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Autor
Piotrowska Anna Iwona (Nicolaus Copernicus University, Toruń, Poland)
Tytuł
Determinants of Consumer Adoption of Biometric Technologies in Mobile Financial Applications
Źródło
Economics and Business Review, 2024, vol. 10 (24), nr 1, s. 81-100, tab., bibliogr. 72 poz.
Słowa kluczowe
Metody biometryczne, Płatności mobilne, Bankowość elektroniczna, Aplikacje mobilne, Finanse osobiste, Technologie finansowe, COVID-19
Biometry methods, Mobile payments, E-banking, Mobile applications, Personal finance, FinTech, COVID-19
Uwagi
Klasyfikacja JEL: D14, G21, O33
summ.
Abstrakt
This study aims to identify what determines the use of biometric technologies in the financial applications of banks and FinTechs. The analysis uses data from a survey of 1,000 adult Polish residents. The estimated logit model indicates that the probability of using biometric solutions decreases with age and increases with the level of education and technological sophistication relating to personal innovativeness, experience with biometric technology, and the use of digital technology in both financial and non-financial areas. The work identifies the COVID-19 pandemic as a factor accelerating the adoption of biometric solutions and fostering awareness of the threat of digital technologies invading respondents' privacy. The study demonstrates the positive impact of trust that phone manufacturers ensure the security of stored funds and data processing on the acceptance of biometric solutions in financial services. This relationship underpins the recommendation to financial institutions in the field of promoting biometric technologies. (original abstract)
Dostępne w
Biblioteka SGH im. Profesora Andrzeja Grodka
Biblioteka Główna Uniwersytetu Ekonomicznego w Katowicach
Biblioteka Główna Uniwersytetu Ekonomicznego w Poznaniu
Pełny tekst
Pokaż
Bibliografia
Pokaż
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Cytowane przez
Pokaż
ISSN
2392-1641
Język
eng
URI / DOI
https://doi.org/10.18559/ebr.2024.1.1019
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