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Research on new ecotourism management impact factor modeling based on economic fluctuation prediction

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DOI: 10.23977/tmte.2023.060408 | Downloads: 7 | Views: 324

Author(s)

Xingmeng Jiang 1

Affiliation(s)

1 Lyceum of the Philippines University, Manila, Philippines

Corresponding Author

Xingmeng Jiang

ABSTRACT

Under the background of new ecotourism, modeling and analysis of impact factors can effectively realize the sustainable development of new ecotourism. This paper first introduces the impact of economic fluctuation on ecotourism, and then constructs a new ecotourism economic fluctuation prediction model. The model can help people predict economic fluctuations from a multi-factor perspective, which can effectively promote the sustainable development of tourism in China, improve people's living standards, and lay a solid foundation for realizing common prosperity.

KEYWORDS

Economic fluctuation; New ecotourism; Impact factor model

CITE THIS PAPER

Xingmeng Jiang, Research on new ecotourism management impact factor modeling based on economic fluctuation prediction. Tourism Management and Technology Economy (2023) Vol. 6: 47-52. DOI: http://dx.doi.org/10.23977/tmte.2023.060408.

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