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Call
for Proposals:
 
“Big
Data, Linked Data: Classification Research at the Junction”
 
SIG/CR
Classification Research Workshop
 

 
 
Saturday,
November 2, 2013
 

 
 
ASIST
Annual Meeting
 
Montreal,
Canada
 
http://sigcr.wordpress.com/2013/06/11/cfp-pdf/
 

 
 
ASIST’s
Special Interest Group in Classification Research will hold its
annual Classification Research Workshop as part of the ASIST Annual
Meeting in Montreal, Canada, on November 2, 2013. The Workshop
Program Committee is currently inviting proposals for papers to be
presented at the workshop.
 

 
 
THEME
 

 
 
The
growing ubiquity of cloud computing, mobile technology and large data
collections has given fresh currency to two important information
phenomena: big data and linked data. “Big data” refers to the
rise of ambitious projects which cultivate both large datasets and
massive quantities of unstructured data existing in the long tail of
the Web. These projects, in their very reach and size, can yield
suggestive patterns and significant predictive value. “Linked
data” refers to the emergence of data which has been deliberately
structured according to Semantic Web standards of resource
description and linked through a complex network of relationships
defined through formal ontologies.  
 

 
 
While
big data and linked data are often considered separately,
classification research stands at the juncture between these two
approaches, and can therefore provide a context in which researchers
in each domain can benefit from the insights of the other.
Classification forms the bedrock of the analysis of big data sets.
Natural language processing, detection of linguistic behaviour, and
the design of translation systems all rely on the painstaking
definition of synonymies, genus-species relationships, whole-part
relationships, and facet structures to extract meaning from data from
vastly different sources with different degrees of definition and
structure. Linked data projects employ the same classification
principles in their formal definitions of domains and namespaces,
their use of ontologies to reconcile and combine data from different
namespaces, and the use of inferential logic to form reasonable
inferences from data that has been linked together.  
 

 
 
Classification
research, therefore, has a key role to play in the emergence of new
tools and functionalities that will determine how human communities
adopt both big data and linked data into their information systems
and behaviour. This workshop will bring classification researchers
together with those exploring linked data and big data, thereby
providing researchers and practitioners with the theoretical
vocabulary to forge meaningful connections between these two
phenomena.  
 

 
 
FORMAT
OF PROPOSALS:
 

 
 
Authors
wishing to present a paper may submit a 500-word extended abstract. Extended abstracts should contain citations (not included in the word
count). Presentations will be a maximum of 20 minutes long, followed
by 10 minutes of discussion. Authors must present a draft of the
paper to their session chair by October 25, 2013.  
 

 
 
OTHER
FORMS OF CONTRIBUTION:
 

 
 
The
workshop will also feature a poster session (details to follow in a
separate Call for Proposals), as well as a final session of
discussion devoted to making connections between issues raised during
the day, and suggesting ideas for the 2014 workshop.
 

 
 
PROPOSAL
SUBMISSION AND EVALUATION:
 

 
 
Please
submit your extended abstract to the following address by August 5,
2013:
 
D.
Grant Campbell
 
Faculty
of Information and Media Studies
 
University
of Western Ontario
 
[log in to unmask]
 

 
 
The
abstracts will be submitted to a double-blind review process, and
authors will receive notification by August 30, 3013.
 

 
 
After
the workshop, full papers will be published online in  
 
Advances
in Classification Research Online,
http://journals.lib.washington.edu/index.php/acro
 

 
 

 

--
------------------- 
D. Grant Campbell
Associate Professor
Faculty of Information and Media Studies
University of Western Ontario
London, Ontario
N6A 5B7
519-661-2111 ext.88483