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  • P-ISSN1738-3110
  • E-ISSN2093-7717
  • SCOPUS, ESCI

Chinese Female Consumers’ Intention to Use Mobile Payment Services

The Journal of Distribution Science / The Journal of Distribution Science, (P)1738-3110; (E)2093-7717
2018, v.16 no.10, pp.23-30
https://doi.org/https://doi.org/10.15722/jds.16.10.201810.23
Zhang, Zhi
Choi, Ji-Eun
Kim, Moon-Seop

Abstract

Purpose - This study intended to investigate ways to influence on the Chinese female consumers' use of mobile payment services. For this purpose, this research investigated the relationships among security and compatibility of the mobile payment service, perceived usefulness and perceived ease of use, psychological benefit, and intention to use mobile payment. Research design, data, and methodology - This research developed a structural equation model in which the usefulness, the ease of use, and the psychological benefit are predictors and the intention to use is a dependent variable. Data were collected from China female in Jiangsu and Shandong province. Results - Empirical results showed that the security and the compatibility had a positive influence on the usefulness and the ease of use. The usefulness and the ease of use influenced on the psychological benefit respectively and the psychological benefit had a positive influence on the intention to use. Conclusions - This research contributed to the mobile payment service literature by showing how Chinese women consumers adopt the mobile payment service based on TAM. Moreover, current study introduced the security and the compatibility as antecedents of the usefulness and the ease of use and revealed the mediating role of psychological benefit. Managerially, theses results suggested retailing companies ways to influence on the Chinese female consumers' use of mobile payment services.

keywords
Compatibility, Intention to Use, Mobile Payment Service, Psychological Benefit, Security

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The Journal of Distribution Science