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Smart access and smart protection for welfare gain in Europe during COVID‐19: An empirical investigation using real‐time data

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  • Humaira Kamal Pasha

Abstract

The COVID‐19 (Coronoavirus Disease 2019) pandemic has had many disastrous effects on welfare globally, particularly in European countries. In recent research, a new debate has arisen as a result of the shift of day‐to‐day activities to virtual platforms, which has augmented concerns related to smart (data) access and smart (data) protection. This study examines the economic, social, and psychological indicators of welfare gain within the context of the COVID‐19 pandemic and examines their impact on smart access and smart protection using the data of Survey of Health, Ageing and Retirement in Europe and real‐time Google Trends from June to August 2020. The findings indicate a negative relationship between smart access and economic crisis caused by COVID‐19, while households with sufficient resources support smart protection. Psychological effects including nervousness and anxiety are highly related to smart access. Likewise, being helpful in a time of uncertainty, societal contact, and social measures (hygiene and face mask) significantly and positively impact smart protection. The findings suggest that countries should combine their welfare agencies with health and economic institutes, and initiate projects related to cybersecurity.

Suggested Citation

  • Humaira Kamal Pasha, 2024. "Smart access and smart protection for welfare gain in Europe during COVID‐19: An empirical investigation using real‐time data," Bulletin of Economic Research, Wiley Blackwell, vol. 76(1), pages 41-66, January.
  • Handle: RePEc:bla:buecrs:v:76:y:2024:i:1:p:41-66
    DOI: 10.1111/boer.12414
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