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DOI Daten mit Auflösung
DOI 10.7336/academicus.2014.10.14
URL https://academicus.edu.al/?subpage=volumes&nr=10
Multiple Resolution:
MR URL https://academicus.edu.al
MR URL https://academicus.edu.al/nr10/Academicus-MMXIV-10-202-211.html
MR URL https://academicus.edu.al/nr10/Academicus-MMXIV-10-202-211.pdf
MR URL mailto:info@academicus.edu.al
MR URL https://academicus.edu.al/images/front_end/academicus.jpg
MR URL https://creativecommons.org/licenses/by-nc-nd/4.0/
NUTZUNGSRECHTE:
OA – Open Access
OA-Lizenz https://creativecommons.org/licenses/by-nc-nd/4.0/

Daten zur Zeitschrift

Vollständiger Titel
Englisch (eng)
Academicus International Scientific Journal
Verlag (01) Academicus International Scientific Journal
Erscheinungsland Albanien (AL)
ISSN 20793715
Produktform Gedruckte Zeitschrift (JB)
ISSN 23091088
Produktform Online-Zeitschrift (JD)

Fortsetzungsausgabe
Nummer des Bandes 10
Erscheinungsdatum der Ausgabe (YYYY/MM) 2014 / 07
Daten Fortsetzungsartikel
Titel
Englisch (eng)
Artificial neural networks in forecasting tourists’ flow, an intelligent technique to help the economic development of tourism in Albania.
Von (Autor) (A01) Dezdemona Gjylapi
Zugehörigkeit University “Pavaresia” Vlore, Albania, Doctoral Candidate
Von (Autor) (A01) Veronika Durmishi
Zugehörigkeit "University of Vlore ""Ismail Qemali"", Albania", Dr.
Number of Pages 10
Erste Seite 202
Letzte Seite 211
Sprache des Textes Englisch (eng)
Erscheinungsdatum (YYYY/MM) 2014 / 07
Copyright 2014, Academicus
Abstract
Abstract/Hauptbeschreibung (01)
Tourism plays an important role in many economies and contributes greatly to the Gross Domestic Product. In the past eight years, the number of tourist arrivals in Albania has increased rapidly, which resulted in increasing the number of tourist nights and revenue from tourism. Tourism also provides new sources of income for the country, without having that local citizen to pay more taxes. This can be achieved by income from parking, tourist taxes, leased apartments, sales information, etc. Early prediction on the tourist inflow mainly focuses on econometric models that have as a main feature the tourism demand being predicted by analysing factors that affect the tourists’ inflow. This approach results in being difficult, time-consuming and also expensive to determine econometric models. Traditional time series methods, such as exponential smoothing method, grey prediction method, linear regression method, ARIMA method etc., are more appropriate for the prediction of the tourist inflow. However, since they don’t apply a learning process on sample data, it is difficult for them to realize complicated and non-linear prediction on tourist inflow. The aim of this paper is to present the neural network usage in the tourists’ number forecasting and to determine the trends of the future tourist inflow, thus helping tourism management agencies in making scientific based financial decisions.

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