Factors affecting the behavioral intention to use e-learning of tourism employees in the Central Coast region of Vietnam
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Keywords

e-learning
employees
behavioral intention
structural model
tourism e-learning
lao động
du lịch
ý định hành vi
mô hình cấu trúc

Abstract

E-learning is a modern approach to education based on technology that can provide tourism employees a flexible way to learn and can decide their own learning pace. It helps respond to the high work intensity and continuous training requirements of this industry. This study aims to explore the factors affecting the behavioral intention to use e-learning programs of tourism employees from the perspective of the technology acceptance model (TAM). The study conducted a survey of 712 tourism employees in the Central Coast region with the PLS-SEM structural modeling method and found that factors including (1) perceived playfulness and (2) attitude toward e-learning affect the behavioral intention to use e-learning. The research results are used to suggest the policy implications for tourism training institutions and tourism enterprises related to the development of e-learning programs for tourism employees in the future.

https://doi.org/10.26459/hueunijed.v130i5A.6323
PDF (Vietnamese)

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