Exploring the impact factors of the usage intention of AR sports games for home exercise based on the decomposed theory of planned behavior

Chih-Wei Lin, Chun-Yu Chien, Shao-Leon Lian, Yun-Tsan Lin, Wei-Hsun Hsu

Article ID: 10643
Vol 8, Issue 16, 2024

VIEWS - 115 (Abstract)

Abstract


This study aims to explore the factors influencing people’s intention to use home fitness mobile apps in the post-pandemic era. By incorporating the perspective of playfulness into the decomposed theory of planned behavior, it seeks to construct a behavioral model for the public's use of AR sports games for home exercise. The research focuses on Active Arcade users residing in Taiwan, employing the snowball sampling method to conduct an online questionnaire survey. A total of 340 valid questionnaires were collected and analyzed using linear structural equations. The study reveals three main findings: first, the behavioral model for Active Arcade users constructed based on the decomposed theory of planned behavior demonstrates a good fit; second, users’ attitudes, subjective norms, and perceived behavioral control have a positive and significant impact on behavioral intention; third, perceived usefulness, perceived ease of use, and perceived playfulness all positively and significantly influence attitudes, with perceived playfulness having the highest impact coefficient; fourth, perceived benefits of exercise are the most crucial factor affecting subjective norms; and fifth, convenience technologies are the key factor influencing perceived behavioral control. This study provides valuable insights for theory and management practice, offering guidance on the use of home fitness apps in the post-pandemic era while addressing research limitations and suggesting future directions.


Keywords


post-pandemic era; perceived playfulness; health belief model; decomposed theory of planned behavior; home fitness apps

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DOI: https://doi.org/10.24294/jipd10643

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