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http://dx.doi.org/10.13106/jafeb.2021.vol8.no8.0287

Impacts of Perceived Security and Knowledge on Continuous Intention to Use Mobile Fintech Payment Services: An Empirical Study in Vietnam  

NGUYEN, Dat Dinh (Foreign Trade University)
NGUYEN, Thanh Duc (Foreign Trade University)
NGUYEN, Trung Duc (Foreign Trade University)
NGUYEN, Ha Viet (Foreign Trade University)
Publication Information
The Journal of Asian Finance, Economics and Business / v.8, no.8, 2021 , pp. 287-296 More about this Journal
Abstract
Stepping into the technological boom time, Vietnam has integrated into the trends of using Fintech applications as a new means of payment. This article evaluates the relationship between perceived security (including service security and platform security), knowledge, confirmation, perceived usefulness, satisfaction, attitude and lastly enterprise's images regarding the service and continuous intention to use Fintech services. The survey results of 352 Vietnamese customers using Fintech services, reliability test and extended post-acceptance model (EPAM) which is based on PAM and ECT models. From the survey, we further found out that perceived security (BSS) has no direct impact on continued intention to use, while perceived security (BSS) has positive impact on confirmation (CON), similarly, perceived usefulness (PU) and user's satisfaction (SES). Knowledge of the Mobile Fintech payment service (KNOW) has a positive impact on perceived security (BSS). Confirmation (CON) has a positive influence on perceived usefulness but in the meanwhile it has created a negative impact on user's satisfaction (SES). From the survey it can also tell that user's attitude (ATT) and enterprise image (IMG) both have a positive impact on continual intention to use Fintech services. From the research results, we also propose some recommendation to enhance the continual intention to use Fintech services in Vietnam.
Keywords
Fintech; Payment Service; EPAM; Technology; Service Security; Vietnam;
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