Global Journal of Information Technology: Emerging Technologies

Global Journal of Information Technology: Emerging Technologies

Airline revenue management via data mining

Yazarlar: Cuneyt Bahadir, Adem Karahoca

Cilt 7 , Sayı 3 , 2017 , Sayfalar 128-148

Konular:

DOI:10.18844/gjit.v7i3

Anahtar Kelimeler:Airline industry,Airline revenue data,Prediction algorithms,Weka,Bayesian network,Sequential minimal optimisation,Support vector machines,Multilayer perceptron,Radial basis function network.

Özet: Revenue maximisation has been of paramount interest in the airline industry during the past few decades, and numerous studies have been reported, aiming at robust analyses. Principal analysis techniques in most of these studies include computational-based prediction algorithms that are used for a given dataset. In this study, airline specific data, which consists of cabin class passenger data, cabin class supplied capacity data, distance of flights, season, year –month data and revenue data, are analysed using various prediction algorithms. Consistencies and accuracies of different algorithms are compared and reported.


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BibTex
KOPYALA
@article{2017, title={Airline revenue management via data mining}, volume={7}, number={128–148}, publisher={Global Journal of Information Technology: Emerging Technologies}, author={Cuneyt Bahadir, Adem Karahoca}, year={2017} }
APA
KOPYALA
Cuneyt Bahadir, Adem Karahoca. (2017). Airline revenue management via data mining (Vol. 7). Vol. 7. Global Journal of Information Technology: Emerging Technologies.
MLA
KOPYALA
Cuneyt Bahadir, Adem Karahoca. Airline Revenue Management via Data Mining. no. 128–148, Global Journal of Information Technology: Emerging Technologies, 2017.