer Society Technical Committee on Intelligent Informatics (TCII), Web Intelligence Consortium (WIC), and ACM-SIGART.
Previously, the conference has been held in Maebashi, Japan; Halifax, Canada; Beijing, China; Compiegne, France; Hong Kong; Silicon-Valley, USA; Sydney, Australia; Milano, Italy; Toronto, Canada; Lyon, France; and Macau.
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