Logo repozitára
  • English
  • Slovenčina
  • Prihlásiť sa
    Nový používateľ? Kliknite sem a zaregistrujte sa. Zabudli ste svoje heslo?
Logo repozitára
  • Komunity a kolekcie
  • Celý DSpace
  • English
  • Slovenčina
  • Prihlásiť sa
    Nový používateľ? Kliknite sem a zaregistrujte sa. Zabudli ste svoje heslo?
  1. Domov
  2. Prehliadať podľa autora

Prehliadanie podľa Autor "Sabek, Amine"

Teraz sa zobrazuje 1 - 1 z 1
Výsledky na stránku
Možnosti zoradenia
  • Načítavam...
    Obrázok miniatúry
    Položka
    Bankruptcy prediction using first-order autonomous learning multi-model classifier
    (Český statistický úřad : Praha, 2024) Sabek, Amine; Horák, Jakub; Musa, Hussam; da Silva, Amélia Ferreira
    Research background: Bankruptcy and financial distress prediction has always been an integral part of any financial management system. It gives an indication to stakeholders to take precautionary measures in order to avoid losses. The traditional approaches for prediction, including logistic regression and discriminant analysis, are constrained by their inability to deal with complex and high-dimensional data (Odom and Sharda, 1990; Min and Lee, 2005). Recent developments in the field of machine learning, and particularly autonomous learning classifiers, present a potential proposed alternative. Purpose: The purpose of this paper is to propose a first-order autonomous learning classifier (F-O ALMM0) for predicting bankruptcy of business entities and individuals. Design/methodology/approach: The data file contained a total of 352 companies obtained from the Kaggle database and incorporating 83 financial ratios. Initially, the model's performance was assessed as a preliminary step, but the results were average, followed by the application of Principal Component Analysis (PCA) to enhance the quality of the input’s variables. Afterwards, the number of independent variables was reduced to 26. Thus, the results were improved.

Softvér DSpace copyright © 2002-2026 LYRASIS

  • Nastavenia súborov cookie
  • Zásady ochrany osobných údajov
  • Zmluva s koncovým používateľom
  • Odoslať spätnú väzbu