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What Is the Current Development Status of Wearable Device in Industrial 4.0? Using Technology Acceptance Model to Explore the Willingness and Pattern of Usage of the Consumers

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  • Cheng Liu
  • Chin-Shyang Shyu
  • Tsung-Yu Chou
  • Chao-Chien Chen
  • Chien-Hung Wu

Abstract

The object of the study is to use the technology acceptance model to explore the willingness and pattern of usage of the consumers. 205 valid questionnaires were collected by using the Google online survey platform. Using IBM SPSS and AMOS Statistics 20.0 software, first background information was analyzed, then CFA was used to analyze the relationship between variables, and SEM was used to verify the rationality of the measurement model. The result discovered that there is a positive effect on perceived usefulness by perceived utility of usage by the users. There is a positive effect on usage intention by perceived utility. There is a positive effect on perceived curiosity by perceived utility. There is a positive effect on usage intention by perceived usefulness, and there is a positive effect on usage willingness by social support for the wearable device users. However, there is no positive effect on usage willingness by perceived curiosity. Conclusion . If the industry can provide consumers with a good experience, it will help enhance consumer attitudes, increase consumer willingness, and continue to enhance consumer curiosity. Simply satisfying consumers' curiosity cannot increase consumer willingness, but social support will affect consumers' willingness to use.

Suggested Citation

  • Cheng Liu & Chin-Shyang Shyu & Tsung-Yu Chou & Chao-Chien Chen & Chien-Hung Wu, 2020. "What Is the Current Development Status of Wearable Device in Industrial 4.0? Using Technology Acceptance Model to Explore the Willingness and Pattern of Usage of the Consumers," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-12, December.
  • Handle: RePEc:hin:jnlmpe:9762015
    DOI: 10.1155/2020/9762015
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