Cognitive Systems Research - Journal - Bridge of Knowledge

Search

Cognitive Systems Research

ISSN:

1389-0417

Disciplines
(Field of Science):

  • architecture and urban planning (Engineering and Technology)
  • automation, electronics, electrical engineering and space technologies (Engineering and Technology)
  • information and communication technology (Engineering and Technology)
  • safety engineering (Engineering and Technology)
  • biomedical engineering (Engineering and Technology)
  • medical biology (Medical and Health Sciences )
  • pharmacology and pharmacy (Medical and Health Sciences )
  • medical sciences (Medical and Health Sciences )
  • health sciences (Medical and Health Sciences )
  • family studies (Family studies)
  • psychology (Social studies)
  • international relations (Social studies)
  • biotechnology (Natural sciences)
  • computer and information sciences (Natural sciences)
  • biological sciences (Natural sciences)

Ministry points: Help

Ministry points - current year
Year Points List
Year 2024 70 Ministry scored journals list 2024
Ministry points - previous years
Year Points List
2024 70 Ministry scored journals list 2024
2023 70 Ministry Scored Journals List
2022 70 Ministry Scored Journals List 2019-2022
2021 70 Ministry Scored Journals List 2019-2022
2020 70 Ministry Scored Journals List 2019-2022
2019 70 Ministry Scored Journals List 2019-2022
2018 15 A
2017 15 A
2016 15 A
2015 15 A
2014 15 A
2013 15 A
2012 15 A
2011 15 A
2010 27 A

Model:

Hybrid

Points CiteScore:

Points CiteScore - current year
Year Points
Year 2023 9.4
Points CiteScore - previous years
Year Points
2023 9.4
2022 13.1
2021 9.3
2020 6
2019 3.2
2018 1.7
2017 2.3
2016 3.2
2015 3.4
2014 3.1
2013 3.3
2012 4.7
2011 3.6

Impact Factor:

Log in to see the Impact Factor.

Filters

total: 2

  • Category
  • Year
  • Options

clear Chosen catalog filters disabled

Catalog Journals

Year 2023
Year 2011
  • Information retrieval with semantic memory model
    Publication

    Psycholinguistic theories of semantic memory form the basis of understanding of natural language concepts. These theories are used here as an inspiration for implementing a computational model of semantic memory in the form of semantic network. Combining this network with a vector-based object-relation-feature value representation of concepts that includes also weights for confidence and support, allows for recognition of concepts...

    Full text to download in external service

seen 442 times