Tuesday, August 22, 2017

[ELEARN] CFP: IEEE TETC, Special Issue on Scholarly Big Data, Deadline: December 1, 2017

CALL FOR PAPERS

IEEE Transactions on Emerging Topics in Computing Special Issue on Scholarly Big Data 

IEEE Transaction on Emerging Topics in Computing (TETC) seeks original manuscripts for a Special Issue/Section on Scholarly Big Data scheduled to appear in the fourth issue of 2018.

Recent years have witnessed the rapid growth of scholarly information due to advancements in information and communication technologies. Scholarly big data is the vast quantity of research output, which can be acquired from digital libraries, such as journal articles, conference proceedings, theses, books, patents, experimental data, etc. It also encompasses various scholarly related data, such as author demography, academic social networks, and academic activity. The abundance of scholarly data sources enables researchers to study the academic society from a big data perspective. The dynamic and diverse nature of scholarly big data requires different data management techniques and advanced data analysis methods. Today’s researchers realize that new scholarly-big-data specific platform/management/techniques/ are needed. Therefore, a set of emerging topics such as scholarly big data acquisition, storage, management and processing are important issues for the research community. Manuscripts submitted to TETC should be computing focused.

This special issue focuses on covering the most recent research results in scholarly big data management and computing. The issue welcomes both theoretical and applied research (e.g. platforms and applications). It will encourage the effort to share data, advocate gold-standard evaluation among shared data, and promote the exploration of new directions. Topics of interest include (but not limited to): 
* New approaches to search and crawling of scholarly big data from various data sources
* Methods for storing, indexing, and query processing for scholarly big data
* Practices for scholarly big data management and sharing
* Heterogeneous scholarly big data source integration, especially for novel datasets (e.g. online social media)
* Scholarly big data analysis, mining, and visualization
* Design of next generation scholarly big data platforms and systems
* Algorithms for measuring the scientific impact of articles, authors, institutions, etc.
* Scientific information network analysis
* Recommendation tools and techniques
* Scientific community detection and clustering
* Graph and text mining in scholarly big data
* Privacy and security issues
* Services and applications

Reference:
Feng Xia, Wei Wang, Teshome Megersa Bekele, Huan Liu. Big Scholarly Data: A Survey, IEEE Transactions on Big Data, Vol. 3, No. 1, 2017, pp: 18 - 35. DOI: 10.1109/TBDATA.2016.2641460

Submitted articles must not have been previously published or currently submitted for journal publication elsewhere. As an author, you are responsible for understanding and adhering to the IEEE submission guidelines. You can access them at the IEEE Computer Society web site, www.computer.org. These should be carefully read before manuscript submission. Please submit your manuscript to Manuscript Central at https://mc.manuscriptcentral.com/tetc-cs

Please note the following important dates.
Submission Deadline: Dec. 1, 2017
Reviews Completed: Mar. 1, 2018
Major Revisions Due (if Needed): April 1, 2018
Reviews of Revisions Completed (if Needed): May 1, 2018
Minor Revisions Due (if Needed): June 1, 2018
Notification of Final Acceptance: August 1, 2018
Publication Materials for Final Manuscripts Due: Sept 1, 2018
Publication date: Last Issue of 2018 (December Issue)

Guest Editors

Feng Xia
Dalian University of Technology, China

Huan Liu
Arizona State University, USA

C. Lee Giles
Pennsylvania State University, USA

Kuansan Wang
Microsoft Research, USA

1 comment:

Lafay Tech Plaza said...

TheHadoop Big Dataframework is intended to address the scalability challenges encountered in processing terabytes of data on thousands of commodity servers.