Tools for Quality Assessment of Scientific and Technical Documents
Abstract
About the Authors
S. V. GerasimovRussian Federation
R. V. Kurynin
Russian Federation
I. V. Mashechkin
Russian Federation
M. I. Petrovskiy
Russian Federation
D. V. Tsarev
Russian Federation
A. A. Shestimerov
Russian Federation
References
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Review
For citations:
Gerasimov S.V., Kurynin R.V., Mashechkin I.V., Petrovskiy M.I., Tsarev D.V., Shestimerov A.A. Tools for Quality Assessment of Scientific and Technical Documents. Proceedings of the Institute for System Programming of the RAS (Proceedings of ISP RAS). 2013;24. (In Russ.)