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2018 | nr 3 (25) | 9--15
Tytuł artykułu

Application of Deep Learning Methods in Management

Autorzy
Warianty tytułu
Zastosowanie metod deep learning w zarządzaniu
Języki publikacji
EN
Abstrakty
EN
Finding more effective solution and tools for big data in management problems is one of the most important and dominant trends in management studies. With the advancement of computer, communication technology and especially artificial intelligence, the tools that are used for management decisions have undergone a change from simple algorithms to many layer neural network methods. Nowadays Deep learning (DL) algorithms are one of the most efficient tools that may become a critical component of business intelligence. In the paper will be described the basic of deep learning methods as well as a review of selected works done in application of DL algorithms in management sciences. It will be described the proposed exemplary solution, that can be done with use of Deep Belief Network, one of the DL methods. (original abstract)
Znalezienie bardziej skutecznego rozwiązania i narzędzi do dużych zbiorów danych w problemach zarządzania jest jednym z najważniejszych i dominujących trendów w badaniach nad zarządzaniem. Wraz z rozwojem komputerów, technologii komunikacyjnych, a zwłaszcza sztucznej inteligencji, narzędzia wykorzystywane do podejmowania decyzji dotyczących zarządzania przeszły zmianę od prostych algorytmów do wielu warstw sieci neuronowych. W dzisiejszych czasach algorytmy Deep Learning (DL) są jednymi z najbardziej wydajnych narzędzi, które mogą stać się kluczowym elementem Business Intelligence. W artykule zostaną opisane podstawowe metody głębokiego uczenia się oraz przegląd wybranych prac wykonanych w zastosowaniu algorytmów DL w naukach o zarządzaniu. Zostanie opisane proponowane przykładowe rozwiązanie, które można wykonać przy użyciu sieci Deep Belief, jednej z metod DL. (abstrakt oryginalny)
Twórcy
  • Akademia Wyższej Szkoły Biznesu w Dąbrowie Górniczej
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171560359

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