posted by system || 2138 views || tracked by 11 users: [display]

WWWJ-QDW 2010 : WWWJ SI Querying the Data Web


When N/A
Where N/A
Submission Deadline Apr 22, 2010
Notification Due Jun 1, 2010
Final Version Due Jul 15, 2010

Call For Papers

Special Issue Call for Paper
Querying the Data Web
Novel techniques for querying structured data on the web
World Wide Web Internet and Web Information Systems (WWWJ)

The rapid growth of structured data on the Web has created a high demand for making this content more reusable and consumable. Companies are competing not only on gathering structured content and making it public, but also on encouraging people to reuse and profit from this content. Many companies have made their content publicly accessible not only through APIs but also started to widely adopt web metadata standards such as XML, RDF, RDFa, and microformats. This trend of structured data on the Web (Data Web) is shifting the focus of Web technologies towards new paradigms of structured-data retrieval. Traditional search engines cannot serve such data as the results of a keyword-based query will not be precise or clean, because the query itself is still ambiguous although the underlying data is structured. On the other side, traditional structured querying languages cannot be used directly as data on the Data Web is heterogeneous, large, distributed, schema-free, and not intuitive for web users. To expose the massive amount of structured data on the Web to its full potential, people should be able to query and combine this data easily and effectively. This special issue of the WWW Journal seeks original articles describing theoretical and practical methods and techniques for fostering, querying, and consuming the Data Web. Topics relevant to this special issue include, but are not limited to, the following:

* Keyword based search over structured data
* User interfaces for querying
* Novel approaches for Querying and filtering structured data on the Web
* Semantic enrichment and reasoning
* Ranking, measures, and benchmarks
* Distributed and federated query processing
* Continuous querying
* Temporal and spatial aware queries
* Preferences and Context
* Data mashups
* Presentation of results
* Crawling and indexing
* Entity Resolution

Paolo Ceravolo, Università degli Studi di Milano, Italy
Chengfei Liu, Swinburne University, Australia
Mustafa Jarrar, Birzeit University, Palestine
Kai-Uwe Sattler, Ilmenau University of Technology, Germany

All manuscripts must be submitted in English. Submitted manuscripts that do not conform to the World Wide Web Journal will be returned to authors. Manuscripts submitted for publication are reviewed by three peer reviewers, according to the usual policies of the WWW Journal.

Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals. Springer offers authors, editors and reviewers of World Wide Web a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript. Manuscripts should be submitted to: Authors should choose article type: "Querying the Data Web" when submitting their paper. This online system offers easy and straightforward log-in and submission procedures, and supports a wide range of submission file formats.

Related Resources

Data SI Overcoming Data Scarcity in ES 2019   Data Journal Special Issue on Overcoming Data Scarcity in Earth Science
MEDES 2019   The 11th International ACM Conference on Management of Digital EcoSystems
RecSys 2019   13th ACM Conference on Recommender Systems
ICMLA 2019   18th IEEE International Conference on Machine Learning and Applications
WSDM 2019   International Workshop on Web Search and Data Mining
Journal Special Issue 2019   Machine Learning on Scientific Data and Information
IEEE BigData 2019   IEEE International Conference on Big Data
ICWE 2019   19th International Conference on Web Engineering
KomIS@ACM-SAC 2019   ACM SAC 2019 - KomIS track: Application of AI and Big Data Analytics
KGSWC 2019   1st Iberoamerican Knowledge Graph and Semantic Web Conference