Tourist hot spots prediction model based on optimized neural network algorithm
With the increase in the tourism industry, the experience of the tourist is changed dramatically. Mainly, there are two types of sustainability in the tourism industry. One is for the sustainable destination environment and other is for the sustainable tourists’ experience. For the tourists’ sightse...
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Veröffentlicht in: | International journal of system assurance engineering and management 2022-03, Vol.13 (Suppl 1), p.63-71 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | With the increase in the tourism industry, the experience of the tourist is changed dramatically. Mainly, there are two types of sustainability in the tourism industry. One is for the sustainable destination environment and other is for the sustainable tourists’ experience. For the tourists’ sightseeing recommendation, an invulnerable system is needed to the site based on the current ground conditions. The tourist volume prediction of tourist attractions in tourism research has always been an interesting topic and one of the difficult problems faced by the tourism field. The RBF neural network algorithm was utilized to the parameters optimization and the popular tourist spots prediction model was established to study and predict popular tourist spots, which was compared with the traditional prediction model. The results show that the particle swarm optimization neural network can better track the change rules of popular tourist attractions, and the prediction accuracy of popular tourist attractions is obviously better than that of the traditional model. The tourist attractions prediction efficiency is also higher, which can meet the requirements of online prediction of popular tourist attractions. The training time and prediction time of the prediction model of popular tourist attractions are reduced which speeds up the modeling efficiency of the popular tourist attractions prediction and allows online prediction of popular tourist attractions. |
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ISSN: | 0975-6809 0976-4348 |
DOI: | 10.1007/s13198-021-01226-4 |