E. I. Mamedov’s research while affiliated with Yaroslavl State University and other places

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Publications (2)


Methodolo- gical Aspects of Semantic Relationship Extraction for Automatic Thesaurus Generation
  • Article

January 2016

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1 Read

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4 Citations

Modeling and Analysis of Information Systems

N. S. Lagutina

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K. V. Lagutina

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E. I. Mamedov

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I. V. Paramonov

A Substitution Algorithm for Dataflow Network Agents on Smart-M3 Platform
  • Article
  • Full-text available

March 2015

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15 Reads

Modeling and Analysis of Information Systems

The paper presents an agent substitution algorithm for a dataflow network implemented on the Smart-M3 platform. Such a substitution allows to transfer control and computational context from an unexpectedly disconnected agent to a programmable substitute agent for the period of absence of the first agent in the network. It also guarantees integrity of the information flow, i.e. the functioning of all dependent services is not disrupted after the agent disconnection. When the agent returns to the network the reverse substitution occurs also with keeping integrity of the information flow. The paper gives a description of the dataflow network implementation and substitution mechanism structure on the Smart-M3 platform. The detailed description of the substitution algorithm including initialization, registration, and bidirectional substitution phases is given. The proposed substitution algorithm was implemented by the authors in the substitution mechanism as a part of the RedSIB semantic information broker on the Smart-M3 platform.

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Citations (1)


... To determine the amount of information at the level of its semantic content (semantic level), the thesaurus measure (Groot et al., 2016;Lagutina et al., 2016;LeCun et al., 2015;Mai et al., 2017;Mai et al., 2018;Wilson et al., 2019). This characteristic determines semantic properties through the student's ability to accept (perceive and assimilate) the information received (Chernigovskaya et al., 2016;Kiselev, 2018;Popova, 2012). ...

Reference:

Software For Sense Compatibility Analysis Of Educational Texts
Methodolo- gical Aspects of Semantic Relationship Extraction for Automatic Thesaurus Generation
  • Citing Article
  • January 2016

Modeling and Analysis of Information Systems