Оригинал (Original)
Автори: Уйкани, Б. Т., Минковска, Д. В., Стоянова, Л. Й.
Заглавие: Application of Logistic Regression Technique for Predicting Student Dropout
Ключови думи: student dropout, higher education, machine learning, logisti

Библиография

    Издание

    XXXI International Scientific Conference Electronics - ET2022, 2022, България, Sozopol, DOI 10.1109/ET55967.2022.9920280
    Autors: Ujkani, B. T., Minkovska, D. V., Stoyanova, L. Y.
    Title: Application of Logistic Regression Technique for Predicting Student Dropout
    Keywords: student dropout, higher education, machine learning, logistic regression, numpy, scikit-learn

    References

      Issue

      XXXI International Scientific Conference Electronics - ET2022, 2022, Bulgaria, Sozopol, DOI 10.1109/ET55967.2022.9920280

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      Вид: пленарен доклад в международен форум, публикация в реферирано издание, индексирана в Scopus