Wykorzystanie grafu wiedzy w edukacji: przegląd literatury

Autor

DOI:

https://doi.org/10.18778/0208-6018.342.01

Słowa kluczowe:

graf wiedzy, schemat wiedzy, Resource Description Framework, informacja, dane, wiedza, model, proces dydaktyczny

Abstrakt

W nowoczesnych i rozwijających się ekonomicznych systemach zarządzane wiedzą (ZW) uważa się za jedną z najważniejszych czynności niemal w każdej organizacji. Proces ZW na uniwersytetach obejmuje procesy dydaktyczne, wśród których wyróżniamy proces indywidualizacji kształcenia. Taki proces wymaga przetworzenia dużej ilości informacji zarówno przez pracowników uniwersytetu, jak i przez studentów. W artykule zaproponowano graf wiedzy jako technologię, która ułatwia i usprawnia procesy ZW na uniwersytetach, oraz przedstawiono rozszerzony przegląd zjawiska grafu wiedzy.

Pobrania

Brak dostępnych danych do wyświetlenia.

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Opublikowane

2019-08-21

Jak cytować

Rizun, M. (2019). Wykorzystanie grafu wiedzy w edukacji: przegląd literatury. Acta Universitatis Lodziensis. Folia Oeconomica, 3(342), 7–19. https://doi.org/10.18778/0208-6018.342.01

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