posted by system || 1918 views || tracked by 3 users: [display]

RED 2013 : Sixth International Workshop on Resource Discovery


Conference Series : Resource Discovery
When May 26, 2013 - May 27, 2013
Where Montpellier, France
Submission Deadline Mar 4, 2013

Call For Papers

Existing Web infrastructures such as the Semantic Web, Linking Data Projects, and Semantic Grids have supported the publication of a tremendous amount of resources. In order to provide users with the capability of using available resources in their day-to-day tasks, scalable infrastructures and efficient techniques to discover, select and access resources are required. Semantic descriptions of functionally and quality of resources as well as user preferences, play an important role in the achievement of this goal.

A resource may be a data repository, a database management system, a SPARQL endpoint, a link between resources, an entity in a social network, a semantic wiki, or a linked service. Resources are characterized by core information including a name, a description of its functionality, its URLs, and various additional Quality of Service parameters that express its non-functional characteristics. Resource discovery is the process of identifying, locating and selecting existing resources that satisfy specific functional and non-functional requirements; also, resource discovery includes the problem of predicting links between resources. Current research includes crawling, indexing, ranking, clustering, and rewriting techniques, for collecting and consuming the resources for a specific request; additionally, processing techniques are required to ensure an efficient and effective access of the resources.

The Sixth International Workshop on Resource Discovery aims at bringing together researchers from the database, artificial intelligence and semantic web areas, to discuss research issues and experiences in developing and deploying concepts, techniques and applications that address various issues related to resource discovery. Papers presenting theoretical or applicative material are expected. This sixth edition will focus on techniques to adress resource discovery to support Big Data applications. Big Data is characterized by volume, velocity and variety; Big Data refers to large, diverse, complex, longitudinal or distributed datasets generated from instruments, sensors, Internet transactions, email, video, click streams, and other digital resources. Tools of special interest should allow handling, storing, transmitting as welll as the analysis of resources that are part of Big Data.

Workshop key dates

Full Paper Submission Deadline:
March 4, 2013 Hawaii Time
Acceptance notification: April 1, 2013
Camera ready: April 15, 2013
Workshop Full-Day: May 26/27, 2013

We invite the submission of 15 pages (long papers), short research papers (up to 8 pages) in LNCS format. Accepted Papers will be available on-line.

Papers accepted and presented at the workshop will be invited to be revised and extended for a second peer-review process. At the issue of the second review process, accepted papers will be published in a volumen of Lecture Notes in Computer Science by Springer.

Related Resources

KDD 2021   27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining
PAKDD 2021   Pacific-Asia Conference on Knowledge Discovery and Data Mining
ECML PKDD 2021   European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases
ECML PKDD 2021   European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases
DaWaK 2021   The 23rd International Conference on Big Data Analytics and Knowledge Discovery
KDIR 2021   13th International Conference on Knowledge Discovery and Information Retrieval
ICCEAI 2021   International Conference on Computer Engineering and Artificial Intelligence
BSHDS 2021   4th International Conference on Business Sustainability, Human Resource Development and Social Responsibility
IC3K 2021   13th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management