Exploring biometric identification in FinTech applications based on the modified TAM

Abstract In recent years, biometric technologies have been widely embedded in mobile devices; these technologies were originally employed to enhance the security of mobile devices. With the rise of financial technology (FinTech), which uses mobile devices and applications as promotional platforms, b...

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Main Author: Jen Sheng Wang
Format: Article
Language:English
Published: SpringerOpen 2021-06-01
Series:Financial Innovation
Subjects:
AHP
Online Access:https://doi.org/10.1186/s40854-021-00260-2
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spelling doaj-8a1459530e0f4287be38b2d126a183392021-06-13T11:26:27ZengSpringerOpenFinancial Innovation2199-47302021-06-017112410.1186/s40854-021-00260-2Exploring biometric identification in FinTech applications based on the modified TAMJen Sheng Wang0Institute of Technology Management, National Yang Ming Chiao Tung UniversityAbstract In recent years, biometric technologies have been widely embedded in mobile devices; these technologies were originally employed to enhance the security of mobile devices. With the rise of financial technology (FinTech), which uses mobile devices and applications as promotional platforms, biometrics has the important role of strengthening the identification of such applications for security. However, users still have privacy and trust concerns about biometrics. Previous studies have demonstrated that the technology acceptance model (TAM) can rigorously explain and predict user acceptance of new technologies. This study therefore modifies the TAM as a basic research architecture. Based on a literature review, we add two new variables, namely, “perceived privacy” and “perceived trust,” to extend the traditional TAM to examine user acceptance of biometric identification in FinTech applications. First, we apply the analytic hierarchy process (AHP) to evaluate the defined objects and relevant criteria of the research framework. Second, we use the AHP results in the scenario analysis to explore biometric identification methods that correspond to objects and criteria. The results indicate that face and voice recognition are the two most preferred identification methods in FinTech applications. In addition, there are significant changes in the results of the perceived trust and perceived privacy dominant scenarios.https://doi.org/10.1186/s40854-021-00260-2Biometric identificationFinTech applicationsAHPPerceived privacyPerceived trust
collection DOAJ
language English
format Article
sources DOAJ
author Jen Sheng Wang
spellingShingle Jen Sheng Wang
Exploring biometric identification in FinTech applications based on the modified TAM
Financial Innovation
Biometric identification
FinTech applications
AHP
Perceived privacy
Perceived trust
author_facet Jen Sheng Wang
author_sort Jen Sheng Wang
title Exploring biometric identification in FinTech applications based on the modified TAM
title_short Exploring biometric identification in FinTech applications based on the modified TAM
title_full Exploring biometric identification in FinTech applications based on the modified TAM
title_fullStr Exploring biometric identification in FinTech applications based on the modified TAM
title_full_unstemmed Exploring biometric identification in FinTech applications based on the modified TAM
title_sort exploring biometric identification in fintech applications based on the modified tam
publisher SpringerOpen
series Financial Innovation
issn 2199-4730
publishDate 2021-06-01
description Abstract In recent years, biometric technologies have been widely embedded in mobile devices; these technologies were originally employed to enhance the security of mobile devices. With the rise of financial technology (FinTech), which uses mobile devices and applications as promotional platforms, biometrics has the important role of strengthening the identification of such applications for security. However, users still have privacy and trust concerns about biometrics. Previous studies have demonstrated that the technology acceptance model (TAM) can rigorously explain and predict user acceptance of new technologies. This study therefore modifies the TAM as a basic research architecture. Based on a literature review, we add two new variables, namely, “perceived privacy” and “perceived trust,” to extend the traditional TAM to examine user acceptance of biometric identification in FinTech applications. First, we apply the analytic hierarchy process (AHP) to evaluate the defined objects and relevant criteria of the research framework. Second, we use the AHP results in the scenario analysis to explore biometric identification methods that correspond to objects and criteria. The results indicate that face and voice recognition are the two most preferred identification methods in FinTech applications. In addition, there are significant changes in the results of the perceived trust and perceived privacy dominant scenarios.
topic Biometric identification
FinTech applications
AHP
Perceived privacy
Perceived trust
url https://doi.org/10.1186/s40854-021-00260-2
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