2023
DOI: 10.1142/s2282717x23300015
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Bibliometric Analysis on Big Data Applications in Insurance Sector: Past, Present, and Future Research Directions

Abstract: In this study, the key areas and current trends in the field of big data applications in the insurance industry are identified, along with suggestions for future research initiatives. We identified the most prominent authors, journals, organizations, and countries based on their total publications and citations, showing their significance within the network, using bibliometric analysis on a sample of 191 articles retrieved from Scopus from 1976 to 2021. VOSviewer and R-Biblioshiny tools were used to generate t… Show more

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Cited by 5 publications
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“…A bibliometric analysis of trends in the use of big data in insurance (Ellili et al, 2023;Mall et al, 2023;Shamsuddin et al, 2023;Saadi et al, 2023;Gonzalez-Samaniego et al, 2023) shows that the implementation of machine learning and artificial intelligence technologies contributes to increased transparency in the insurance sector. This ensures more efficient processing and analysis of large volumes of data, which is important for increasing the transparency of insurance products and services.…”
Section: Literature Reviewmentioning
confidence: 99%
“…A bibliometric analysis of trends in the use of big data in insurance (Ellili et al, 2023;Mall et al, 2023;Shamsuddin et al, 2023;Saadi et al, 2023;Gonzalez-Samaniego et al, 2023) shows that the implementation of machine learning and artificial intelligence technologies contributes to increased transparency in the insurance sector. This ensures more efficient processing and analysis of large volumes of data, which is important for increasing the transparency of insurance products and services.…”
Section: Literature Reviewmentioning
confidence: 99%