A nonlinear dynamic model to international tourism demand in Spanish Mediterranean coasts

dc.contributor.authorAlbaladejo, Isabel
dc.contributor.authorGonzález-Martínez, Maribel
dc.contributor.otherEkonomická fakultacs
dc.date.accessioned2018-12-06
dc.date.accessioned2018-12-17T08:35:46Z
dc.date.available2018-12-17T08:35:46Z
dc.description.abstractSpanish Mediterranean coasts are a consolidated tourist destination and enjoy growing demand. These coasts receive the highest number of international arrivals in Spain. This paper has been developed to gain a better knowledge of the determinants of this international tourism demand. A nonlinear dynamic model that analyses how previous tourists can affect tourism demand decisions is proposed. This nonlinear dynamic specification extends the standard dynamic equation for tourism demand to include interaction effects between previous tourists and two destination characteristics: the quality of the tourism services and tourist congestion. Both characteristics are important to define the reputation or attractiveness of the destination. We test the model using panel data from the 11 provinces which make up the Spanish Mediterranean coasts, and the 7 European countries which are the main origin markets for the period 2005-2015. The system GMM procedure is applied to estimate the econometric model. The econometric results show evidence of strong persistence in international tourism demand. Previous tourists have an important positive and non-constant effect, and this effect is positively influenced by the quality of the tourism services, and negatively by tourist congestion. Therefore, the effect of previous tourists is not constant but varies across provinces and over time. This effect is stronger in provinces with high quality tourism services and lower congestion. Additionally, the impact of previous tourists has not remained constant over time, but has increased in the Mediterranean provinces since 2005. The investments realized in quality and quantity of hotel services during this period have enhanced their reputation.en
dc.formattext
dc.format.extent14 strancs
dc.identifier.doi10.15240/tul/001/2018-4-005
dc.identifier.eissn2336-5604
dc.identifier.issn1212-3609
dc.identifier.orcid0000-0001-7441-7392 Albaladejo, Isabel
dc.identifier.orcid0000-0001-6564-9298 González-Martínez, Maribel
dc.identifier.urihttps://dspace.tul.cz/handle/15240/124746
dc.language.isoen
dc.publisherTechnická Univerzita v Libercics
dc.publisherTechnical university of Liberec, Czech Republicen
dc.publisher.abbreviationTUL
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dc.relation.ispartofEconomics and Managementen
dc.relation.isrefereedtrue
dc.rightsCC BY-NC
dc.subjectinternational tourism demanden
dc.subjectprevious tourists effecten
dc.subjectdynamic panel dataen
dc.subjectinteraction effectsen
dc.subjectSpainen
dc.subject.classificationC23
dc.subject.classificationL83
dc.subject.classificationZ32
dc.titleA nonlinear dynamic model to international tourism demand in Spanish Mediterranean coastsen
dc.typeArticleen
local.accessopen
local.citation.epage78
local.citation.spage65
local.facultyFaculty of Economics
local.filenameEM_4_2018_05
local.fulltextyes
local.relation.abbreviationE+Mcs
local.relation.abbreviationE&Men
local.relation.issue4
local.relation.volume21
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