Abstract
Researchers are exploring networked computational analysis, formal classification, and topic modeling to better identify relevant scientists, ideas, and trends.
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- Jensen, S. and Plale, B. Trading consistency for scalability in scientific metadata, Proceedings of the 2010 IEEE International Conference on e-Science, Brisbane, Australia, Dec. 7-10, 2010. Google ScholarDigital Library
Index Terms
- The science of better science
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