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Cognitive, affective, and normative factors affecting digital insurance adoption among persons with disabilities: A two-stage SEM-ANN analysis

Author

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  • Gupta, Somya
  • Hassen, Majdi
  • Pandey, Dharen Kumar
  • Sahu, Ganesh P.

Abstract

This study evaluates the determinants of digital insurance adoption among persons with disabilities (PWDs) using the cognitive, affective, and normative (CAN) model. The study considers (i) cognitive factors such as perceived credibility, perceived knowledge, perceived usefulness, perceived complexity, and facilitating conditions; (ii) affective factors including technology anxiety and technology pleasure; and (iii) normative factors encompassing social influence. Moreover, it explores the relationship between perceived complexity and behavioral intention (BI) to adopt digital insurance among PWDs, as mediated by perceived knowledge. This study employs a two-stage hybrid structural equation modeling–artificial neural network (SEM-ANN) approach to test the hypothesis, and data from 323 physically challenged participants were collected. Empirical results show that all factors, except for perceived complexity and technological anxiety, significantly predict BI adoption of digital insurance among PWDs, whereas perceived usefulness was found to have the highest impact on BI. Although perceived complexity affects perceived knowledge, it does not significantly mediate the relationship between complexity and BI. This study expands on the CAN model and provides practical insights for PWDs in adopting digital insurance.

Suggested Citation

  • Gupta, Somya & Hassen, Majdi & Pandey, Dharen Kumar & Sahu, Ganesh P., 2024. "Cognitive, affective, and normative factors affecting digital insurance adoption among persons with disabilities: A two-stage SEM-ANN analysis," Global Finance Journal, Elsevier, vol. 63(C).
  • Handle: RePEc:eee:glofin:v:63:y:2024:i:c:s1044028324001200
    DOI: 10.1016/j.gfj.2024.101048
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