The Data Science Journal http://datascience.codata.org/ is a peer-reviewed, 
open access, electronic journal dedicated to the advancement of data science 
and its application in policies, practices and management of Open Data.
 
The Data Science Journal is seeking papers for a special issue devoted to 
“Advances in Data Modeling and Knowledge Representation for Research Data”.
Detailed call for submissions: 
http://www.codata.org/uploads/CfP_DataModeling.pdf
Deadline for submissions: 31 March 2016
Data Science Journal: http://datascience.codata.org/

Call for Papers: Advances in Data Modeling and Knowledge Representation for 
Research Data
Research data systems have matured greatly over the last decade - partly in 
response to the growing complexity, amount, and heterogeneity of research data. 
Innovations such as data harmonization, interoperability frameworks, and 
feature extraction tools are greatly improving the capabilities of research 
communities to access and manipulate data in computing systems. Underpinning 
these new systems-level features and functionalities are a number of robust 
conceptual, logical, and physical data models. These include data- and 
curation-oriented models such as the Open Provenance Model and the Research 
Object Model, as well as ontologies of observable phenomena and objects such as 
the the Semantic Web for Earth and Environmental Terminology (SWEET) ontologies 
and the Gene Ontology.

Unfortunately, the formal literature of data science often glosses over or 
excludes the design work that goes into developing and implementing these 
models. As a result it is often unclear how or why design decisions were made, 
or what advances and new techniques have been developed for data modeling and 
knowledge representation as they are applied to research data. This special 
issue seeks contributions from the Data Science community on the development, 
implementation, and evolution of data models and ontologies - including the use 
of knowledge representation languages like RDF and OWL in advancing the 
capabilities of research data systems. We welcome submissions that report on 
empirical research that is completed or in progress, as well as pieces that can 
clearly articulate grand challenges and opportunities for advancing our current 
understanding of data models, research data curation systems, and knowledge 
representation, more generally.

Submissions may cover topics including (but are not limited to):
Design choices: A designer of a data model often faces choices between 
expressiveness, ease of use, and computational complexity - How are these 
tradeoffs accounted for in doing requirements engineering at the beginning 
stages of developing a curation system?
Harmonization: What are complications in, or best practices for harmoniz- ing 
conceptual models ? (e.g. FRBR + CIDOC CRM = FRBRoo)
Interoperability: How have data models been developed to facilitate cross or 
interdisciplinary data interoperability?
Requirements Engineering: Research data systems are often developed by working 
closely with data producers and potential systems users. How are requirements 
for a data model generated from these types of interactions?
Ontology Development: Ontologies capture a conceptualization of a domain. How 
are the essential aspects of research domain or a research data system to be 
analyzed for representation? How can an existing ontologies be evaluated for 
potential implementation or refinement?
Sustainability: Knowledge organization and representation activities con- 
tribute greatly to the sustainability and long-term success of a research data 
curation systems - How do these activities co-evolve with the discipline or 
domain that they serve? How have data models and metadata schemas been edited 
and revised to accommodate changes in scale, complexity, or heterogeneity of 
research data?
Education: What are the competencies necessary for doing knowledge 
representation work and research data systems development? How are these skills 
taught in classrooms, workshops, and continuing education programs
Submissions can be of two types:

Research Papers describe the outcomes and application of unpublished original 
research. These should make a substantial contribution to knowledge and 
understanding in the subject matter and should be supported by relevant figures 
and where appropriate data. Research Papers should be no more than 8,000 words 
in length. 

Practice Papers report upon or critique a specific topic such as a particularly 
difficult aspect of doing data modeling, education in Knowledge Representation, 
or other topics related to the special issue’s focus. Practice Papers can 
either describe the finished outputs of a project, or the procedures, 
protocols, and models in use by an established research data system. Practice 
Papers should be no longer than 3,000 words in length.

Article Processing Charges (APCs): Potential authors should note that Data 
Science Journal levies an APC of £350 for each article (Research Paper or 
Practice Paper) published. Please contact the Guest Editors or Editor-in-Chief, 
Sarah Callaghan ([email protected]), if you have any questions or 
think you will have difficulty meeting this cost.

The deadlines associated with this special issue are as follows:
Full papers due: March 31, 2016
Special issue publication (anticipated): December, 2016 

Special-issue Guest Editors
Nic Weber (University of Washington) [email protected]
Karen Wickett (University of Texas)
Pascal Hitzler (Wright State University) 
___________________________

Data Science Journal, Call for Papers: Advances in Data Modelling and Knowledge 
Representation for Research Data, deadline 31 March 2016: 
http://datascience.codata.org/

Call for Nominations for CODATA Officers and Executive Committee Members: 
Deadline 1 April 2016: 
http://www.codata.org/news/101/62/Call-for-Nominations-for-CODATA-Officers-and-Executive-Committee-Members-Deadline-1-April-2016

CODATA International News and Discussion List: 
http://lists.codata.org/mailman/listinfo/codata-international_lists.codata.org
___________________________
Dr Simon Hodson | Executive Director CODATA | http://www.codata.org

E-Mail: [email protected] | Twitter: @simonhodson99 | Skype: simonhodson99
Blog: http://www.codata.org/blog
Diary: http://bit.ly/simonhodson99-calendar
Tel (Office): +33 1 45 25 04 96 | Tel (Cell): +33 6 86 30 42 59

CODATA (ICSU Committee on Data for Science and Technology), 5 rue Auguste 
Vacquerie, 75016 Paris, FRANCE

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